Next Article in Journal
Efficient Removal of Heavy Metals from Contaminated Sunflower Straw by an Acid-Assisted Hydrothermal Process
Next Article in Special Issue
Factors Associated with Medication Adherence among Patients with Type 2 Diabetes Mellitus: A Hospital-Based Cross-Sectional Study in Nepal
Previous Article in Journal
Emission of Industrial Air Pollution and Mortality Due to Respiratory Diseases: A Birth Cohort Study in Poland
Previous Article in Special Issue
Harmful Alcohol Use and Associated Socio-Structural Factors among Female Sex Workers Initiating HIV Pre-Exposure Prophylaxis in Dar es Salaam, Tanzania
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Systematic Review

Systematic Review and Meta-Analysis of Metabolic Syndrome and Its Components in Latino Immigrants to the USA

by
Talita Monsores Paixão
1,
Liliane Reis Teixeira
1,
Carlos Augusto Ferreira de Andrade
2,
Debora Sepulvida
3,
Martha Martinez-Silveira
4,
Camila Nunes
5 and
Carlos Eduardo Gomes Siqueira
6,*
1
Center of Studies of Worker Health and Human Ecology, National School of Public Health Sergio Arouca, Oswaldo Cruz Foundation, Rio de Janeiro 21041-210, Brazil
2
Department of Epidemiology and Quantitative Methods in Health, National School of Public Health Sergio Arouca, Oswaldo Cruz Foundation, Rio de Janeiro 21041-210, Brazil
3
Brazilian Worker Center, Boston, MA 02134, USA
4
Gonçalo Moniz Institute, Oswaldo Cruz Foundation, Bahia 40296-710, Brazil
5
Fluminense Federal Institute of Education Science and Technology, Campos dos Goytacazes 28030-130, Brazil
6
School for the Environment, University of Massachusetts Boston, Boston, MA 02125, USA
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2023, 20(2), 1307; https://doi.org/10.3390/ijerph20021307
Submission received: 3 November 2022 / Revised: 4 January 2023 / Accepted: 5 January 2023 / Published: 11 January 2023

Abstract

:
The Metabolic Syndrome (MetS) is an increasingly prevalent condition globally. Latino populations in the USA have shown an alarming increase in factors associated with MetS in recent years. The objective of the present systematic review was to determine the prevalence of MetS and its risk factors in immigrant Latinos in the USA and perform a meta-analysis of those prevalence. The review included cross-sectional, cohort, or case–control studies involving adult immigrant Latinos in the USA, published during the period 1980–2020 in any language. Studies involving individuals who were pregnant, aged <18 years, immigrant non-Latinos, published outside the 1980–2020 period, or with other design types were excluded. The Pubmed, Web of Science, Embase, Lilacs, Scielo, and Google Scholar databases were searched. The risk of bias was assessed using the checklists of the Joanna Briggs Institute. The review included 60 studies, and the meta-analysis encompassed 52 studies. The pooled prevalence found for hypertension, diabetes, general obesity, and abdominal obesity were 28% (95% Confidence Interval (CI): 23–33%), 17% (95% CI: 14–20%), 37% (95% CI: 33–40%), and 54% (95% CI: 48–59%), respectively. The quality of the evidence of the primary studies was classified as low or very low. Few studies including immigrants from South America were identified. Further studies of those immigrants are needed due to the cultural, dietary, and language disparities among Latin American countries. The research protocol was registered with the Open Science Framework (OSF).

1. Introduction

The last few decades have seen a shift in the morbidity–mortality profile of the population globally, first in developed countries and then in developing nations. The epidemiological transition theory was first put forward by Omran [1] in 1971. According to this theory, the transition stems from long-term changes in patterns of mortality, and illnesses caused by infectious diseases are gradually giving way to an increased occurrence of chronic–degenerative diseases as the leading cause of morbidity and death.
According to Omran [1], the transition from the predominance of infectious–contagious diseases to chronic diseases involves three main groups of determinants: ecobiological determinants, socioeconomic, political and cultural determinants, and public health determinants.
There is currently a steady increase in cardiovascular disease, diabetes, cancers, and obesity. Regarding obesity, it is now considered a global epidemic, with the United States (USA) numbering as one of the first countries to show that rising obesity was becoming epidemic [2,3]. Obesity, together with hypertension, diabetes, and dyslipidemia, is one of the main risk factors for Metabolic Syndrome (MetS), a condition that has been widely described and whose prevalence tends to accompany rises in obesity [4,5].
The MetS was first described by Reaven [6]. The National Cholesterol Education Program (NCEP) [7] later produced the first standardized definition of MetS, updated in 2005 by Grundy et al. [8].
Currently, the diagnostic criterion for MetS is the co-occurrence of three or more of the following factors: high waist circumference (≥102 cm in men and ≥88 cm in women) or body mass index (BMI) > 30 kg/m2 (WHO [9]); high triglycerides (≥150 mg/dL or 1.7 mmol/L) or treatment for high triglycerides; low hide density lipoprotein (HDL) cholesterol (<40 mg/dL or 1.03 mmol/L in men and <50 mg/dL or 1.3 mmol/L in women) or treatment for low HDL cholesterol; high blood pressure (systolic ≥130 mm/Hg and diastolic ≥85 mm/Hg) or treatment for systemic arterial hypertension; and high fasting blood glucose (≥100 mg/dL) or treatment for type 2 diabetes.
In a 2020 study of USA adults [10], the authors found an MetS prevalence of 61.6% in obese individuals, 33.2% in overweight subjects, and 8.6% in adults with normal weight, highlighting the strong link between obesity and MetS. Despite the increasing prevalence of obesity in the general population of the USA over recent years, doubling between 1980 and 2010, this rate has now stabilized at approximately 35%. However, this rise remains alarming among minority populations, especially Latinos and black non-Latinos [5,11]. Similar increases for hypertension, diabetes, and high cholesterol have been documented in Latinos between 2001 and 2020 [12].
The Latino population In the USA is the largest and fastest growing racial/ethnic group in the country. According to USA Census data [13], the Latino population reached a total of 62.5 million people in 2021, a 19% increase from the 50.5 million Latinos in 2010. In California and Texas, Latinos became the largest racial/ethnic group. Florida, Arizona, and New York also had significant increases in the Latino population between the 2010 and 2021 Censuses.
Furthermore, the proportion of Latinos who speak English proficiently and who have a college education have grown since the 2010 Census [13]. However, Latinos in the USA are a very heterogeneous group [14] due to their cultural and socioeconomic differences, which demonstrate important variation according to their country of origin or ancestry. The average family income by Latino nationality, for example, shows that USA Latinos of Argentinian origin have the highest average income (USD 68,000) compared with the average for the USA Latino population (USD 49,010); those of Mexican origin have an average income of USD 49,000, while those of Honduran origin have the lowest average income (USD 41,000) [13].
Since the USA is one of the countries with the highest level of social disparities [15], the socioeconomic and educational disparities found among Latino populations according to nationality or ancestry must be considered in any public health studies of USA Latinos. Similar concerns should also apply to cultural differences between USA Latinos, because the fact that most USA Latinos are fluent in Spanish is not the only cultural aspect to consider regarding the determinants of MetS.
High rates of the factors associated with MetS in immigrant Latinos in the USA have been observed in previous studies, particularly among Mexicans [14,15,16]. Two systematic reviews [17,18] found increased obesity in Latinos, attributing this rise to higher levels of acculturation and residence in the USA, as well as immigrant generational and nativity status. The increase in obesity and in the other diseases defining MetS seen among immigrant populations is often associated with the nutritional transition occurring in developing countries, together with shifts in dietary habits and levels of physical activity, highlighted in both reviews [16,17]. For Brazil, a country which has been undergoing a process of nutritional transition since the 1970s [18], data from the Vigitel Brasil system [19] reveal an increase in the risk factors for chronic diseases, particularly overweight and obesity, indicating an increased risk of developing MetS.
Immigrants from developing countries undergoing a process of nutritional transition who emigrate to developed countries with a highly obesogenic environment are subject to an acceleration in the process of nutritional transition, favoring the development of obesity and its associated factors [17]. Nonetheless, when assessing such factors, it is important that cultural, language, economic, and social characteristics of the immigrants be taken into account, as well as origin.
Another key point is the very high likelihood that Brazilian immigrants were not included in samples of most studies conducted in the USA, owing to the classification adopted by the USA Census for the Latino population. Individuals with Cuban, Mexican, or Puerto Rican background/origin are usually classified as Hispanic or Latinos, whereas those from other Central and South American countries are identified as “others with Hispanic, Latino, or Spanish origin” [20]. Thus, the generalization for Brazilian immigrants of health information identified in studies of immigrants in the USA, using the term “Latino” as a reference, is not appropriate unless one can ascertain that Brazilians were included in the data sources.
Given the growth in diseases associated with MetS in immigrant Latinos in the USA and the epidemiological transition that has taken place and is still underway globally, in which chronic diseases feature as the leading cause of morbidity–mortality, identifying the publications involving this population to accurately determine the prevalence of MetS and its components is crucial.
However, the vast majority of publications on health conditions of immigrant Latinos in the USA address only immigrants from Mexico and Central America. Thus, how or whether South American immigrants are included in those studies remains unclear. Taking into account the cultural and economic heterogeneity that exists across Latin America, where Brazil has different language, culture, customs, and eating habits from other Spanish-speaking nations, analyses centering on the Brazilian population are important.
Therefore, the objective of our systematic review was to determine the prevalence of MetS and its risk factors among immigrant Latinos in the USA and perform a meta-analysis of those rates. This review also sought to ascertain which Latino groups are included and the extent to which Brazilians feature in those published studies.

2. Materials and Methods

2.1. Protocol

Our systematic review was carried out according to the PICO (Population, Intervention/Exposure, Comparator(s)/Control and Outcomes) strategy, where:
  • Population: Immigrants from Latin America, residing in the USA, aged >18 years;
  • Intervention/Exposure: Immigration;
  • Comparator(s)/control: US-born Latino population;
  • Outcomes: MetS and/or its components (primary) and sleep disorders (secondary).
The study protocol was based on the criteria established by PROSPERO, an International Prospective Register of Systematic Reviews, and registered with the Open Science Framework (OSF) before starting the review (https://doi.org/10.17605/OSF.IO/JFM7G (accessed on 7 January 2023)). The systematic review yielded sufficient data to perform a meta-analysis of prevalence, which was subsequently incorporated into the review. The systematic review was reported according to Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) 2020 statement [21] (Tables S1 and S2).

2.2. Definition of Disease and Disease Codes

The primary outcomes included in our review were the MetS and/or its risk factors: high blood pressure or diagnosis/treatment of arterial hypertension; high fasting blood glucose or diagnosis/treatment of type 2 diabetes mellitus; low HDL-c or treatment for low HDL-c; high triglycerides or treatment for high triglycerides; and high waist circumference or BMI > 30 kg/m2 [7,9]. Sleep disorders were the secondary outcomes.
Based on the codes of the International Statistical Classification of Diseases and Related Health Problems (ICD-10) [22], the relevant categories for the review were: E88.8—other specified metabolic disorders (MetS), I10—essential hypertension (primary), E78—disorders of lipoprotein metabolism and other lipidemias, E11—type 2 diabetes mellitus, E66—obesity, and G47—sleep disorders.

2.3. Search Strategy

The search strategy was devised to include all important descriptors needed to retrieve the relevant studies for the review (Table S3).
The PubMed, Web of Science, Embase, Lilacs, and Scielo databases were searched, along with Google Scholar as a complementary source, with no restrictions regarding language of publication. The search strategy was applied for the last time on 3 June 2020.

2.4. Study Selection

Studies that met the inclusion criteria listed below were selected for inclusion in the review:
  • Cross-sectional, cohort, or case–control type study;
  • Involving adults (>18 years);
  • Investigating immigrant Latinos residing in the USA;
  • Published during the period 1980–2020 in any language.
Studies involving pregnant women, immigrants from countries other than Latin America, children and adolescents (<18 years), published outside the 1980–2020 period or based on data collected prior to 1980, qualitative or case studies, and those with non-original data were excluded from the review.
Two reviewers (TP, DS) independently screened titles and abstracts of the articles retrieved using the search strategy by applying the Rayyan [23] app and Excel® spreadsheets. The full texts of the articles selected were then obtained, reviewed, and categorized as “included” or “excluded” by the same reviewers (TP, DS) in a double-blind analysis, according to the predefined inclusion criteria. The reasons for exclusion were documented using the Rayyan app [23]. At both stages, any discrepancies were checked by a third reviewer (LT).

2.5. Data Extraction

For all articles included in the previous stage, three reviewers (TP, DS, CN) extracted the data independently using an extraction spreadsheet previously created and validated by the research team, containing the following parameters:
  • Study characteristics: authors, year of publication, author affiliations, e-mail of corresponding author, and study title;
  • Study population: total number of participants, total number of women and men, whether study stratified analyses by Brazilian immigrants, immigrant group studies, age, country of origin, comparative group, and length of residence in the USA;
  • Study design: design type and study period;
  • Exposures;
  • Other risk factors: work, shift work, documented or otherwise, and health insurance;
  • Outcomes: MetS, hypertension or high blood pressure, type 2 diabetes or high fasting glucose, low HDL-c, high triglycerides, abdominal obesity or BMI > 30 kg/m2 (primary), and sleep disorders (secondary).

2.6. Risk of Bias

The risk of bias of the studies included was assessed using the checklists of the Joanna Briggs Institute (JBI) titled “Critical Appraisal Checklist for Analytical Cross-Sectional Studies, Checklist for Case-Control Studies, and Checklist for Cohort Studies” [24]. Located within the Faculty of Health Sciences of Adelaide University, the JBI is an international research and development organization world-renowned for evidence-based healthcare [24].
Given that systematic reviews represent a summary of core evidence, the JBI developed processes for the critical evaluation and synthesis of evidence to aid decision-making in health. The eight domains of risk of bias included in the JBI Critical Appraisal Checklist for Analytical Cross-Sectional Studies are: (i) clearly defined criteria for inclusion; (ii) description of study subjects and setting; (iii) valid and reliable measurement of exposure; (iv) use of objective, standard criteria; (v) identification of confounding factors; (vi) strategies for dealing with confounding factors; (vii) measurement of outcomes; and (viii) appropriate statistical analysis [24].
The JBI Critical Appraisal Checklist for Case Control Studies has 10 domains: (i) comparability of the groups; (ii) appropriateness of matching of cases and controls; (iii) criteria used for identification of cases and controls; (iv) valid and reliable measurement of exposure; (v) identification of confounding factors; (vi) identification of confounding factors; (vii) strategies for dealing with confounding factors; (viii) measurement of outcomes; (ix) length of exposure period of interest; and (x) appropriate statistical analysis [24].
The JBI Critical Appraisal Checklist for Cohort Studies has 11 domains: (i) similarity between groups and recruitment in the same population; (ii) similarity in measurement of exposures in assigning participants to the exposed and unexposed groups; (iii) valid and reliable measurement of exposure; (iv) identification of confounding factors; (v) strategies for dealing with confounding factors; (vi) outcome-free groups or participants at study baseline or exposure; (vii) measurement of outcomes; (viii) appropriate follow-up time; (ix) description of conclusion of follow-up or reason for loss to follow-up; (x) use of strategies to address incomplete follow-up; and (xi) appropriate statistical analysis [24].
For each study included the questions from the respective JBI Checklist were answered with a “yes”, “no”, “unclear”, or “not applicable”. The general risk of bias for each study was determined according to the following cut-off points [24]:
  • ≥70% “yes” answers: low risk of bias;
  • 50–69% “yes” answers: moderate risk of bias;
  • <50% “yes” answers: high risk of bias.
Three of the study’s reviewers (TP, DS, CN) independently rated the risk of bias for each study included in the review, and a fourth reviewer (LT) settled any disagreements or discrepancies.

2.7. Analysis and Presentation of Results

The results obtained in the systematic review were first presented as a map of evidence, in which all articles reviewed were included according to study design, number of participants, characteristics of population, study site, and outcome for later analysis and discussion of findings.
A meta-analysis of the prevalence of risk factors for the MetS was then conducted. The clinical heterogeneity of studies that had the same outcome was assessed independently by two authors, with a third author settling any disagreements. Since studies assessed many different, yet related, effects, they were pooled using the inverse variance technique employing random-effect models. The software Stata version 15.0 was used for statistical analysis. The I2 statistic was used to analyze the statistical heterogeneity of the studies. Pooled effect estimates were presented on the basis of the meta-analysis, even when the statistical heterogeneity was high (I2 > 70%), because high levels of statistical heterogeneity were expected. A subgroup and sensitivity analysis was performed comparing immigrant Latinos with US-born Latinos—including sample size, extreme estimates, and study design for the outcomes arterial hypertension or high blood pressure, type-2 diabetes mellitus or high blood glucose, and general obesity—to check their influence on the pooled estimate. We could not conduct sensitivity analysis for the other outcomes due to the limited number of articles included in the meta-analysis.
The quality of the evidence was analyzed using the assessment criteria of the Grading of Recommendations Assessment, Development and Evaluation (GRADE) system, the most widely used instrument for assessing the quality of evidence of studies included in systematic reviews [25]. GRADE differs from other evaluation instruments by separating quality of evidence and strength of recommendation, rating quality of evidence for each outcome of interest, and allowing the level of quality of evidence of observational studies to be rated up if three criteria are met. The latter are large effect size, presence of dose–response gradient, and residual confounding factors, which increase confidence in estimates [25]. Forest plots were used in the meta-analyses for outcomes rated as very low quality of evidence, although combined estimates are not shown. The results of the synthesis of the evidence are shown in the summary table of findings.

3. Results

3.1. Study Selection

Of the 2497 unique studies retrieved after applying the search strategy, 60 studies met the criteria for inclusion in the systematic review. Of this total, 52 studies were subsequently included in the meta-analysis, according to the model established by the PRISMA statement [21] (Figure 1). The eight studies excluded from the meta-analysis lacked the parameters required to estimate prevalence.

3.2. Study Characteristics

The total number of participants from all studies included in the review was 2,709,490. Most studies had a cross-sectional design (55) [15,16,26,27,28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,43,44,45,46,47,48,49,50,51,52,53,54,55,56,57,58,59,60,61,62,63,64,65,66,67,68,69,70,71,72,73,74,75,76,77,78], followed by four cohort studies [14,79,80,81] and one case–control [82] study. Only two studies stratified Brazilian immigrants in their analyses [30,47]. Regarding country of origin of the immigrants studied, 14 studies involved Mexicans only [15,26,27,42,43,52,64,65,74,75,76,77,79,81], 11 Mexicans and other Latinos [16,33,34,36,49,51,54,61,63,66,67], 10 investigated immigrants from South and Central America (Brazil [30,47], Haiti [30,32], El Salvador [30,40], Colombia [30], Guatemala [30,40], Dominican Republic [30,46], Honduras [30,40], Peru [40], Bolivia [40], Puerto Rico [32,46], Mexico [46], Guyana [82] and other unspecified countries [32,35,38,39,45,46,82]), and 7 studied immigrants from Central America (Dominican Republic [69,72,80], Puerto Rico [69,72,80], Cuba [69,72], Mexico [72,78], El Salvador [78], Guatemala [78], Honduras [78], Haiti [56,59], and other unspecified countries [37,69,80]).
Participant age ranged from 0 to 91 years. Only one study included children and adolescents in its sample [56], age group 0 to ≥75 years. However, the analysis was stratified by age group, allowing data for subjects aged >18 years to be extracted.
Length of residence of the immigrants in the USA was assessed in 36 studies. Of these publications, 12 stratified length of residence into <10 years and >10 years [26,28,32,34,35,38,39,42,58,70,78,81]. The other studies included immigrants with <10 years of residence in the USA [30,65], <15 and >15 years [29,44,53,54,56], <20 and >20 years [41,50,66,74,80], or <25 and >25 years of residence [14]. Eleven studies [16,40,47,51,52,55,61,64,67,75,77] reported only average years of residence.
The exposures assessed in the studies were grouped under four categories related to immigration; immigrant; health, diet and lifestyle; and community. The distribution of exposures for the different categories is presented in Table 1.
In total, 17 articles analyzed work-related factors [16,31,33,39,41,43,44,46,47,53,55,61,64,66,67,68,70] and 9 described participant occupations, of which 4 involved rural or agricultural workers [31,33,61,70], 2 taxi/for-hire vehicle drivers, 1 professional/management and support services workers [44], and 1 female homemakers and others [66], while 1 encompassed a broad group of workers [16], dividing participants into: skilled professional, semiskilled white-collar, clerical, semiskilled blue-collar, unskilled service, laborer, or farmworker; homemaker; and unemployed or student. Four studies addressed the issue of immigrant documentation in their results [43,46,61,76] and 19 included information on holding health insurance or otherwise [28,31,33,36,37,39,40,45,46,49,54,55,56,57,63,68,75,78,80]. The characteristics of the studies included in the review are presented in Table 2.

3.3. Risk of Bias

For the 55 cross-sectional studies included in the systematic review, the overall scoring of risk of bias ranged from 25.5 to 100% for the eight domains of the JBI Critical Appraisal Checklist for Analytical Cross-Sectional Studies (Table 3). Most of the studies (50) had low risk of bias, three had moderate risk, and two had high risk of bias (Table 3).
Of the four cohort studies included and rated using the JBI Critical Appraisal Checklist for Cohort Studies (Table 4), two had low risk and two had moderate–high risk. The single case–control study included had low risk of bias according to the rating determined on the JBI Critical Appraisal Checklist for Case–Control Studies (Table 5).

3.4. Findings

3.4.1. Outcomes for Latinos in the USA

Of the primary outcomes observed in the present review, 36 studies investigated hypertension [14,15,16,28,31,33,38,39,40,44,46,48,49,50,53,54,55,56,57,58,59,60,61,62,63,64,65,67,68,69,70,74,77,78,81,82], 34 assessed type 2 diabetes mellitus [14,15,16,31,33,34,36,37,38,39,40,43,44,46,50,52,54,56,57,59,60,61,63,64,65,67,68,69,70,75,77,78,80,82], 40 obesity (BMI ≥ 30 kg/m2) [14,15,16,26,27,29,30,31,32,33,34,35,37,40,41,42,43,44,46,47,50,51,52,54,58,60,61,63,64,65,66,67,70,71,72,73,74,76,78,79], 8 abdominal obesity (waist circumference) [15,26,39,60,64,65,72,77], 7 low cholesterol HDL [15,37,40,45,60,65,77], 7 high triglycerides [15,34,40,45,60,65,77], and 7 MetS [16,40,60,64,65,77]. Of the total studies reviewed, 21 analyzed at least three factors of MetS [14,15,16,33,34,37,39,40,44,46,50,54,60,61,63,64,65,67,70,77,78]. With regard to secondary outcomes, only two studies assessed sleep duration [34,44] (Table 6).

Arterial Hypertension or High Blood Pressure for Latinos in the USA

Of the 36 studies that assessed arterial hypertension, 24 measured blood pressure [14,15,28,31,33,38,39,40,48,50,53,57,59,60,61,63,64,65,67,69,74,77,78,82], 11 collected information based on self-reports [16,44,46,49,54,56,58,62,68,70,81], and 1 employed both methods [55].
The prevalence of arterial hypertension or high blood pressure in the studies reviewed in Latinos was 28% (95% CI: 23%-33%, I2: 99.6%). Of the studies included in the meta-analysis, 23 were heterogeneous (Figure 2). Within this group, some studies [16,39,50,53,68,70,78,82] differed more with respect to population size, measurement approach (objective or subjective), design (one case–control study) and characteristics of the population (ethnicity, age, and country of origin).
Additionally, a meta-analysis of the prevalence of arterial hypertension or high blood pressure for non-US-born Latinos (immigrants) and US-born Latinos was carried out (Figure 3). We found slightly higher prevalence for US-born Latinos (32% (95% CI: 19–45%, I2: 99.7%)), than for immigrant Latinos (28% (95% CI: 22–33%, I2: 99.3%)). The seven studies of immigrant Latinos and four of US-born Latinos included in the meta-analysis were heterogeneous. Greater differences were identified in two studies of immigrant Latinos [39,54] and two of US-born immigrants [14,54], possibly explained by population size, study design, or outcome measurement method.

Type 2 Diabetes Mellitus or High Blood Glucose for Latinos in the USA

Of the 34 studies which evaluated type 2 diabetes mellitus or high blood glucose, 21 analyzed blood samples to determine glucose levels [14,15,31,34,37,38,39,40,43,50,52,57,59,60,61,63,64,65,77,80,82], while 13 collected self-report information in interviews [16,33,36,44,46,54,56,67,68,69,70,75,78].
A total of 24 studies were included in the meta-analysis of the prevalence of type 2 diabetes mellitus or high blood glucose (Figure 4), although those were heterogeneous. The prevalence of those conditions in Latinos was 17% (95% CI: 14–20%, I2: 99.3%). Notably, a number of studies [16,37,39,43,52,65,70,78,80,82] exhibited greater heterogeneity compared with the others regarding population size, outcome measurement method, study design, and country of origin of immigrant Latinos.
In the further analyses, a meta-analysis of the prevalence of type 2 diabetes mellitus or high blood glucose was conducted on seven studies for immigrant Latinos and five for US-born Latinos (Figure 5). However, population size and outcome measurement methods differed in three of the studies for immigrant Latinos [39,43,54] and three for US-born Latinos [38,43,54]. A higher prevalence of the conditions was found for US-born Latinos (25% (95% CI: 16–33%, I2: 99.6%)) compared with immigrant Latinos (19% (95% CI: 14–24%, I2: 99.3%)).

General Obesity and Abdominal Obesity for Latinos in the USA

Of the 41 studies assessing general obesity (BMI ≥ 30 kg/m2), 26 collected measurements of weight and height of participants [14,15,26,27,30,31,32,33,34,37,40,43,46,50,51,52,60,61,63,64,65,66,67,72,73,74] (one study classified participants as “overweight or obese” [31] on the basis of a BMI ≥ 25 kg/m2), 12 obtained the parameters from self-reports [16,29,35,41,44,47,54,58,70,71,76,79], while 2 studies employed both collection methods [42,78]. All eight studies assessing abdominal obesity performed waist circumference measurements.
For general obesity, the 28 studies included in the meta-analysis (Figure 6) were heterogeneous, revealing a general obesity rate of 37% (95% CI: 34–40%, I2: 99.6%) in Latinos. A total of eleven [16,29,34,35,37,43,54,65,66,70,74] studies showed greater heterogeneity, particularly for population sample size, age, country of origin, and outcome measures.
For abdominal obesity, the prevalence for Latinos determined by the meta-analysis of five studies was 54% (95% CI: 48–59%, I2: 96.7%). Notably, all five studies were heterogeneous (Figure 7).
In our analyses of general obesity rates in immigrant Latinos and US-born Latinos, 13 studies were included in the meta-analysis for immigrants and 10 for US-born Latinos (Figure 8). We observed a higher prevalence of general obesity in immigrants (23%, 95% CI: 19–26%, I2: 99.7%) compared with US-born Latinos (15%, 95% CI: 13–16%, I2: 99%). All articles included in the meta-analysis involving immigrants, as well as those of US-born immigrants, were heterogeneous. However, five studies of immigrant Latinos [30,37,43,51,72] and one of US-born Latinos [72] exhibited greater heterogeneity for population size, age, and country of origin.

HDL Cholesterol and Triglycerides for Latinos in the USA

All studies that determined HDL cholesterol HDL (7) and triglycerides (7) collected data through blood workups. Five studies were included in the meta-analysis of the prevalence of low HDL cholesterol in Latinos (Figure 9), revealing a prevalence of 42% (95% CI: 35–49%, I2: 92.2%). The studies were heterogeneous, maybe due to different sample sizes.
For high triglycerides, the five studies included in the meta-analysis were also heterogeneous (Figure 10). Two of the studies [34,65] differed more for population size and country of origin of immigrant Latinos. The prevalence of high triglycerides in Latinos was 38% (95% CI: 24–51%, I2: 98.6%).

Metabolic Syndrome for Latinos in the USA

Of the six studies assessing the MetS, five used objective measures for obtaining data [40,60,64,65,77], while one collected data using self-reports [16].
Despite the greater heterogeneity of two studies [40,65], attributed to population size and country of origin of immigrant Latinos, they were included, together with three other studies in the meta-analysis of the prevalence rate of MetS in Latinos (Figure 11), which results showed a prevalence of 39% (95% CI: 32–45%, I2: 93.2%).

3.4.2. Further Sensitivity Analyses

Sensitivity analyses considering sample size, extreme estimates, and study design did not show substantial changes in the results of the meta-analyses for almost all analyses of the outcomes hypertension or high blood pressure, type 2 diabetes mellitus or high blood glucose, and overall obesity. However, a statistically significant difference was observed between groups (data not shown) when considering study design (longitudinal and cross-sectional) for type 2 diabetes mellitus or high blood glucose (p = 0.02, prevalence of 34% for longitudinal and 15% for cross-sectional) and sample size (≤1000 participants and >1000 participants) for general obesity (p = 0.007, prevalence of 45% for ≤1000 and 32% for >1000). The difference observed for the study design may have occurred because longitudinal studies have greater methodological rigor and control for potential confounders than cross-sectional ones.
Further sensitivity analyses including sex, age, country of birth, length of residence in the USA, migration status, occupation, and health insurance, which could explain other differences, could not be conducted because insufficient studies had the necessary data for the estimates.

3.4.3. Quality of Evidence

After applying the GRADE system criteria (Table 7), the categories risk of bias (heterogeneity) and imprecision were downgraded by one point for the outcomes arterial hypertension, type 2 diabetes mellitus, general obesity, and abdominal obesity. Publication bias was not downgraded, not even for indirect evidence, since the surrogate outcomes observed (high blood pressure and glucose, and BMI and waist measures) were strongly associated with the outcomes of interest.
The quality of evidence for the assessment of high triglycerides and low HDL cholesterol was downgraded by one point for risk of bias, inconsistency (heterogeneity), and publication bias, and by two points for imprecision, because we found only a few studies assessing those outcomes. Most studies showed major differences in sample size and broad confidence intervals in the meta-analysis. No downgrades for indirect evidence were made since no surrogate outcomes were identified.
For MetS, the risk of bias and publication bias categories were each downgraded by one level, whereas the inconsistency (heterogeneity) and imprecision categories were each downgraded by two levels. The quality of evidence was downgraded for publication bias because few studies were found assessing the MetS in immigrant Latinos, which may have led to overestimation of the measure.
The studies included in the review were expected to be heterogeneous, chiefly owing to cultural disparities, such as dietary habits and different lifestyles, among immigrant populations. Those differences can impact the outcomes observed, confirmed by I2 results exceeding 90%. Other factors, such as socioeconomic differences, migration status, education, acculturation, and length of residence in the USA, can also affect heterogeneity. Those factors, however, could not be explored further in our review because few studies reported those characteristics. The downgrading of quality by one level due to risk of bias for all outcomes observed was based on the individual assessment of risk of bias by the JBI.
In conclusion, the quality of evidence for the outcomes of interest of this systematic review and meta-analysis was defined as low for systemic arterial hypertension, type 2 diabetes mellitus, general obesity, and abdominal obesity and as very low for high triglycerides, low HDL cholesterol, and MetS. It is likely that further research may impact this conclusion and change it.

4. Discussion

4.1. Summary of Evidence

A total of 60 sixty studies were included in this systematic review, of which 52 were included in the meta-analysis. The overall population of the 52 studies was 436,654 immigrant Latinos in the US. The pooled prevalence obtained for arterial hypertension, type 2 diabetes mellitus, general obesity, and abdominal obesity were 28% (95% CI: 23–33%), 17% (95% CI: 14–20%), 37% (95% CI: 33–40%) and 54% (95% CI: 48–59%), respectively (Table 7). The prevalence for the other outcomes are not shown because of uncertainty regarding those outcomes in immigrant Latinos and the very low quality of the evidence.
Higher prevalence for the outcomes arterial hypertension or high blood pressure and type 2 diabetes mellitus or high blood glucose were found in US-born Latinos compared with immigrant Latinos. By contrast, the prevalence for general obesity was higher in immigrants. Data from the USA Centers for Disease Control and Prevention (CDC) [12] show an alarming rise in obesity, hypertension, and diabetes in the Latino population. The evidence found in this review demonstrates an increased cardiovascular risk in Latino populations in the USA and supports the notion of increased weight and chronic conditions in this group as a result of the accelerated process of nutrition transition occurring in many countries of Latin America and other developing countries. Secondly, the evidence suggests that exposure to a highly obesogenic environment such as the USA should be taken into account in studies on obesity and associated factors [37,51]. Thirdly, the evidence supports the potential association of socioeconomic status, variations in physical activity behavior, and significant cultural variations among Latin American countries with the development of chronic diseases.
Comparison of the prevalence found in our meta-analysis with those of the CDC for the Latino population in the six states with the largest concentration of Latino and Brazilians (Florida, Massachusetts, New Jersey, New York, California, and Connecticut) [12], based on 2019 American Community Survey (ACS) data [83], revealed higher prevalence in our meta-analysis for hypertension (CDC prevalence range: 22.4–27.4%), diabetes (CDC range: 8.3–13.9%), and high cholesterol (CDC range: 27.3–31.8% based on meta-analysis rates for triglycerides and HDL cholesterol). The meta-analysis prevalence rate for obesity was similar to the 2020 CDC prevalence [12] for general obesity (range: 27.1–41.4%) but lower only for the rate observed in California.

4.2. Comparison with Previous Systematic Reviews and Meta-Analyses

To the best of our knowledge, there have been no previous systematic reviews or meta-analyses assessing factors associated with MetS in immigrant Latinos in the USA, precluding any meaningful comparisons. However, two systematic reviews assessing obesity alone [17,18] in immigrant populations were conducted. Those reviews suggested a potential relationship between increased obesity and higher level of acculturation, sex, nativity, length of residence in the USA, and generational status of immigrants. Nevertheless, the prevalence of obesity in this population was not addressed in those reviews, preventing any comparisons with obesity data we found in our review and meta-analysis.
The review by Delavari et al. [17] explored the relationship between acculturation and overweight/obesity in adult immigrants from low- and middle-income countries. Overall, of the nine studies reviewed, seven identified a positive association between level of acculturation and bodyweight variables. Among the studies reviewed by those authors involving immigrant Latino populations (Mexican-Americans) in the USA, significant BMI differences were found according to acculturation levels, sex, nativity, length of residence in the country, and generational status of immigrants. That review [17] showed that higher levels of acculturation were associated with greater BMI in immigrant Latinos, and also identified an association of sex, immigrant generational status, and nativity with increased obesity.
In the analyses stratified by sex, women immigrants residing in the USA for over 15 years had a mean BMI that was 2.38 kg/m2 greater than the average found for women with less than 5 years of residence. A similar result was found for men living in the USA for over 15 years compared with those residing in the country for less than 5 years (1.10 kg/m2 higher mean BMI in former group). To assess the risk of developing obesity associated with increased level of acculturation, the same review found a 4% and 3% higher risk of obesity in immigrant men and women with a high level of acculturation, respectively. With regard to the generational status of immigrants, Delavari et al. [17] found that second and third generations of Mexican-Americans had higher BMIs than their first generation counterparts.
The review by Oza-Frank and Cunningham [18] investigated the relationship between length of residence of immigrants in the USA and BMI. For the majority of the studies reviewed, the authors identified a positive association between time of residence in the USA and BMI. Some of the study results showed that a length of residence of up to 10 years promoted no major change in the BMI of immigrants, whereas others identified peak BMI growth after 21 years of residence for men and 15 years for women. The same review [18] included four studies involving immigrant Latinos, all of which reported a significant association between BMI and length of residence in the US.

4.3. Limitations

Our systematic review and meta-analysis have some limitations. First, there is high statistical heterogeneity for all outcomes. Immigrant populations differ in many ways, e.g., country of origin, migration status, degree of acculturation, and educational and socioeconomic levels, and those differences might explain the high inconsistencies found. Thus, the pooled estimates in this study should be regarded as suggestive as opposed to conclusive.
Second, most studies reviewed specifying the origin of the immigrant Latino population included only immigrants from Mexico or Central America. As a result, much of the evidence found in our review is limited to a subpopulation of immigrants from Latin America. There is scant scientific evidence on components of the MetS in immigrants from South America. Thus, the evidence found in this review and meta-analysis may not be representative of those countries which exhibit major sociocultural and economic differences that can impact the development of chronic diseases.
Third, it was not possible to stratify analyses for other key characteristics, such as sex, age, country of birth, length of residence in the USA, migration status, occupation, and health insurance, because not all studies reported the detailed information needed to calculate such estimates.
Fourth, some studies reported results for more than one outcome of interest. However, it was not possible to extract information for all outcomes in some cases, as not all studies provided the data needed for that.
Fifth, some studies used measures derived from self-reports, particularly for general obesity, which are known to be subject to information bias, typically leading to an underestimation of own weight by women and overestimation by men [84].
Lastly, the studies were pooled in the meta-analyses, irrespective of risk of individual bias associated with them in order to prevent selection bias in meta-analyses due to stratification by quality of study [85].

5. Conclusions

This systematic review and meta-analysis were conducted in collaboration with researchers from the USA and Brazil to compile the available evidence on MetS and its risk factors in the immigrant Latino population. A large body of evidence was identified encompassing numerous studies, particularly pertaining to hypertension, type 2 diabetes, and both general and abdominal obesity. However, the evidence was classified as low or very low depending on the outcome. This rating suggests that future reviews and meta-analyses may reach different conclusions when more studies assessing MetS and its components become available, particularly HDL cholesterol and triglycerides, factors which featured less in the studies reviewed.
The pooled prevalence obtained were 28% (95% CI: 23–33%) for arterial hypertension, 17% (95% CI: 14–20%) for type 2 diabetes mellitus, 37% (95% CI: 33–40%) for general obesity, and 54% (95% CI: 48–59%) for abdominal obesity. Greater prevalence of arterial hypertension and type 2 diabetes mellitus were found for US-born Latinos, while general obesity rates were higher for immigrant Latinos.
The production of prevalence estimates of the MetS and its risk factors in the immigrant population appears to be justified and evidence-based, considering the cultural, dietary, and lifestyle differences encountered by migrants, which promote increased obesity (strongly associated with MetS) and chronic diseases associated with the condition.
However, few studies were available that included, or analyzed separately, information on immigrant Latinos from South America, including Brazil, a region for which only two studies were found. Therefore, further studies are needed addressing MetS and its factors in immigrants from South America, particularly Brazil, in view of the particularities regarding the culture, language, and diet compared with other Latin American nations.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/ijerph20021307/s1, Table S1: PRISMA 2020 Checklist; Table S2: PRISMA 2020 Abstract Checklist; Table S3: Search Strategy.

Author Contributions

Conceptualization, T.M.P., L.R.T. and C.E.G.S.; methodology, T.M.P., L.R.T., C.A.F.d.A. and C.E.G.S.; protocol and search strategy, T.M.P., L.R.T., M.M.-S. and C.E.G.S.; investigation, T.M.P., L.R.T., D.S. and C.N.; formal analysis, T.M.P., L.R.T. and C.A.F.d.A.; writing—original draft preparation, T.M.P. and L.R.T.; writing—review and editing, T.M.P., L.R.T., C.A.F.d.A., M.M.-S., D.S., C.N. and C.E.G.S.; funding acquisition, T.M.P. and L.R.T. All authors have read and agreed to the published version of the manuscript.

Funding

This study was partially supported by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior—CAPES—Finance Code 001.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The protocol of the systematic review is available at: https://osf.io/jfm7g (accessed on 2 November 2022).

Acknowledgments

The authors would like to thank the Oswaldo Cruz Foundation (Fiocruz) for the doctoral fellowship granted to the main author of the article during the study period; the authors also thank the Carlos Chagas Filho Foundation Research Funding Body of Rio de Janeiro state (FAPERJ) for the financial support provided for the review and translation of the article (grant E-26./210.882/2021).

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

References

  1. Omran, A.R. The Epidemiologic Transition: A Theory of the Epidemiology of Population Change. Milbank Q 2005, 83, 731–757. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  2. World Health Organization. Obesity: Preventing and Managing the Global Epidemic: Report of a WHO Consultation; WHO Technical Report Series; World Health Organization: Geneva, Switzerland, 2000; ISBN 978-92-4-120894-9. [Google Scholar]
  3. World Health Organization. Obesity and Overweight. Available online: https://www.who.int/news-room/fact-sheets/detail/obesity-and-overweight (accessed on 25 August 2022).
  4. Zimmet, P.; Magliano, D.; Matsuzawa, Y.; Alberti, G.; Shaw, J. The Metabolic Syndrome: A Global Public Health Problem and a New Definition. J. Atheroscler. Thromb. 2005, 12, 295–300. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  5. Hruby, A.; Hu, F.B. The Epidemiology of Obesity: A Big Picture. PharmacoEconomics 2015, 33, 673–689. [Google Scholar] [CrossRef]
  6. Reaven, G.M. Role of Insulin Resistance in Human Disease. Diabetes 1988, 37, 1595–1607. [Google Scholar] [CrossRef] [PubMed]
  7. NCEP. Third Report of the National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III) Final Report. Circulation 2002, 106, 3143–3421. [Google Scholar] [CrossRef]
  8. Grundy, S.M.; Cleeman, J.I.; Daniels, S.R.; Donato, K.A.; Eckel, R.H.; Franklin, B.A.; Gordon, D.J.; Krauss, R.M.; Savage, P.J.; Smith, S.C.; et al. Diagnosis and Management of the Metabolic Syndrome: An American Heart Association/National Heart, Lung, and Blood Institute Scientific Statement. Circulation 2005, 112, 2735–2752. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  9. World Health Organization. Definition, Diagnosis and Classification of Diabetes Melittus and Its Complications. Part 1: Diagnosis and Classification of Diabetes Melittus. Geneva. 1999. Available online: https://apps.who.int/iris/handle/10665/66040 (accessed on 16 September 2022).
  10. Shi, T.H.; Wang, B.; Natarajan, S. The Influence of Metabolic Syndrome in Predicting Mortality Risk Among USA Adults: Importance of Metabolic Syndrome Even in Adults with Normal Weight. Prev. Chronic Dis. 2020, 17, 200020. [Google Scholar] [CrossRef]
  11. Malik, V.S.; Willett, W.C.; Hu, F.B. Global Obesity: Trends, Risk Factors and Policy Implications. Nat. Rev. Endocrinol. 2013, 9, 13–27. [Google Scholar] [CrossRef] [PubMed]
  12. CDC. BRFSS Prevalence & Trends Data. Available online: https://www.cdc.gov/brfss/brfssprevalence/ (accessed on 7 July 2022).
  13. US Census Bureau. USA Census Bureau: Explore Data. Available online: https://data.census.gov/mdat/#/ (accessed on 2 January 2023).
  14. Ahmed, A.T.; Quinn, V.P.; Caan, B.; Sternfeld, B.; Haque, R.; Van Den Eeden, S.K. Generational Status and Duration of Residence Predict Diabetes Prevalence among Latinos: The California Men’s Health Study. BMC Public Health 2009, 9, 392. [Google Scholar] [CrossRef] [Green Version]
  15. Beltrán-Sánchez, H.; Palloni, A.; Riosmena, F.; Wong, R. SES Gradients Among Mexicans in the United States and in Mexico: A New Twist to the Hispanic Paradox? Demography 2016, 53, 1555–1581. [Google Scholar] [CrossRef]
  16. Hubert, H.; Snider, J.; Winkleby, M. Health Status, Health Behaviors, and Acculturation Factors Associated with Overweight and Obesity in Latinos from a Community and Agricultural Labor Camp Survey. Prev. Med. 2005, 40, 642–651. [Google Scholar] [CrossRef] [PubMed]
  17. Delavari, M.; Sønderlund, A.L.; Swinburn, B.; Mellor, D.; Renzaho, A. Acculturation and Obesity among Migrant Populations in High Income Countries--a Systematic Review. BMC Public Health 2013, 13, 458. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  18. Oza-Frank, R.; Cunningham, S.A. The Weight of USA Residence among Immigrants: A Systematic Review. Obes. Rev. 2010, 11, 271–280. [Google Scholar] [CrossRef] [PubMed]
  19. Brasil. Ministério Da Saúde. Secretaria de Vigilância Em Saúde. Vigitel Brasil: Vigilância de Fatores de Risco e Proteção Para Doenças Crônicas Por Inquérito Telefônico. Publicações 2010–2020. Available online: https://www.gov.br/saude/pt-br/centrais-de-conteudo/publicacoes/publicacoes-svs/vigitel (accessed on 5 July 2022).
  20. United States Census Bureau. Hispanic or Latino Origin. Available online: https://www.census.gov/acs/www/about/why-we-ask-each-question/ethnicity/ (accessed on 19 September 2022).
  21. Page, M.J.; McKenzie, J.E.; Bossuyt, P.M.; Boutron, I.; Hoffmann, T.C.; Mulrow, C.D.; Shamseer, L.; Tetzlaff, J.M.; Akl, E.A.; Brennan, S.E.; et al. The PRISMA 2020 Statement: An Updated Guideline for Reporting Systematic Reviews. BMJ 2021, 372, n71. [Google Scholar] [CrossRef] [PubMed]
  22. WHO. ICD-10 Version: 2019; WHO: Geneva, Switzerland, 2019. [Google Scholar]
  23. Ouzzani, M.; Hammady, H.; Fedorowicz, Z.; Elmagarmid, A. Rayyan-a Web and Mobile App for Systematic Reviews. Syst. Rev. 2016, 5, 210. [Google Scholar] [CrossRef] [Green Version]
  24. Moola, S.; Munn, Z.; Tufanaru, C.; Aromataris, E.; Sears, K.; Sfetcu, R.; Currie, M.; Qureshi, R.; Mattis, P.; Lisy, K.; et al. Chapter 7: Systematic Reviews of Etiology and Risk. In JBI Manual for Evidence Synthesis; Aromataris, E., Munn, Z., Eds.; JBI: Adelaide, Australia, 2020. [Google Scholar]
  25. Goldet, G.; Howick, J. Understanding GRADE: An Introduction. J. Evid. Based Med. 2013, 6, 50–54. [Google Scholar] [CrossRef]
  26. Albrecht, S.S.; Diez Roux, A.V.; Aiello, A.E.; Schulz, A.J.; Abraido-Lanza, A.F. Secular Trends in the Association between Nativity/Length of USA Residence with Body Mass Index and Waist Circumference among Mexican-Americans, 1988–2008. Int. J. Public Health 2013, 58, 573–581. [Google Scholar] [CrossRef] [Green Version]
  27. Altman, C.E.; Van Hook, J.; Gonzalez, J. Becoming Overweight without Gaining a Pound: Weight Evaluations and the Social Integration of Mexicans in the United States. Int. Migr. Rev. 2017, 51, 3–36. [Google Scholar] [CrossRef] [Green Version]
  28. Angel, R.J.; Angel, J.L.; Hill, T.D. A Comparison of the Health of Older Hispanics in the United States and Mexico: Methodological Challenges. J. Aging Health 2008, 20, 3–31. [Google Scholar] [CrossRef] [Green Version]
  29. Antecol, H.; Bedard, K. Unhealthy Assimilation: Why Do Immigrants Converge to American Health Status Levels? Demography 2006, 43, 337–360. [Google Scholar] [CrossRef]
  30. Anzman-Frasca, S.; Economos, C.D.; Tovar, A.; Boulos, R.; Sliwa, S.; Gute, D.M.; Pirie, A.; Must, A. Depressive Symptoms and Weight Status Among Women Recently Immigrating to the US. Matern. Child Health J. 2016, 20, 1578–1585. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  31. Boggess, B.; Bogue, H.O. The Health of U.S. Agricultural Worker Families: A Descriptive Study of over 790,000 Migratory and Seasonal Agricultural Workers and Dependents. J. Health Care Poor Underserved 2016, 27, 778–792. [Google Scholar] [CrossRef] [PubMed]
  32. Caspi, C.E.; Tucker-Seeley, R.D.; Adamkiewicz, G.; Roberto, C.A.; Stoddard, A.M.; Sorensen, G.C. Food Hardship and Obesity in a Sample of Low-Income Immigrants. J. Immigr. Minor. Health 2017, 19, 130–137. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  33. Castañeda, S.F.; Rosenbaum, R.P.; Holscher, J.T.; Madanat, H.; Talavera, G.A. Cardiovascular Disease Risk Factors Among Latino Migrant and Seasonal Farmworkers. J. Agromed. 2015, 20, 95–104. [Google Scholar] [CrossRef] [Green Version]
  34. Chakraborty, B.M.; Mueller, W.H.; Reeves, R.; Poston, W.S.C.; Holscher, D.M.; Quill, B.; Hanis, C.L.; Foreyt, J.P. Migration History, Health Behaviors, and Cardiovascular Disease Risk Factors in Overweight Mexican-American Women. Ethn. Dis. 2003, 13, 94–108. [Google Scholar]
  35. Choi, J.Y. Prevalence of Overweight and Obesity Among USA Immigrants: Results of the 2003 New Immigrant Survey. J. Immigr. Minor. Health 2012, 14, 1112–1118. [Google Scholar] [CrossRef]
  36. Coffman, M.J.; Norton, C.K.; Beene, L. Diabetes Symptoms, Health Literacy, and Health Care Use in Adult Latinos with Diabetes Risk Factors. J. Cult. Divers. 2012, 19, 4–9. [Google Scholar]
  37. Davis, E.E.; Huffman, F.G. Differences in Coronary Heart Disease Risk Markers among Apparently Healthy Individuals of African Ancestry. J. Natl. Med. Assoc. 2007, 99, 658–664. [Google Scholar]
  38. Elfassy, T.; Mossavar-Rahmani, Y.; Van Horn, L.; Gellman, M.; Sotres-Alvarez, D.; Schneiderman, N.; Daviglus, M.; Beasley, J.M.; Llabre, M.M.; Shaw, P.A.; et al. Associations of Sodium and Potassium with Obesity Measures Among Diverse USA Hispanic/Latino Adults: Results from the Hispanic Community Health Study/Study of Latinos: Sodium, Potassium, and Obesity. Obesity 2018, 26, 442–450. [Google Scholar] [CrossRef] [Green Version]
  39. Gany, F.; Bari, S.; Gill, P.; Ramirez, J.; Ayash, C.; Loeb, R.; Aragones, A.; Leng, J. Step On It! Workplace Cardiovascular Risk Assessment of New York City Yellow Taxi Drivers. J. Immigr. Minor. Health 2016, 18, 118–134. [Google Scholar] [CrossRef] [Green Version]
  40. Gill, R.M.; Khan, S.A.; Jackson, R.T.; Duane, M. Prevalence of the Metabolic Syndrome in Central and South American Immigrant Residents of the Washington, DC, Area. J. Nutr. Metab. 2017, 2017, 9531964. [Google Scholar] [CrossRef] [PubMed]
  41. Giuntella, O.; Stella, L. The Acceleration of Immigrant Unhealthy Assimilation: Immigrant Obesity Assimilation. Health Econ. 2017, 26, 511–518. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  42. Glick, J.E.; Yabiku, S.T. A Moving Paradox: A Binational View of Obesity and Residential Mobility. J. Immigr. Minor. Health 2015, 17, 489–497. [Google Scholar] [CrossRef]
  43. Iten, A.E.; Jacobs, E.A.; Lahiff, M.; Fernández, A. Undocumented Immigration Status and Diabetes Care Among Mexican Immigrants In Two Immigration “Sanctuary” Areas. J. Immigr. Minor. Health 2014, 16, 229–238. [Google Scholar] [CrossRef] [Green Version]
  44. Jackson, C.L.; Hu, F.B.; Redline, S.; Williams, D.R.; Mattei, J.; Kawachi, I. Racial/Ethnic Disparities in Short Sleep Duration by Occupation: The Contribution of Immigrant Status. Soc. Sci. Med. 2014, 118, 71–79. [Google Scholar] [CrossRef] [Green Version]
  45. Jaranilla, J.; DeFor, T.; Vazquez Benitez, G.; Kottke, T.E. Lipid Abnormalities in Foreign-Born and US-Born Patients in a Medical Group. J. Clin. Lipidol. 2014, 8, 77–85. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  46. Jerome-D’Emilia, B.; Dunphy Suplee, P.; Gardner, M.R. Understanding Access to Care and Health Needs of Hispanic Women From an Urban Community. Hisp. Health Care Int. 2014, 12, 71–80. [Google Scholar] [CrossRef] [PubMed]
  47. Klabunde, R.A.; Neto, F.L.; Louzada, A.; de Moura, R.F.; Calixto, F.M.; Danaei, G.; Castro, M.C. Prevalence and Predictors of Overweight and Obesity in Brazilian Immigrants in Massachusetts. BMC Public Health 2020, 20, 42. [Google Scholar] [CrossRef]
  48. LeBrón, A.M.W.; Schulz, A.J.; Mentz, G.; Reyes, A.G.; Gamboa, C.; Israel, B.A.; Viruell-Fuentes, E.A.; House, J.S. Impact of Change over Time in Self-Reported Discrimination on Blood Pressure: Implications for Inequities in Cardiovascular Risk for a Multi-Racial Urban Community. Ethn. Health 2020, 25, 323–341. [Google Scholar] [CrossRef]
  49. Li, K.; Wen, M.; Henry, K.A. Ethnic Density, Immigrant Enclaves, and Latino Health Risks: A Propensity Score Matching Approach. Soc. Sci. Med. 2017, 189, 44–52. [Google Scholar] [CrossRef]
  50. López, L.; Swett, K.; Rodriguez, F.; Kizer, J.R.; Penedo, F.; Gallo, L.; Allison, M.; Arguelles, W.; Gonzalez, F.; Kaplan, R.C.; et al. Association of Acculturation with Cardiac Structure and Function among Hispanics/Latinos: A Cross-Sectional Analysis of the Echocardiographic Study of Latinos. BMJ Open 2019, 9, e028729. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  51. Martínez, A.D.; Juon, H.; Levine, D.M.; Lyford-Pike, V.; Peters, S. The Association between Nutrition Transition Score and Measures of Obesity: Results from a Cross-Sectional Study among Latina/o Immigrants in Baltimore. Glob. Health 2014, 10, 57. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  52. McClure, H.H.; Snodgrass, J.J.; Martinez, C.R.; Eddy, J.M.; Jiménez, R.A.; Isiordia, L.E. Discrimination, Psychosocial Stress, and Health among Latin American Immigrants in Oregon. Am. J. Hum. Biol. 2010, 22, 421–423. [Google Scholar] [CrossRef]
  53. Narang, B.; Mirpuri, S.; Kim, S.Y.; Jutagir, D.R.; Gany, F. Lurking in Plain Sight: Hypertension Awareness and Treatment among New York City Taxi/For-hire Vehicle Drivers. J. Clin. Hypertens. 2020, 22, 962–969. [Google Scholar] [CrossRef]
  54. Rodriguez, F.; Hicks, L.S.; López, L. Association of Acculturation and Country of Origin with Self-Reported Hypertension and Diabetes in a Heterogeneous Hispanic Population. BMC Public Health 2012, 12, 768. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  55. Ryan, A.M.; Gee, G.C.; Laflamme, D.F. The Association between Self-Reported Discrimination, Physical Health and Blood Pressure: Findings from African Americans, Black Immigrants, and Latino Immigrants in New Hampshire. J. Health Care Poor Underserved 2006, 17, 116–132. [Google Scholar] [CrossRef]
  56. Saint-Jean, G.; Crandall, L.A. Utilization of Preventive Care by Haitian Immigrants in Miami, Florida. J. Immigr. Minor. Health 2005, 7, 283–292. [Google Scholar] [CrossRef]
  57. Shelley, D.; Tseng, T.-Y.; Andrews, H.; Ravenell, J.; Wu, D.; Ferrari, P.; Cohen, A.; Millery, M.; Kopal, H. Predictors of Blood Pressure Control Among Hypertensives in Community Health Centers. Am. J. Hypertens. 2011, 24, 1318–1323. [Google Scholar] [CrossRef] [Green Version]
  58. Shi, L.; Zhang, D.; van Meijgaard, J.; MacLeod, K.E.; Fielding, J.E. The Interaction Between an Individual’s Acculturation and Community Factors on Physical Inactivity and Obesity: A Multilevel Analysis. Am. J. Public Health 2015, 105, 1460–1467. [Google Scholar] [CrossRef]
  59. Singh-Franco, D.; Perez, A.; Wolowich, W.R. Improvement in Surrogate Endpoints by a Multidisciplinary Team in a Mobile Clinic Serving a Low-Income, Immigrant Minority Population in South Florida. J. Health Care Poor Underserved 2013, 24, 67–77. [Google Scholar] [CrossRef]
  60. Tehranifar, P.; Protacio, A.; Schmitt, K.M.; Desperito, E.; Oskar, S.; Potter, A.J.; Engmann, N.J.; Terry, M.B. The Metabolic Syndrome and Mammographic Breast Density in a Racially Diverse and Predominantly Immigrant Sample of Women. Cancer Causes Control 2015, 26, 1393–1403. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  61. Villarejo, D.; McCurdy, S.A.; Bade, B.; Samuels, S.; Lighthall, D.; Williams, D. The Health of California’s Immigrant Hired Farmworkers. Am. J. Ind. Med. 2010, 53, 387–397. [Google Scholar] [CrossRef] [PubMed]
  62. Viruell-Fuentes, E.A.; Ponce, N.A.; Alegría, M. Neighborhood Context and Hypertension Outcomes Among Latinos in Chicago. J. Immigr. Minor. Health 2012, 14, 959–967. [Google Scholar] [CrossRef] [PubMed]
  63. Wassink, J.; Perreira, K.M.; Harris, K.M. Beyond Race/Ethnicity: Skin Color and Cardiometabolic Health Among Blacks and Hispanics in the United States. J. Immigr. Minor. Health 2017, 19, 1018–1026. [Google Scholar] [CrossRef] [PubMed]
  64. Weigel, M.M.; Armijos, R.X. Food Insecurity, Cardiometabolic Health, and Health Care in U.S.-Mexico Border Immigrant Adults: An Exploratory Study. J. Immigr. Minor. Health 2019, 21, 1085–1094. [Google Scholar] [CrossRef]
  65. Weigel, M.M.; Armijos, R.X.; Hall, Y.P.; Ramirez, Y.; Orozco, R. The Household Food Insecurity and Health Outcomes of U.S.–Mexico Border Migrant and Seasonal Farmworkers. J. Immigr. Minor. Health 2007, 9, 157–169. [Google Scholar] [CrossRef]
  66. Wolin, K.Y.; Colangelo, L.A.; Chiu, B.C.-H.; Gapstur, S.M. Obesity and Immigration among Latina Women. J. Immigr. Minor. Health 2009, 11, 428–431. [Google Scholar] [CrossRef]
  67. Dawson, A.Z.; Walker, R.J.; Gregory, C.; Egede, L.E. Relationship between Social Determinants of Health and Systolic Blood Pressure in United States Immigrants. Int. J. Cardiol. Hypertens. 2019, 2, 100011. [Google Scholar] [CrossRef]
  68. Cohn, T.; Miller, A.; Fogg, L.; Braun, L.T.; Coke, L. Impact of Individual and Neighborhood Factors on Cardiovascular Risk in White Hispanic and Non-Hispanic Women and Men: Ethnicity and Individual and Neighborhood Cardiovascular Risk. Res. Nurs. Health 2017, 40, 120–131. [Google Scholar] [CrossRef]
  69. Del Brutto, O.H.; Dong, C.; Rundek, T.; Elkind, M.S.V.; Del Brutto, V.J.; Sacco, R.L. Cardiovascular Health Status Among Caribbean Hispanics Living in Northern Manhattan and Ecuadorian Natives/Mestizos in Rural Coastal Ecuador: A Comparative Study. J. Community Health 2013, 38, 634–641. [Google Scholar] [CrossRef] [Green Version]
  70. López-Cevallos, D.F.; Escutia, G.; González-Peña, Y.; Garside, L.I. Cardiovascular Disease Risk Factors among Latino Farmworkers in Oregon. Ann. Epidemiol. 2019, 40, 8–12.e1. [Google Scholar] [CrossRef] [PubMed]
  71. Pickering, R.P.; Grant, B.F.; Chou, S.P.; Compton, W.M. Are Overweight, Obesity, and Extreme Obesity Associated With Psychopathology?: Results From the National Epidemiologic Survey on Alcohol and Related Conditions. J. Clin. Psychiatry 2007, 68, 998–1009. [Google Scholar] [CrossRef] [PubMed]
  72. Rodriguez, C.B.; Wei, Y.; Terry, M.B.; Wyka, K.; Athilat, S.; Albrecht, S.S.; Tehranifar, P. Associations of Nativity, Age at Migration, and Percent of Life in the U.S. with Midlife Body Mass Index and Waist Size in New York City Latinas. Int. J. Environ. Res. Public Health 2020, 17, 2436. [Google Scholar] [CrossRef] [PubMed]
  73. Slattery, M.L.; Sweeney, C.; Edwards, S.; Herrick, J.; Murtaugh, M.; Baumgartner, K.; Guiliano, A.; Byers, T. Physical Activity Patterns and Obesity in Hispanic and Non-Hispanic White Women. Med. Sci. Sport. Exerc. 2006, 38, 33–41. [Google Scholar] [CrossRef] [PubMed]
  74. Torres, J.M.; Deardorff, J.; Gunier, R.B.; Harley, K.G.; Alkon, A.; Kogut, K.; Eskenazi, B. Worry About Deportation and Cardiovascular Disease Risk Factors Among Adult Women: The Center for the Health Assessment of Mothers and Children of Salinas Study. Ann. Behav. Med. 2018, 52, 186–193. [Google Scholar] [CrossRef] [Green Version]
  75. de Heer, H.D.; Salinas, J.; Lapeyrouse, L.M.; Heyman, J.; Morera, O.F.; Balcazar, H.G. Binational Utilization and Barriers to Care among Mexican American Border Residents with Diabetes. Rev. Panam. Salud Pública 2013, 34, 147–154. [Google Scholar] [PubMed]
  76. Vega Briones, G. Problemas actuales de sobrepeso entre los migrantes mexicanos. Migr. Int. 2016, 8, 201–230. [Google Scholar]
  77. Nelson, T.; Perez, A.; Alcaraz, J.; Talavera, G.; McCarthy, J.J. Family History of Diabetes, Acculturation, and the Metabolic Syndrome among Mexican Americans: Proyecto SALSA. Metab. Syndr. Relat. Disord. 2007, 5, 262–269. [Google Scholar] [CrossRef]
  78. Vaeth, P.A.C.; Willett, D.L. Level of Acculturation and Hypertension among Dallas County Hispanics: Findings from the Dallas Heart Study. Ann. Epidemiol. 2005, 15, 373–380. [Google Scholar] [CrossRef]
  79. Chrisman, M.; Chow, W.-H.; Daniel, C.R.; Wu, X.; Zhao, H. Associations between Language Acculturation, Age of Immigration, and Obesity in the Mexican American Mano A Mano Cohort. Obes. Res. Clin. Pract. 2017, 11, 544–557. [Google Scholar] [CrossRef]
  80. López, L.; Grant, R.W.; Marceau, L.; Piccolo, R.; McKinlay, J.B.; Meigs, J.B. Association of Acculturation and Health Literacy with Prevalent Dysglycemia and Diabetes Control Among Latinos in the Boston Area Community Health (BACH) Survey. J. Immigr. Minor. Health 2016, 18, 1266–1273. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  81. Salinas, J.J.; Abdelbary, B.; Rentfro, A.; Fisher-Hoch, S.; McCormick, J. Cardiovascular Disease Risk Among the Mexican American Population in the Texas-Mexico Border Region, by Age and Length of Residence in United States. Prev. Chronic Dis. 2014, 11, 130253. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  82. Back, E.E.; Bachwani, A.S.; Strogatz, D.S.; Sherman, Z.M.V. Profile of Diabetes Mellitus among Immigrants from Guyana: Epidemiology and Implications for Community Action. Ethn. Dis. 2012, 22, 473–478. [Google Scholar] [PubMed]
  83. US Census Bureau. ACS 5-Year Estimates Public Use Microdata Sample. Available online: https://data.census.gov/mdat/#/search?ds=ACSPUMS5Y2019&cv=ANC1P(360)&rv=ucgid&wt=PWGTP&g=0400000US05,06,08,09,10,11,12,13,15,16,17,18,19,20,21,22,23,24,25,26,27,28,29,30,31,32,33,34,35,36,37,38,39,40,41,42,44,45,46,47,48,49,50,51,53,54,55,56 (accessed on 22 August 2022).
  84. Rowland, M.L. Self-Reported Weight and Height. Am. J. Clin. Nutr. 1990, 52, 1125–1133. [Google Scholar] [CrossRef] [PubMed]
  85. Stone, J.; Gurunathan, U.; Glass, K.; Munn, Z.; Tugwell, P.; Doi, S.A.R. Stratification by Quality Induced Selection Bias in a Meta-Analysis of Clinical Trials. J. Clin. Epidemiol. 2019, 107, 51–59. [Google Scholar] [CrossRef] [PubMed]
Figure 1. Flow diagram of study selection process following the PRISMA 2020 flow diagram for new systematic reviews which included searches of databases, registers and other sources. Source: model extracted from Page et al. [21].
Figure 1. Flow diagram of study selection process following the PRISMA 2020 flow diagram for new systematic reviews which included searches of databases, registers and other sources. Source: model extracted from Page et al. [21].
Ijerph 20 01307 g001
Figure 2. Arterial hypertension or high blood pressure for Latinos in the US. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 2. Arterial hypertension or high blood pressure for Latinos in the US. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g002
Figure 3. Arterial hypertension or high blood pressure for immigrant Latinos and US-born Latinos. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 3. Arterial hypertension or high blood pressure for immigrant Latinos and US-born Latinos. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g003
Figure 4. Type 2 diabetes mellitus or high blood glucose for Latinos in the US. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 4. Type 2 diabetes mellitus or high blood glucose for Latinos in the US. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g004
Figure 5. Type 2 diabetes mellitus or high blood glucose for immigrant Latinos and US-born Latinos. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 5. Type 2 diabetes mellitus or high blood glucose for immigrant Latinos and US-born Latinos. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g005
Figure 6. General obesity for Latinos in the US. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 6. General obesity for Latinos in the US. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g006
Figure 7. Abdominal obesity for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 7. Abdominal obesity for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g007
Figure 8. General obesity for immigrant Latinos and US-born Latinos. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 8. General obesity for immigrant Latinos and US-born Latinos. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g008
Figure 9. Low HDL cholesterol for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 9. Low HDL cholesterol for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g009
Figure 10. High triglycerides for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 10. High triglycerides for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g010
Figure 11. Metabolic Syndrome for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Figure 11. Metabolic Syndrome for Latinos in the USA. ES = Estimated proportion/prevalence; CI = Confidence interval; I^2 = I2 index.
Ijerph 20 01307 g011
Table 1. Exposures Assessed in Studies Reviewed.
Table 1. Exposures Assessed in Studies Reviewed.
Immigration-RelatedImmigrant-RelatedHealth-, Dietary-, and Lifestyle-RelatedCommunity-Related
generational status [14]nativity [26,35,42,54,72]health behaviors [16,34]immigrant concentration [49,68]
length of residence in USA [14,26,36,39,47,72,81]agricultural work [31,33,61]health assimilation; health literacy; nutrition transition; dietary characteristics [41,47,51,80]community factors [58,68]
migration history [34]income; sociodemographic factors [31,32,47,53,68,70]healthcare services access and utilization [56,62]
immigration [15,27,28,29,30,31,45,82]ethnicity [37,44]food insecurity [64,65]
acculturation [16,50,54,58,66,73,78,79,80]occupation [44]lifestyle; environment; lifestyle predictors; physical activity patterns [53,69,73]
age at immigration [79]age [81]hypertension; type 2 diabetes; MetS;
family history of type 2 diabetes; cardiovascular risk factors [57,60,68,75,77]
migrant status [43,44,81]social determinants of health [67]psychiatric disorders; substance use [71]
discrimination [48,52,55] worry about deportation [74]
residential mobility [42] health status [16]
MetS = Metabolic Syndrome.
Table 2. Characteristics of Latinos in the USA studies reviewed.
Table 2. Characteristics of Latinos in the USA studies reviewed.
Study IDTotal Study ParticipantsFemaleMaleAge GroupCountry of BirthComparison GroupTime in the USAStudy DesignStudy PeriodExposuresImmigrant WorkerOccupationDocumentationInsurance
Ahmed, 2009 [14]70,110070,11045–69 US-born black and white<10 y; 11–15 y; 16–25 y; >25 ycohort2002–2003generational status; length of residency in the USNo
Albrecht, 2013 [26]81493914423520–64MexicoUS-born Mexicans<10 y; >10 ycross-sectional1988–1994; 1999–2008nativity; length of residency in the USNo
Altman, 2017 [27]25,49925,499020–64MexicoMexicans in Mexico; US-born Mexicans; US-born non-Hispanics whites/blacks cross-sectional1999–2009 NHANES (US); 2006 ENSANUT (Mexico)immigrationNo
Angel, 2008 [28]1975115382220—not specified non-Hispanic whites, blacks, and Asians<10 y; >10 ycross-sectionalJune–December 2004immigrationNo Yes
Antecol, 2006 [29]490,806258,718232,08820–64 natives (Hispanics, whites, and blacks)0–4 y; 5–9 y; 10–14 y; 15 y+cross-sectional1989–1996immigrationNo
Anzman-Frasca, 2016 [30]345345020–55Brazil; Haiti; El Salvador; Colombia; Guatemala; Dominican Republic; Hondurasbetween groups<10 ycross-sectionalMarch and June 2010 (first wave); May and June 2011 (second wave)immigrationNo
Back, 2012 [82]109644165530—not specifiedGuyana; other case–control1 May 2004–30 April 2006immigrationNo
Beltrán-Sánchez, 2016 [15]15,9579022693520–50+MexicoUS-born Mexican-American; Mexican living in Mexico; non-Hispanic whites cross-sectionalENSANUT 2006; NHANES 1999–2000 and 2009–2010immigrationNo
Boggess, 2016 [31]793,188427,528365,66018–60+ cross-sectional2012agricultural work (seasonal and migratory); immigration; low incomeYesagricultural workers (seasonal or migratory) Yes
Briones, 2016 [76]31,30511,40219,903<35–65+Mexico cross-sectional2010 No Yes
Caspi, 2017 [32]80063616418–60+Puerto Rico; Haiti; otherUs-born0–5 y; 5–10 y; 10 y+cross-sectionalFebruary 2007 and June 2009low-income immigrantsNo
Castañeda, 2015 [33]282163118 migrant or seasonal status cross-sectional2002–2004migrant or seasonal statusYesfarmworkers Yes
Chakraborty, 2003 [34]390390018–65Mexico; other <5 y; 5–9 y; 10 y+cross-sectional1993migration history; health behavior changes—mediatorNo
Choi, 2012 [35]778642873499 Central and South Americaorigin<1 y; 1–4 y; 5–9 y; 10 y+cross-sectional2003nativityNo
Chrisman, 2017 [79]18,29814,048425021–94MexicoUS-born cohortStart year 2001language acculturation; age at immigrationNo
Coffman, 2012 [36]14411331 Mexico; Central and South America; other cross-sectional recent Latino immigrantsNo Yes
Cohn, 2017 [68]33171523179430–74 mon-Hispanic whites cross-sectional2010 (US Census); 2012–2013 (hospital data)CVD risk factors (individual factors); median household income and Hispanic concentration (neighborhood-level)Yes Yes
Davis, 2007 [37]189989118–40Central AmericaAfrican-American; US-born African Caribbean cross-sectional ethnicityNo Yes
Dawson, 2019 [67]1811206118–64Mexico; Central America Mean 21.6 (16.2); Median 19cross-sectional social determinants of healthYes
Del Brutto, 2013 [69]38502413143740—not specifiedDominic Republic; Puerto Rico; Cuba; othercoastal Ecuador population (Atahualpa) cross-sectional1993–2001; June–October 2012lifestyle; environmentNo
Elfassy, 2018 [38]16,15684987658 Central and South Americabetween groups<10 y; >10 ycross-sectional2008–2011 No
Gany, 2016 [39]413141218–60+Central and South America <10 y; >10 y; US-borncross-sectionalSeptember–October 2011length of residence in the USYestaxi drivers Yes
Gill, 2017 [40]104270433818–87El Salvador; Honduras; Peru; Guatemala; Boliviabetween groupsMean: 8.8 yearscross-sectional No Yes
Giuntella, 2017 [41]729,793387,502342,29125–64 US born<10 y; 10–15 y; 15–20 y; >20 ycross-sectional1989–2014health assimilationYes
Glick, 2015 [42]52537215318–60MexicoMexicans in Mexico<10 y; 10 y+ speaking Spanish; 10 y+ English or bilingual; US-borncross-sectionalMarch 2009 (US); May–June 2009 (Mexico)nativity; residential mobilityNo
Heer, 2013 [75]1002660342 MexicoMexican-Americans without diabetesDiabetes: mean 40.9 y (SD 18.6)
No diabetes: mean 33.0 y (SD 17.5)
cross-sectionalNovember 2009–May 2010diabetesNo Yes
Hubert, 2005 [16]100538052118–64Mexico; other Meancross-sectionalJuly–December 2000health status; health behaviors; acculturationYesskilled professional; semiskilled white-collar, clerical; semiskilled blue-collar; unskilled service, laborer; farmworker; homemaker; unemployed or student
Iten, 2014 [43]401207194 MexicoUS-born Mexican-Americans; documented Mexican immigrants cross-sectional2008–2009immigrant statusYes Yes
Jackson, 2014 [44]175,24428,73030,48418–65+ non-Hispanic whites and blacks<15 y; 15 y+cross-sectional2004–2011 (NHIS)immigrant status; race/ethnicity occupationYesprofessional/management; support services
Jaranilla, 2014 [45]59,79133,02526,76620–65+Central and South AmericaUS born cross-sectionalJanuary–December 2010immigrationNo Yes
Jerome-D’Emilia, 2014 [46]6666021–79Puerto Rico; Dominican Republic; Mexico; otherbetween groups cross-sectional Yes YesYes
Klabunde 2020 [47]36119117018–74Brazil Mean: 12.7 (SD 6.7)cross-sectionalDecember 2013–March 2014socio-demographic factors; dietary characteristics; length of residence in the USYes
LeBrón, 2020 [48]21313875 non-Hispanic whites and blacks cross-sectional2002–2003
2007–2008
discriminationNo
Li, 2017 [49]1563108048318–91Puerto Rico; Mexico; other cross-sectional2006–2008 (Survey)
2005–2009 (ACS)
immigrant concentration; Latino densityNo Yes
Lopez-Cevallos, 2019 [70]3382673270918–74 0–5 y; 6–9 y; >10 ycross-sectional2004–2012sociodemographic factorsYesfarmworkers
López, 2016 [80]74440533930–72Puerto Rico; Dominican Republic; other 5–10 y; 10–15 y; 15–20 y; >20 ycohortJanuary 2010–March 2012acculturation; health literacyNo Yes
López, 2019 [50]1818118763145—not specified <5 y; 5–10 y; 11–20 y; >20 ycross-sectional acculturationNo
Martínez, 2014 [51]149985120–77Mexico; Central and South America Mean: 10.24 (SD 10.12)cross-sectional2011nutrition transitionNo
McClure, 2010 [52]1328646 MexicoUS populationWomen: 9.5 (SD 6.9); Men: 13.5 (SD 9.4)cross-sectional discriminationNo
Narang, 2020 [53]983098319–76 ≤2 y; 3–9 y; 10–15 y; ≥16 ycross-sectionalDecember 2010–November 2017demographic factors; lifestyle predictorsYestaxi drivers; for-hire vehicle drivers
Nelson, 2007 [77]205 Mexico Mean 25.7 (SD 16.4)cross-sectionalApril 2004–October 2005family history of diabetesNo
Pickering, 2007 [71]43,09324,57518,51818–65+ cross-sectional2001–2002psychiatric disorders (mood, anxiety, and personality disorders); substance use (alcohol, drugs, and nicotine)No
Rodriguez, 2012 [54]160,08181,16478,917 Mexico; Central and South America; otherUS-born Hispanics; non-Hispanic white≤1–4 y; 5–9 y; 10–14 y; >15 ycross-sectional2001, 2003, 2005, and 2007acculturation; nativityNo Yes
Rodriguez, 2020 [72]787787040–65Dominican Republic; Puerto Rico; Cuba; MexicoUS-born cross-sectional2012–2018nativity; migration timingNo
Ryan, 2006 [55]666453213 African-AmericansLatino Immigrants: mean 4.47cross-sectional2002–2003discriminationYes Yes
Saint-Jean, 2005 [56]6803403400–75+Haitiwith and without insurance<5 y; 5–10 y; 11–14 y; 15 y+cross-sectional2001health services utilizationNo Yes
Salinas, 2014 [81]1936130263418–80MexicoUS born≤10 y; >10 y; US-borncohort2004–2007immigrant status; length of residence in the US; ageNo
Shelley, 2011 [57]25851592993 non-Hispanic whites and blacks cross-sectional2007–2008hypertensionNo Yes
Shi, 2015 [58]15,4718049742218–65+ White0–4 y; 5–10 y; 10 y+; US-borncross-sectional2005 and 2007acculturation; community factorsNo
Singh-Franco, 2013 [59]1148529 non-Haitians cross-sectionalJanuary 2003–May 2008intervention of a multidisciplinary teamNo
Slattery, 2006 [73]203920390<40–79 non-Hispanic whites cross-sectional language acculturation; physical activity patternsNo
Tehranifar, 2015 [60]373373040–64 with and without MetS cross-sectionalNovember 2012 and May 2014MetSNo
Torres, 2018 [74]5455450 Mexico <15 y; 16–20 y; >21 y; USA borncross-sectionalMarch 2012
August 2014
worry about deportationNo
Vaeth, 2005 [78]116362453918–65Mexico; El Salvador; Guatemala; Honduras <5 y; 5–10 y; 10 y+cross-sectionalJuly 2000–October 2002acculturationNo Yes
Villarejo, 2010 [61]654238416 Mexico; othermales and femalesMales: median 14
Females: median 9
cross-sectional1999agricultural workYesfarmworkersYes
Viruell-Fuentes, 2012 [62]804456348 cross-sectionalMay 2001–March 2003access to care; neighborhood effectsNo
Wassink, 2017 [63]37311921181024–32Mexico; Cuba; Central and South Americamigrant generation, blacks cross-sectionalPhase I (1994–1995), III (2001–2002) and IV (2008–2009). No Yes
Weigel, 2019 [64]7567840–84Mexicofood insecure; food secureMean: 19.9 ± 15cross-sectionalApril-May 2015food insecurityYes
Weigel, 2007 [65]100435718–61+Mexico ≤10 ycross-sectional10-month period in 2003food insecurityNo
Wolin, 2009 [66]388388040–77Mexico; other ≤10 y; 11–20 y; >20 ycross-sectionalNovember 2000 and June 2002 (Phase I); May 2003 and June 2004 (Phase II)acculturationYeshomemaker; other
Table 3. JBI Critical Appraisal Checklist for Analytical Cross-Sectional Studies.
Table 3. JBI Critical Appraisal Checklist for Analytical Cross-Sectional Studies.
Albrecht 2013Altman 2017Angel 2008Antecol 2006Anzman-Frasca 2016Beltrán-Sánchez 2016Boggess 2016Briones 2016Caspi 2017Castañeda 2015Chakraborty 2003Choi 2012Coffman 2012Cohn 2017Davis 2007
1. Were the criteria for inclusion in the sample clearly defined?YYYYYYYUYYYYYYY
2. Were the study subjects and the setting described in detail?YYYYYYYYYYYYYNY
3. Was the exposure measured in a valid and reliable way?YYYYYYYUYYYYYYY
4. Were objective, standard criteria used for measurement of the condition?YYYYYYYUYYYYYYY
5. Were confounding factors identified?YYYYYYNNYYYUUUN
6. Were strategies to deal with confounding factors stated?YYYYYYNNYYYUUUN
7. Were the outcomes measured in a valid and reliable way?YYYYYYYUYYYYYYY
8. Was appropriate statistical analysis used?YYYYYYYYYYYYYYY
% of “yes”100%100%100%100%100%100%75%25%100%100%100%75%75%62.5%75%
Risk of biaslowlowLowlowlowlowlowhighlowlowlowlowlowmoderatelow
Dawson 2019Del Brutto 2013Elfassy 2018Gany 2016Gill 2017Giuntella 2017Glick 2015Heer 2013Hubert 2005Iten 2014Jackson 2014Jaranilla 2014Jerome-D’Emilia 2014Klabunde 2020LeBrón 2020Li 2017
1. Were the criteria for inclusion in the sample clearly defined?YYYNYYYYYYYYYYYY
2. Were the study subjects and the setting described in detail?YYYNYYYYYYYYYYYY
3. Was the exposure measured in a valid and reliable way?YYYYYYYYYYYYUYYY
4. Were objective, standard criteria used for measurement of the condition?YYYYYNAYYYYYYUYYY
5. Were confounding factors identified?UYYYYYYYUYYYNYYY
6. Were strategies to deal with confounding factors stated?UYYYYYYYUYYYNYYY
7. Were the outcomes measured in a valid and reliable way?YYYYYYYYYYYYUYYY
8. Was appropriate statistical analysis used?YYYYYYYYYYYYYYYY
% of “yes”75%100%100%75%100%87.5%100%100%75%100%100%100%37.5%100%100%100%
Risk of biaslowlowlowlowlowlowlowlowlowlowlowlowhighlowlowlow
Lopez-Cevallos 2019López 2019Martínez 2014McClure 2010Narang 2020Nelson 2007Pickering 2007Rodriguez 2012Rodriguez 2020Ryan 2006Saint-Jean 2005Shelley 2011
1. Were the criteria for inclusion in the sample clearly defined?YYYNYYYYYYYY
2. Were the study subjects and the setting described in detail?YYYNNYYYYYYY
3. Was the exposure measured in a valid and reliable way?YYYYYYYYYYYU
4. Were objective, standard criteria used for measurement of the condition?YYYYYYYYYYYY
5. Were confounding factors identified?YYYYYYYYYYUU
6. Were strategies to deal with confounding factors stated?YYYYYYYYYYUU
7. Were the outcomes measured in a valid and reliable way?YYYYYYYYYYYY
8. Was appropriate statistical analysis used?YYNYYYYYYYYY
% of “yes”100%100%87.5%75%87.5%100%100%100%100%100%75%62.5%
Risk of biaslowlowlowlowlowlowlowlowlowlowlowmoderate
Shi 2015Singh-Franco 2013Slattery 2006Tehranifar 2015Torres 2018Villarejo 2010Vaeth 2005Viruell-Fuentes 2012Wassink 2017Weigel 2019Weigel 2007Wolin 2009
1. Were the criteria for inclusion in the sample clearly defined?YYYYYYYYYYYY
2. Were the study subjects and the setting described in detail?YYYYYYYYYYYY
3. Was the exposure measured in a valid and reliable way?YYYYYYYUYYYY
4. Were objective, standard criteria used for measurement of the condition?YYYYYYYYYYYY
5. Were confounding factors identified?YYYYYYYUYYYY
6. Were strategies to deal with confounding factors stated?YYYYYYYUYYYY
7. Were the outcomes measured in a valid and reliable way?YYYYYYYUYYYY
8. Was appropriate statistical analysis used?YYYYYYYYYYYY
% of “yes”100%100%100%100%100%100%100%50%100%100%100%100%
Risk of biaslowlowlowlowlowLowlowmoderatelowlowlowlow
Y = yes, N = no, U = unclear, NA = not applicable.
Table 4. JBI Critical Appraisal Checklist for Cohort Studies.
Table 4. JBI Critical Appraisal Checklist for Cohort Studies.
Ahmed 2009Chrisman 2017López 2016Salinas 2014
1. Were the two groups similar and recruited from the same population?YYYY
2. Were the exposures measured similarly to assign people to both exposed and unexposed groups?YNYY
3. Was the exposure measured in a valid and reliable way?YYYY
4. Were confounding factors identified?YYYU
5. Were strategies to deal with confounding factors stated?YYYU
6. Were the groups/participants free of the outcome at the start of the study (or at the moment of exposure)?UUNU
7. Were the outcomes measured in a valid and reliable way?YYYY
8. Was the follow-up time reported and sufficient to be long enough for outcomes to occur?NYYY
9. Was follow-up complete, and if not, were the reasons to loss to follow-up described and explored?YNNN
10. Were strategies to address incomplete follow-up utilized?NANNN
11. Was appropriate statistical analysis used?YYYY
% of “yes”73%64%73%54.5%
Risk of biaslowmoderatelowmoderate
Y = yes, N = no, U = unclear, NA = not applicable.
Table 5. JBI Critical Appraisal Checklist for Case–Control Studies.
Table 5. JBI Critical Appraisal Checklist for Case–Control Studies.
Back 2012
1. Were the groups comparable other than the presence of disease in cases or the absence of disease in controls?Y
2. Were cases and controls matched appropriately?N
3. Were the same criteria used for identification of cases and controls?Y
4. Was exposure measured in a standard, valid, and reliable way?Y
5. Was exposure measured in the same way for cases and controls?Y
6. Were confounding factors identified?Y
7. Were strategies to deal with confounding factors stated?Y
8. Were outcomes assessed in a standard, valid, and reliable way for cases and controls?Y
9. Was the exposure period of interest long enough to be meaningful?Y
10. Was appropriate statistical analysis used?Y
% of “yes”90%
Risk of biaslow
Y = yes, N = no.
Table 6. Outcomes Assessed for the Latinos in the USA Studies.
Table 6. Outcomes Assessed for the Latinos in the USA Studies.
Study IDPrimary OutcomesSecondary Outcomes
Ahmed, 2009 [14]HTN; DM; obesity
Albrecht, 2013 [26]Obesity; AO
Altman, 2017 [27]Obesity
Angel, 2008 [28]HTN
Antecol, 2006 [29]Obesity
Anzman-Frasca, 2016 [30]Obesity
Back, 2012 [82]HTN; DM
Beltrán-Sánchez, 2016 [15]HTN; DM; obesity; AO; low HDL; high TGL; MetS
Boggess, 2016 [31]HTN; DM; overweight or obesity
Briones, 2016 [76]Obesity
Caspi, 2017 [32]Obesity
Castañeda, 2015 [33]HTN; DM; obesity
Chakraborty, 2003 [34]DM; obesity; high TGLsleep duration
Choi, 2012 [35]Obesity
Chrisman, 2017 [79]Obesity
Coffman, 2012 [36]DM
Cohn, 2017 [68]HTN; DM
Davis, 2007 [37]DM; obesity; low HDL
Dawson, 2019 [67]HTN; DM; obesity
Del Brutto, 2013 [69]HTN; DM
Elfassy, 2018 [38]HTN; DM
Gany, 2016 [39]HTN; DM; AO
Gill, 2017 [40]HTN; DM; obesity; low HDL; high TGL; MetS
Giuntella, 2017 [41]Obesity
Glick, 2015 [42]Obesity
Heer, 2013 [75]DM
Hubert, 2005 [16]HTN; DM; obesity; MetS (2 or 3 factors)
Iten, 2014 [43]DM; obesity
Jackson, 2014 [44]HTN; DM2; obesitysleep duration
Jaranilla, 2014 [45]Low HDL; high TGL
Jerome-D’Emilia, 2014 [46]HTN; DM2; obesity
Klabunde, 2020 [47]Obesity
LeBrón, 2020 [48]HTN
Li, 2017 [49]HTN
Lopez-Cevallos, 2019 [70]HTN; DM2; obesity
López, 2016 [80]DM2
López, 2019 [50]HTN; DM2; obesity
Martínez, 2014 [51]Obesity
McClure, 2010 [52]Obesity; DM2
Narang, 2020 [53]HTN
Nelson, 2007 [77]HTN; DM2; AO; low HDL, high TGL; MetS
Pickering, 2007 [71]Obesity
Rodriguez, 2012 [54]HTN; DM2; obesity
Rodriguez, 2020 [72]Obesity; AO
Ryan, 2006 [55]HTN
Saint-Jean, 2005 [56]HTN; DM2
Salinas, 2014 [81]HTN
Shelley, 2011 [57]HTN; DM2
Shi, 2015 [58]HTN; obesity
Singh-Franco, 2013 [59]HTN; DM2
Slattery, 2006 [73]Obesity
Tehranifar, 2015 [60]HTN; DM2; obesity; AO; low HDL; high TGL; MetS
Torres, 2018 [74]HTN; obesity
Vaeth, 2005 [78]HTN; DM2; obesity
Villarejo, 2010 [61]HTN; DM2; obesity
Viruell-Fuentes, 2012 [62]HTN
Wassink, 2017 [63]HTN; DM2; obesity
Weigel, 2019 [64]HTN; DM2; obesity; AO; MetS
Weigel, 2007 [65]HTN; DM2; obesity; AO; low HDL; high TGL; MetS
Wolin, 2009 [66]Obesity
HTN = Hypertension; DM2 = Type 2 diabetes mellitus; AO = Abdominal obesity; HDL = High Density Lipoprotein; TGL = Triglycerides; MetS = Metabolic Syndrome.
Table 7. Summary of Findings.
Table 7. Summary of Findings.
Systematic Review of the Metabolic Syndrome and Its Components in USA Immigrants
Population: Latin American Immigrants ≥18 Years Old
Settings: USA
Exposure: Immigration
Comparator: US-Born Population
OutcomesPrevalence Estimate (%)
(95% CI)
No. of Latino Participants
(Studies)
GRADE Evidence LevelComments
Hypertension28 (23–33)84.047⊕⊕⊝⊝ a,b,c,g,h
low
The available evidence is sufficient to determine the prevalence, but confidence in the estimate is limited. As more information becomes available, the observed prevalence could change, and this change may be large enough to alter the conclusion.
Type 2 Diabetes Mellitus17 (14–20)83.423⊕⊕⊝⊝ a,b,c,g,h
low
The available evidence is sufficient to determine the prevalence, but confidence in the estimate is limited. As more information becomes available, the observed prevalence could change, and this change may be large enough to alter the conclusion.
Obesity (BMI > 30 kg/m2)37 (33–40)237.035⊕⊕⊝⊝ a,b,c,g,h
low
The available evidence is sufficient to determine the prevalence, but confidence in the estimate is limited. As more information becomes available, the observed prevalence could change, and this change may be large enough to alter the conclusion.
Abdominal Obesity54 (48–59)20.073⊕⊕⊝⊝ a,b,c,g,h
low
The available evidence is sufficient to determine the prevalence, but confidence in the estimate is limited. As more information becomes available, the observed prevalence could change, and this change may be large enough to alter the conclusion.
High Triglycerides- x4.867⊕⊝⊝⊝ a,b,d,f,h
very low
The available evidence is insufficient to determine a reliable prevalence, and confidence in the estimate is limited. More information may allow for a more accurate estimation.
Low HDL-c- x4.605⊕⊝⊝⊝ a,b,d,f,h
very low
The available evidence is insufficient to determine a reliable prevalence, and confidence in the estimate is limited. More information may allow for a more accurate estimation.
MetS- x2.604⊕⊝⊝⊝ a,d,e,f,h
very low
The available evidence is insufficient to determine a reliable prevalence, and confidence in the estimate is limited. More information may allow for a more accurate estimation.
CI: confidence interval
GRADE quality of evidence ratings
High quality: We are very confident that the effect in the study reflects the actual effect.
Moderate quality: We are quite confident that the effect in the study is close to the true effect, but it is also possible that it is substantially different.
Low quality: The true effect may differ significantly from the estimate.
Very low quality: The true effect is likely to be substantially different from the estimated effect.
x Because we are very uncertain regarding the effect estimate, we do not present it in Table 7. a Downgraded by one level (−1) for serious concerns with risk of bias. b Downgraded by one level (−1) for serious concerns with inconsistency. c Downgraded by one level (−1) for serious concerns with imprecision. d Downgraded by two levels (−2) for very serious concerns with imprecision. e Downgraded by two levels (−2) for very serious concerns with inconsistency. f Downgraded by one level (−1) for serious concerns with publication bias. g The observed surrogate endpoints are strongly associated with the outcome, so we did not reduce the evidence. h Most included studies were cross-sectional, which may lead to further reduction in the quality of the evidence.
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Paixão, T.M.; Teixeira, L.R.; Andrade, C.A.F.d.; Sepulvida, D.; Martinez-Silveira, M.; Nunes, C.; Siqueira, C.E.G. Systematic Review and Meta-Analysis of Metabolic Syndrome and Its Components in Latino Immigrants to the USA. Int. J. Environ. Res. Public Health 2023, 20, 1307. https://doi.org/10.3390/ijerph20021307

AMA Style

Paixão TM, Teixeira LR, Andrade CAFd, Sepulvida D, Martinez-Silveira M, Nunes C, Siqueira CEG. Systematic Review and Meta-Analysis of Metabolic Syndrome and Its Components in Latino Immigrants to the USA. International Journal of Environmental Research and Public Health. 2023; 20(2):1307. https://doi.org/10.3390/ijerph20021307

Chicago/Turabian Style

Paixão, Talita Monsores, Liliane Reis Teixeira, Carlos Augusto Ferreira de Andrade, Debora Sepulvida, Martha Martinez-Silveira, Camila Nunes, and Carlos Eduardo Gomes Siqueira. 2023. "Systematic Review and Meta-Analysis of Metabolic Syndrome and Its Components in Latino Immigrants to the USA" International Journal of Environmental Research and Public Health 20, no. 2: 1307. https://doi.org/10.3390/ijerph20021307

APA Style

Paixão, T. M., Teixeira, L. R., Andrade, C. A. F. d., Sepulvida, D., Martinez-Silveira, M., Nunes, C., & Siqueira, C. E. G. (2023). Systematic Review and Meta-Analysis of Metabolic Syndrome and Its Components in Latino Immigrants to the USA. International Journal of Environmental Research and Public Health, 20(2), 1307. https://doi.org/10.3390/ijerph20021307

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop