Systematic Review and Meta-Analysis of Metabolic Syndrome and Its Components in Latino Immigrants to the USA
Abstract
:1. Introduction
2. Materials and Methods
2.1. Protocol
- 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).
2.2. Definition of Disease and Disease Codes
2.3. Search Strategy
2.4. Study Selection
- 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.
2.5. Data Extraction
- 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
- ≥70% “yes” answers: low risk of bias;
- 50–69% “yes” answers: moderate risk of bias;
- <50% “yes” answers: high risk of bias.
2.7. Analysis and Presentation of Results
3. Results
3.1. Study Selection
3.2. Study Characteristics
3.3. Risk of Bias
3.4. Findings
3.4.1. Outcomes for Latinos in the USA
Arterial Hypertension or High Blood Pressure for Latinos in the USA
Type 2 Diabetes Mellitus or High Blood Glucose for Latinos in the USA
General Obesity and Abdominal Obesity for Latinos in the USA
HDL Cholesterol and Triglycerides for Latinos in the USA
Metabolic Syndrome for Latinos in the USA
3.4.2. Further Sensitivity Analyses
3.4.3. Quality of Evidence
4. Discussion
4.1. Summary of Evidence
4.2. Comparison with Previous Systematic Reviews and Meta-Analyses
4.3. Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Immigration-Related | Immigrant-Related | Health-, Dietary-, and Lifestyle-Related | Community-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] |
Study ID | Total Study Participants | Female | Male | Age Group | Country of Birth | Comparison Group | Time in the USA | Study Design | Study Period | Exposures | Immigrant Worker | Occupation | Documentation | Insurance |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Ahmed, 2009 [14] | 70,110 | 0 | 70,110 | 45–69 | US-born black and white | <10 y; 11–15 y; 16–25 y; >25 y | cohort | 2002–2003 | generational status; length of residency in the US | No | ||||
Albrecht, 2013 [26] | 8149 | 3914 | 4235 | 20–64 | Mexico | US-born Mexicans | <10 y; >10 y | cross-sectional | 1988–1994; 1999–2008 | nativity; length of residency in the US | No | |||
Altman, 2017 [27] | 25,499 | 25,499 | 0 | 20–64 | Mexico | Mexicans in Mexico; US-born Mexicans; US-born non-Hispanics whites/blacks | cross-sectional | 1999–2009 NHANES (US); 2006 ENSANUT (Mexico) | immigration | No | ||||
Angel, 2008 [28] | 1975 | 1153 | 822 | 20—not specified | non-Hispanic whites, blacks, and Asians | <10 y; >10 y | cross-sectional | June–December 2004 | immigration | No | Yes | |||
Antecol, 2006 [29] | 490,806 | 258,718 | 232,088 | 20–64 | natives (Hispanics, whites, and blacks) | 0–4 y; 5–9 y; 10–14 y; 15 y+ | cross-sectional | 1989–1996 | immigration | No | ||||
Anzman-Frasca, 2016 [30] | 345 | 345 | 0 | 20–55 | Brazil; Haiti; El Salvador; Colombia; Guatemala; Dominican Republic; Honduras | between groups | <10 y | cross-sectional | March and June 2010 (first wave); May and June 2011 (second wave) | immigration | No | |||
Back, 2012 [82] | 1096 | 441 | 655 | 30—not specified | Guyana; other | case–control | 1 May 2004–30 April 2006 | immigration | No | |||||
Beltrán-Sánchez, 2016 [15] | 15,957 | 9022 | 6935 | 20–50+ | Mexico | US-born Mexican-American; Mexican living in Mexico; non-Hispanic whites | cross-sectional | ENSANUT 2006; NHANES 1999–2000 and 2009–2010 | immigration | No | ||||
Boggess, 2016 [31] | 793,188 | 427,528 | 365,660 | 18–60+ | cross-sectional | 2012 | agricultural work (seasonal and migratory); immigration; low income | Yes | agricultural workers (seasonal or migratory) | Yes | ||||
Briones, 2016 [76] | 31,305 | 11,402 | 19,903 | <35–65+ | Mexico | cross-sectional | 2010 | No | Yes | |||||
Caspi, 2017 [32] | 800 | 636 | 164 | 18–60+ | Puerto Rico; Haiti; other | Us-born | 0–5 y; 5–10 y; 10 y+ | cross-sectional | February 2007 and June 2009 | low-income immigrants | No | |||
Castañeda, 2015 [33] | 282 | 163 | 118 | migrant or seasonal status | cross-sectional | 2002–2004 | migrant or seasonal status | Yes | farmworkers | Yes | ||||
Chakraborty, 2003 [34] | 390 | 390 | 0 | 18–65 | Mexico; other | <5 y; 5–9 y; 10 y+ | cross-sectional | 1993 | migration history; health behavior changes—mediator | No | ||||
Choi, 2012 [35] | 7786 | 4287 | 3499 | Central and South America | origin | <1 y; 1–4 y; 5–9 y; 10 y+ | cross-sectional | 2003 | nativity | No | ||||
Chrisman, 2017 [79] | 18,298 | 14,048 | 4250 | 21–94 | Mexico | US-born | cohort | Start year 2001 | language acculturation; age at immigration | No | ||||
Coffman, 2012 [36] | 144 | 113 | 31 | Mexico; Central and South America; other | cross-sectional | recent Latino immigrants | No | Yes | ||||||
Cohn, 2017 [68] | 3317 | 1523 | 1794 | 30–74 | mon-Hispanic whites | cross-sectional | 2010 (US Census); 2012–2013 (hospital data) | CVD risk factors (individual factors); median household income and Hispanic concentration (neighborhood-level) | Yes | Yes | ||||
Davis, 2007 [37] | 189 | 98 | 91 | 18–40 | Central America | African-American; US-born African Caribbean | cross-sectional | ethnicity | No | Yes | ||||
Dawson, 2019 [67] | 181 | 120 | 61 | 18–64 | Mexico; Central America | Mean 21.6 (16.2); Median 19 | cross-sectional | social determinants of health | Yes | |||||
Del Brutto, 2013 [69] | 3850 | 2413 | 1437 | 40—not specified | Dominic Republic; Puerto Rico; Cuba; other | coastal Ecuador population (Atahualpa) | cross-sectional | 1993–2001; June–October 2012 | lifestyle; environment | No | ||||
Elfassy, 2018 [38] | 16,156 | 8498 | 7658 | Central and South America | between groups | <10 y; >10 y | cross-sectional | 2008–2011 | No | |||||
Gany, 2016 [39] | 413 | 1 | 412 | 18–60+ | Central and South America | <10 y; >10 y; US-born | cross-sectional | September–October 2011 | length of residence in the US | Yes | taxi drivers | Yes | ||
Gill, 2017 [40] | 1042 | 704 | 338 | 18–87 | El Salvador; Honduras; Peru; Guatemala; Bolivia | between groups | Mean: 8.8 years | cross-sectional | No | Yes | ||||
Giuntella, 2017 [41] | 729,793 | 387,502 | 342,291 | 25–64 | US born | <10 y; 10–15 y; 15–20 y; >20 y | cross-sectional | 1989–2014 | health assimilation | Yes | ||||
Glick, 2015 [42] | 525 | 372 | 153 | 18–60 | Mexico | Mexicans in Mexico | <10 y; 10 y+ speaking Spanish; 10 y+ English or bilingual; US-born | cross-sectional | March 2009 (US); May–June 2009 (Mexico) | nativity; residential mobility | No | |||
Heer, 2013 [75] | 1002 | 660 | 342 | Mexico | Mexican-Americans without diabetes | Diabetes: mean 40.9 y (SD 18.6) No diabetes: mean 33.0 y (SD 17.5) | cross-sectional | November 2009–May 2010 | diabetes | No | Yes | |||
Hubert, 2005 [16] | 1005 | 380 | 521 | 18–64 | Mexico; other | Mean | cross-sectional | July–December 2000 | health status; health behaviors; acculturation | Yes | skilled professional; semiskilled white-collar, clerical; semiskilled blue-collar; unskilled service, laborer; farmworker; homemaker; unemployed or student | |||
Iten, 2014 [43] | 401 | 207 | 194 | Mexico | US-born Mexican-Americans; documented Mexican immigrants | cross-sectional | 2008–2009 | immigrant status | Yes | Yes | ||||
Jackson, 2014 [44] | 175,244 | 28,730 | 30,484 | 18–65+ | non-Hispanic whites and blacks | <15 y; 15 y+ | cross-sectional | 2004–2011 (NHIS) | immigrant status; race/ethnicity occupation | Yes | professional/management; support services | |||
Jaranilla, 2014 [45] | 59,791 | 33,025 | 26,766 | 20–65+ | Central and South America | US born | cross-sectional | January–December 2010 | immigration | No | Yes | |||
Jerome-D’Emilia, 2014 [46] | 66 | 66 | 0 | 21–79 | Puerto Rico; Dominican Republic; Mexico; other | between groups | cross-sectional | Yes | Yes | Yes | ||||
Klabunde 2020 [47] | 361 | 191 | 170 | 18–74 | Brazil | Mean: 12.7 (SD 6.7) | cross-sectional | December 2013–March 2014 | socio-demographic factors; dietary characteristics; length of residence in the US | Yes | ||||
LeBrón, 2020 [48] | 213 | 138 | 75 | non-Hispanic whites and blacks | cross-sectional | 2002–2003 2007–2008 | discrimination | No | ||||||
Li, 2017 [49] | 1563 | 1080 | 483 | 18–91 | Puerto Rico; Mexico; other | cross-sectional | 2006–2008 (Survey) 2005–2009 (ACS) | immigrant concentration; Latino density | No | Yes | ||||
Lopez-Cevallos, 2019 [70] | 3382 | 673 | 2709 | 18–74 | 0–5 y; 6–9 y; >10 y | cross-sectional | 2004–2012 | sociodemographic factors | Yes | farmworkers | ||||
López, 2016 [80] | 744 | 405 | 339 | 30–72 | Puerto Rico; Dominican Republic; other | 5–10 y; 10–15 y; 15–20 y; >20 y | cohort | January 2010–March 2012 | acculturation; health literacy | No | Yes | |||
López, 2019 [50] | 1818 | 1187 | 631 | 45—not specified | <5 y; 5–10 y; 11–20 y; >20 y | cross-sectional | acculturation | No | ||||||
Martínez, 2014 [51] | 149 | 98 | 51 | 20–77 | Mexico; Central and South America | Mean: 10.24 (SD 10.12) | cross-sectional | 2011 | nutrition transition | No | ||||
McClure, 2010 [52] | 132 | 86 | 46 | Mexico | US population | Women: 9.5 (SD 6.9); Men: 13.5 (SD 9.4) | cross-sectional | discrimination | No | |||||
Narang, 2020 [53] | 983 | 0 | 983 | 19–76 | ≤2 y; 3–9 y; 10–15 y; ≥16 y | cross-sectional | December 2010–November 2017 | demographic factors; lifestyle predictors | Yes | taxi drivers; for-hire vehicle drivers | ||||
Nelson, 2007 [77] | 205 | Mexico | Mean 25.7 (SD 16.4) | cross-sectional | April 2004–October 2005 | family history of diabetes | No | |||||||
Pickering, 2007 [71] | 43,093 | 24,575 | 18,518 | 18–65+ | cross-sectional | 2001–2002 | psychiatric disorders (mood, anxiety, and personality disorders); substance use (alcohol, drugs, and nicotine) | No | ||||||
Rodriguez, 2012 [54] | 160,081 | 81,164 | 78,917 | Mexico; Central and South America; other | US-born Hispanics; non-Hispanic white | ≤1–4 y; 5–9 y; 10–14 y; >15 y | cross-sectional | 2001, 2003, 2005, and 2007 | acculturation; nativity | No | Yes | |||
Rodriguez, 2020 [72] | 787 | 787 | 0 | 40–65 | Dominican Republic; Puerto Rico; Cuba; Mexico | US-born | cross-sectional | 2012–2018 | nativity; migration timing | No | ||||
Ryan, 2006 [55] | 666 | 453 | 213 | African-Americans | Latino Immigrants: mean 4.47 | cross-sectional | 2002–2003 | discrimination | Yes | Yes | ||||
Saint-Jean, 2005 [56] | 680 | 340 | 340 | 0–75+ | Haiti | with and without insurance | <5 y; 5–10 y; 11–14 y; 15 y+ | cross-sectional | 2001 | health services utilization | No | Yes | ||
Salinas, 2014 [81] | 1936 | 1302 | 634 | 18–80 | Mexico | US born | ≤10 y; >10 y; US-born | cohort | 2004–2007 | immigrant status; length of residence in the US; age | No | |||
Shelley, 2011 [57] | 2585 | 1592 | 993 | non-Hispanic whites and blacks | cross-sectional | 2007–2008 | hypertension | No | Yes | |||||
Shi, 2015 [58] | 15,471 | 8049 | 7422 | 18–65+ | White | 0–4 y; 5–10 y; 10 y+; US-born | cross-sectional | 2005 and 2007 | acculturation; community factors | No | ||||
Singh-Franco, 2013 [59] | 114 | 85 | 29 | non-Haitians | cross-sectional | January 2003–May 2008 | intervention of a multidisciplinary team | No | ||||||
Slattery, 2006 [73] | 2039 | 2039 | 0 | <40–79 | non-Hispanic whites | cross-sectional | language acculturation; physical activity patterns | No | ||||||
Tehranifar, 2015 [60] | 373 | 373 | 0 | 40–64 | with and without MetS | cross-sectional | November 2012 and May 2014 | MetS | No | |||||
Torres, 2018 [74] | 545 | 545 | 0 | Mexico | <15 y; 16–20 y; >21 y; USA born | cross-sectional | March 2012 August 2014 | worry about deportation | No | |||||
Vaeth, 2005 [78] | 1163 | 624 | 539 | 18–65 | Mexico; El Salvador; Guatemala; Honduras | <5 y; 5–10 y; 10 y+ | cross-sectional | July 2000–October 2002 | acculturation | No | Yes | |||
Villarejo, 2010 [61] | 654 | 238 | 416 | Mexico; other | males and females | Males: median 14 Females: median 9 | cross-sectional | 1999 | agricultural work | Yes | farmworkers | Yes | ||
Viruell-Fuentes, 2012 [62] | 804 | 456 | 348 | cross-sectional | May 2001–March 2003 | access to care; neighborhood effects | No | |||||||
Wassink, 2017 [63] | 3731 | 1921 | 1810 | 24–32 | Mexico; Cuba; Central and South America | migrant generation, blacks | cross-sectional | Phase I (1994–1995), III (2001–2002) and IV (2008–2009). | No | Yes | ||||
Weigel, 2019 [64] | 75 | 67 | 8 | 40–84 | Mexico | food insecure; food secure | Mean: 19.9 ± 15 | cross-sectional | April-May 2015 | food insecurity | Yes | |||
Weigel, 2007 [65] | 100 | 43 | 57 | 18–61+ | Mexico | ≤10 y | cross-sectional | 10-month period in 2003 | food insecurity | No | ||||
Wolin, 2009 [66] | 388 | 388 | 0 | 40–77 | Mexico; other | ≤10 y; 11–20 y; >20 y | cross-sectional | November 2000 and June 2002 (Phase I); May 2003 and June 2004 (Phase II) | acculturation | Yes | homemaker; other |
Albrecht 2013 | Altman 2017 | Angel 2008 | Antecol 2006 | Anzman-Frasca 2016 | Beltrán-Sánchez 2016 | Boggess 2016 | Briones 2016 | Caspi 2017 | Castañeda 2015 | Chakraborty 2003 | Choi 2012 | Coffman 2012 | Cohn 2017 | Davis 2007 | ||
1. Were the criteria for inclusion in the sample clearly defined? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | Y | Y | Y | |
2. Were the study subjects and the setting described in detail? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | N | Y | |
3. Was the exposure measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | Y | Y | Y | |
4. Were objective, standard criteria used for measurement of the condition? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | Y | Y | Y | |
5. Were confounding factors identified? | Y | Y | Y | Y | Y | Y | N | N | Y | Y | Y | U | U | U | N | |
6. Were strategies to deal with confounding factors stated? | Y | Y | Y | Y | Y | Y | N | N | Y | Y | Y | U | U | U | N | |
7. Were the outcomes measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | Y | Y | Y | |
8. Was appropriate statistical analysis used? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | |
% of “yes” | 100% | 100% | 100% | 100% | 100% | 100% | 75% | 25% | 100% | 100% | 100% | 75% | 75% | 62.5% | 75% | |
Risk of bias | low | low | Low | low | low | low | low | high | low | low | low | low | low | moderate | low | |
Dawson 2019 | Del Brutto 2013 | Elfassy 2018 | Gany 2016 | Gill 2017 | Giuntella 2017 | Glick 2015 | Heer 2013 | Hubert 2005 | Iten 2014 | Jackson 2014 | Jaranilla 2014 | Jerome-D’Emilia 2014 | Klabunde 2020 | LeBrón 2020 | Li 2017 | |
1. Were the criteria for inclusion in the sample clearly defined? | Y | Y | Y | N | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
2. Were the study subjects and the setting described in detail? | Y | Y | Y | N | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
3. Was the exposure measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y |
4. Were objective, standard criteria used for measurement of the condition? | Y | Y | Y | Y | Y | NA | Y | Y | Y | Y | Y | Y | U | Y | Y | Y |
5. Were confounding factors identified? | U | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | N | Y | Y | Y |
6. Were strategies to deal with confounding factors stated? | U | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | N | Y | Y | Y |
7. Were the outcomes measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y |
8. Was appropriate statistical analysis used? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y |
% of “yes” | 75% | 100% | 100% | 75% | 100% | 87.5% | 100% | 100% | 75% | 100% | 100% | 100% | 37.5% | 100% | 100% | 100% |
Risk of bias | low | low | low | low | low | low | low | low | low | low | low | low | high | low | low | low |
Lopez-Cevallos 2019 | López 2019 | Martínez 2014 | McClure 2010 | Narang 2020 | Nelson 2007 | Pickering 2007 | Rodriguez 2012 | Rodriguez 2020 | Ryan 2006 | Saint-Jean 2005 | Shelley 2011 | |||||
1. Were the criteria for inclusion in the sample clearly defined? | Y | Y | Y | N | Y | Y | Y | Y | Y | Y | Y | Y | ||||
2. Were the study subjects and the setting described in detail? | Y | Y | Y | N | N | Y | Y | Y | Y | Y | Y | Y | ||||
3. Was the exposure measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | U | ||||
4. Were objective, standard criteria used for measurement of the condition? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | ||||
5. Were confounding factors identified? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | U | U | ||||
6. Were strategies to deal with confounding factors stated? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | U | U | ||||
7. Were the outcomes measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | ||||
8. Was appropriate statistical analysis used? | Y | Y | N | Y | Y | Y | Y | Y | Y | Y | Y | Y | ||||
% of “yes” | 100% | 100% | 87.5% | 75% | 87.5% | 100% | 100% | 100% | 100% | 100% | 75% | 62.5% | ||||
Risk of bias | low | low | low | low | low | low | low | low | low | low | low | moderate | ||||
Shi 2015 | Singh-Franco 2013 | Slattery 2006 | Tehranifar 2015 | Torres 2018 | Villarejo 2010 | Vaeth 2005 | Viruell-Fuentes 2012 | Wassink 2017 | Weigel 2019 | Weigel 2007 | Wolin 2009 | |||||
1. Were the criteria for inclusion in the sample clearly defined? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | ||||
2. Were the study subjects and the setting described in detail? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | ||||
3. Was the exposure measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | ||||
4. Were objective, standard criteria used for measurement of the condition? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | ||||
5. Were confounding factors identified? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | ||||
6. Were strategies to deal with confounding factors stated? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | ||||
7. Were the outcomes measured in a valid and reliable way? | Y | Y | Y | Y | Y | Y | Y | U | Y | Y | Y | Y | ||||
8. Was appropriate statistical analysis used? | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | Y | ||||
% of “yes” | 100% | 100% | 100% | 100% | 100% | 100% | 100% | 50% | 100% | 100% | 100% | 100% | ||||
Risk of bias | low | low | low | low | low | Low | low | moderate | low | low | low | low |
Ahmed 2009 | Chrisman 2017 | López 2016 | Salinas 2014 | |
---|---|---|---|---|
1. Were the two groups similar and recruited from the same population? | Y | Y | Y | Y |
2. Were the exposures measured similarly to assign people to both exposed and unexposed groups? | Y | N | Y | Y |
3. Was the exposure measured in a valid and reliable way? | Y | Y | Y | Y |
4. Were confounding factors identified? | Y | Y | Y | U |
5. Were strategies to deal with confounding factors stated? | Y | Y | Y | U |
6. Were the groups/participants free of the outcome at the start of the study (or at the moment of exposure)? | U | U | N | U |
7. Were the outcomes measured in a valid and reliable way? | Y | Y | Y | Y |
8. Was the follow-up time reported and sufficient to be long enough for outcomes to occur? | N | Y | Y | Y |
9. Was follow-up complete, and if not, were the reasons to loss to follow-up described and explored? | Y | N | N | N |
10. Were strategies to address incomplete follow-up utilized? | NA | N | N | N |
11. Was appropriate statistical analysis used? | Y | Y | Y | Y |
% of “yes” | 73% | 64% | 73% | 54.5% |
Risk of bias | low | moderate | low | moderate |
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 bias | low |
Study ID | Primary Outcomes | Secondary 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 TGL | sleep 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; obesity | sleep 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 |
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 | ||||
Outcomes | Prevalence Estimate (%) (95% CI) | No. of Latino Participants (Studies) | GRADE Evidence Level | Comments |
Hypertension | 28 (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 Mellitus | 17 (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 Obesity | 54 (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 | - x | 4.867 | ⊕⊝⊝⊝ 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 | - x | 4.605 | ⊕⊝⊝⊝ 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 | - x | 2.604 | ⊕⊝⊝⊝ 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. |
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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
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 StylePaixão, 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 StylePaixão, 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