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Article

Mutual Associations of Healthy Behaviours and Socioeconomic Status with Respiratory Diseases Mortality: A Large Prospective Cohort Study

1
Department of Epidemiology and Biostatistics, School of Public Health, Peking University, No.38, Xueyuan Road, Haidian District, Beijing 100191, China
2
Center for Primary Care and Outcomes Research, School of Medicine, Center for Health Policy, Freeman Spogli Institute for International Studies, Stanford University, 450 Jane Stanford Way, Stanford, CA 94305-2004, USA
3
Institute for Global Health and Development, Peking University, No.5, Yiheyuan Road, Haidian District, Beijing 100871, China
4
Global Center for Infectious Disease and Policy Research & Global Health and Infectious Diseases Group, Peking University, No.38, Xueyuan Road, Haidian District, Beijing 100191, China
5
Key Laboratory of Reproductive Health, National Health and Family Planning Commission of the People’s Republic of China, No.38, Xueyuan Road, Haidian District, Beijing 100191, China
*
Author to whom correspondence should be addressed.
Nutrients 2023, 15(8), 1872; https://doi.org/10.3390/nu15081872
Submission received: 9 February 2023 / Revised: 6 April 2023 / Accepted: 11 April 2023 / Published: 13 April 2023
(This article belongs to the Section Nutritional Epidemiology)

Abstract

:
Little cohort evidence is available on the effect of healthy behaviours and socioeconomic status (SES) on respiratory disease mortality. We included 372,845 participants from a UK biobank (2006–2021). SES was derived by latent class analysis. A healthy behaviours index was constructed. Participants were categorized into nine groups on the basis of combinations of them. The Cox proportional hazards model was used. There were 1447 deaths from respiratory diseases during 12.47 median follow-up years. The hazard ratios (HRs, 95% CIs) for the low SES (vs. high SES) and the four or five healthy behaviours (vs. no or one healthy behaviour) were 4.48 (3.45, 5.82) and 0.44 (0.36, 0.55), respectively. Participants with both low SES and no or one healthy behaviour had a higher risk of respiratory disease mortality (aHR = 8.32; 95% CI: 4.23, 16.35) compared with those in both high SES and four or five healthy behaviours groups. The joint associations were stronger in men than in women, and in younger than older adults. Low SES and less healthy behaviours were both associated with an increased risk of respiratory disease mortality, which augmented when both presented together, especially for young man.

1. Introduction

Across health systems, respiratory diseases have consistently brought a huge health burden [1]. Chronic respiratory diseases (CRD) became the third leading cause of death, behind cardiovascular diseases and neoplasms, in 2017 [2]. The World Health Organization (WHO) reported that chronic obstructive pulmonary disease (COPD) caused over three million deaths each year, accounting for nearly six percent of all deaths worldwide [3]. The United Kingdom (UK) had dramatic and high respiratory disease mortality from 1985 to 2015, especially infectious, interstitial, obstructive, and respiratory disease [4]. Therefore, preventing respiratory diseases, slowing their progression, and reducing the risk of death is vital in global health management.
Although socioeconomic progress and rising standards of living were witnessed in many countries in past decades, there was still an increasing rate of wealth inequity in the UK [5]. Moreover, the gap of socioeconomic inequity promoted the increased survival differences in the UK [5]. Unfortunately, low socioeconomic status (SES) resulted in reduction in life expectancy [6]. A systems review reported that three previous cross-sectional studies all found a non-significant relationship between chronic respiratory diseases and SES in low- and lower-middle-income countries, but one cohort study reported that higher SES (z-score method) decreased the risk of respiratory disease mortality [7,8]. In addition, a descriptive ecological study reported that for chronic respiratory disease mortality rate ratios, there were inequalities between the low and high strata using hierarchical classification [9]. Considering the above inconsistent results, different evaluation methods for SES, and lack of cohort studies, a large population-based cohort study was needed to analyse the relationship of SES with respiratory disease mortality, especially in high-income countries such as the UK with higher socioeconomic inequity [5].
Healthy behaviours are important and common factors influencing respiratory health and have extended people’s life span [10,11,12]. Recently, compared with a single healthy lifestyle, a healthy behaviours index that combined smoking status, alcohol consumption, physical activity, diet, and body mass index (BMI) came into view [13,14]. Several studies reported that the detrimental effect of low SES on the cardiovascular disease mortality could be alleviated by healthy behaviours [14,15]. However, its modification on the association of SES with respiratory disease mortality remains unknown. Moreover, studies on the joint effect of SES and healthy behaviours on respiratory disease mortality are lacking.
In this study, we aim to accomplish two goals by using UK Biobank cohort data with a large sample size. The primary goal is to investigate the impact of the association between SES and healthy behaviours on mortality from respiratory diseases, and the second goal is to explore whether findings are consistent among subpopulations by gender and age group.

2. Methods

2.1. Study Population

From 2006 to 2021, the UK Biobank (application 79114) enrolled 502,414 participants aged 37 to 73 years who resided within 40 km of 1 of 22 assessment centers across the United Kingdom (England, Wales, and Scotland) and were registered with the UK National Health Service (NHS). This large prospective cohort study covered multifarious and different settings, including urban–rural mix, socioeconomic, and ethnic heterogeneity. More details were shown in [16,17]. Among the 502,414 participants, after excluding those with missing information on socioeconomic status (n = 79,393), healthy behaviours (n = 33,967), and other covariates (n = 16,209), we finally included 372,845 participants (Figure 1). Table S1 presented missing information in detail. The National Information Governance Board for Health and Social Care and the NHS North West Multi-Centre Research Ethics Committee approved the UK Biobank study. Electronically signed consent has been obtained from all participants.

2.2. Assessment of SES

In our study, we assessed SES using total household income before tax, education qualifications, and employment status based on the previous study [15]. Total household income before tax was obtained through questionnaires, with options of <£18,000, £18,000–£30,999, £31,000–£51,999, £52,000–£100,000, >£100,000, do not know, or prefer not to answer. Education qualifications included eight options: college or university degree; advanced (A) levels, advanced subsidiary (AS) levels or equivalent; general certification of education ordinary (O) level, general certificate of secondary education (GCSEs) or equivalent; certificate of secondary education (CSEs) or equivalent; national vocational qualification (NVQ), higher national diploma (HND), higher national certificate (HNC), or equivalent; other professional qualifications; none of the above (equivalent to less than a high school diploma); or prefer not to answer. We regrouped employment status into two groups: unemployed and employed, which included those retired, in paid employment or self-employed, doing unpaid or voluntary work, or being full- or part-time students. Latent class analysis was used to create an overall SES variable which was identified as three latent classes, representing a low, medium, or high SES in terms of the item-response probabilities. Detailed information on latent class analysis is presented in the Methods section of the Appendix [15].

2.3. Assessment of Healthy Behaviours and Other Covariates

Five factors, including smoking status, alcohol intake, physical activity, diet scores, and body mass index (BMI, kg/m2) were used to construct a healthy behaviours index based on previous UK biobank studies (details are shown in Table S2) [13,14,18]. Alcohol intake considered participants’ self–reported intake of six classes of alcoholic drinks per week and month. Moderate alcohol intake was viewed as five to 15 g of alcohol per day for women and five to 30 g per day for men [14]. The total metabolic equivalent task (MET) minutes per week for all activities, including walking, moderate, and vigorous activity was calculated based on the International Physical Activity Questionnaire [19]. Either equal or more than 735 MET min/week was considered sufficient physical activity [14]. Diet scores (theoretical range: zero to seven) were constructed based on six main food groups from a touchscreen food frequency questionnaire, in which values greater than three were viewed as a healthy diet [14,20]. For each behavioural component, we assigned one point for a healthy level (zero points for an unhealthy level), then added up the points that ranged between zero and five, and classified the healthy behaviour index into three groups (no or one, two or three, and four or five).
Other covariates, including age, gender, race and ethnicity, general health, weight loss, cancer, cardiovascular disease, diabetes, family history of diseases (high blood pressure, diabetes type 2, stroke, chronic bronchitis/emphysema, lung cancer, bowel cancer, breast cancer, Parkinson’s disease, Alzheimer’s disease/dementia, and severe depression), poor psychological status, sleep duration, and coffee and tea intake, were investigated through questionnaires. We classified adults’ and older adults’ sleep duration into three groups: normal sleep duration, short sleep duration, and long sleep duration, based on recommendations from the National Sleep Foundation [21].

2.4. Assessment of Respiratory Disease Mortality

Outcomes, including vital status, date of death, and underlying primary cause of death by 30 June 2020, were provided by the NHS Information Centre (England and Wales) and the NHS Central Register (Scotland) [22]. Deaths from respiratory diseases were defined according to the codes from the International Statistical Classification of Diseases and Related Health Problems, 10th Revision (ICD-10): J00-J99 total respiratory diseases; J09–J18 influenza and pneumonia; J40–J47 chronic lower respiratory diseases [23].

2.5. Statistical Analysis

We presented baseline characteristics as mean (standard deviation, SD) or median (interquartile range, IQR) for continuous variables, for which the normality of distribution was tested using the Kolmogorov–Smirnov test, and number (percentage, %) for categorical variables. Differences between groups for continuous variables and categorical variables were tested by using the analysis of variance and χ2 tests, respectively.
The prospective association of SES or healthy behaviours with outcomes was estimated using Cox proportional hazards regression and presented as hazard ratios (HRs) and 95% confidence intervals (CIs). We used Schoenfeld residuals to test the proportional hazards assumption, and calculated person years from baseline until the date of death from respiratory diseases, death by other causes, emigration, or the end of the follow-up period (30 June 2020), whichever occurred first. Model 1 included SES (high, medium, low), age (<65 years, ≥65 years), gender (male, female), race and ethnicity (White, Black, Asian, mixed, other), general health (excellent, good, fair, poor), weight loss (yes, no), diabetes (yes, no), cardiovascular disease (yes, no), cancer (yes, no), family history (yes, no, unknown), poor psychological status (yes, no), sleep duration (normal, short, long), coffee intake (yes, no), and consumption of tea (continuous), based on previous research [15]. Model 2 additionally included the healthy behaviours. A stratified analysis was conducted by healthy behaviours to investigate associations of the SES with health outcomes.
We quantified the additive and multiplicative interactions by adding a product term of SES (high, low) and healthy behaviours (no or one, four or five) in the model [15]. The interaction on the additive scale was measured by using the synergy index and corresponding 95% CI [24]. After classifying participants into nine groups according to SES (high, medium, low) and healthy behaviours score (no or one, two or three, four or five points), we estimated HRs of mortality in the different groups, compared with those of high SES and with four or five healthy behaviours, to assess the joint associations. To test the robustness and potential variations between subgroups, we repeated stratified analyses on gender and age groups.
In addition, we conducted two sensitivity analyses: (1) to test the influence of missing variables, we used multiple imputation by chained equations to impute all missing covariates; and (2) excluding participants who had an outcome event during the first 5 years of follow-up [15,25].
A two-sided p value of less than 0.05 was considered statistically significant. R software, version 4.2.1 was used for all analyses.

3. Results

3.1. Population Characteristics

Table 1 shows participants’ baseline characteristics. Among the 372,845 participants (mean age 56.03 years, 52.2% men), 78,104 (20.9%) were of high SES, 200,296 (53.7%) of medium SES, and 94,445 (25.3%) of low SES. Adults of low SES were more likely to be older. Men, non-White people, experiencing weight loss last year, a poorer general health, multiple comorbidities, abnormal sleep duration, less consumption of coffee, less healthy behaviours, abnormal BMI, and smoking were more prevalent among adults of low SES.

3.2. Associations of Healthy Behaviours and SES with Respiratory Disease Mortality

There were 1447 deaths from total respiratory diseases during the 12.47 median follow-up years (interquartile range [IQR], 11.56 to 13.28 years). The mortality was 0.01, 0.02, and 0.08 per 100 person-years among adults of high, medium, and low SES, respectively. After adjusting for healthy behaviours and other covariates, compared with high SES, low SES was associated with a 4.44-fold (95% CI: 3.42, 5.78) higher risk of total respiratory disease mortality. Adjusting for healthy behaviours had no effect on HR estimates (Table 2: 4.48 vs. 4.44). Results were not materially changed in sensitivity analyses (Table S3). After adjusting for healthy behaviours and other covariates, compared with high SES, low SES was associated with a 2.64-fold and 7.20-fold higher risk of influenza and pneumonia mortality and chronic lower respiratory disease mortality, respectively (Table S4). Figure S1A shows that, among the various healthy behaviour subgroups, low SES was associated with higher risks of total respiratory disease mortality, whereas the associations were stronger in the no or one healthy behaviour subgroup. The results stratified by healthy behaviours for influenza, pneumonia, and chronic lower respiratory diseases were consistent with those for total respiratory diseases (Table S5).
More healthy behaviours, compared with no or one healthy behaviour, were associated with 29% to 56% lower risk of total respiratory disease mortality, 39% to 41% lower risk of influenza and pneumonia mortality, and 29% to 45% lower risk of chronic lower respiratory disease mortality (Table S6). Four or five healthy behaviours were associated with a lower risk of total respiratory disease mortality, whereas the associations were stronger in the low SES group (Figure S1B). The results stratified by SES for influenza and pneumonia were consistent with those for total respiratory diseases, but for chronic lower respiratory diseases, the beneficial effect of more healthy behaviours was stronger among those of high SES (Table S7).

3.3. Interaction and Joint Analysis of Healthy Behaviours and SES with Respiratory Disease Mortality

No significant multiplicative or additive interaction was found between healthy behaviours and SES on total respiratory disease mortality or influenza and pneumonia mortality, but there was an additive interaction between healthy behaviours and SES on chronic lower respiratory disease mortality (Table 2 and Table S4). Compared with those of high SES and with four or five healthy behaviours, the HRs for individuals of low SES and with no or one healthy behaviour were 8.32 (95% CI: 4.23, 16.35), 6.68 (95% CI: 2.04, 21.87), and 29.90 (95% CI: 4.15, 215.35) for total respiratory disease mortality, influenza and pneumonia mortality, and chronic lower respiratory disease mortality, respectively (Figure 2 and Table S8). Sensitivity analyses showed stable results (Table S9).

3.4. Associations of Healthy Behaviours and SES with Respiratory Disease Mortality among Subpopulations

The associations of low SES with respiratory disease mortality were stronger in men than in women (Table S10: 7.25 vs. 1.63) and in younger than older adults (Table S10: 4.49 vs. 4.41). The results were similar for mortality from influenza and pneumonia and chronic lower respiratory diseases (Tables S11 and S12). Figure 3 showed no evidence of significant effect of the joint associations of healthy behaviours and SES on mortality from respiratory diseases for ages ≥ 65 years. In males and females, for groups including medium SES and no or one healthy behaviour, low SES and four or five healthy behaviours, low SES and two or three healthy behaviours, and low SES and no or one healthy behaviour, the estimated effects were statistically significant (in females, the groups additionally included medium SES and two or three healthy behaviours). The joint associations of healthy behaviours and SES with total respiratory disease mortality were stronger in men than in women and in younger than older adults (Figure 3). The results for mortality from influenza and pneumonia and chronic lower respiratory diseases are shown in Tables S13 and S14.

4. Discussion

To our knowledge, this was the first study to explore whether healthy behaviours affect the association of SES with respiratory disease mortality and examine the extent of joint relations between healthy behaviours and SES with respiratory disease mortality. We found that low SES was associated with a higher risk of mortality from respiratory disease, and the effect value was higher in the no or one healthy behaviour subgroup in this prospective analysis of nearly 400,000 participants from the UK Biobank. In addition, the joint analysis found that the highest risks of respiratory disease mortality were seen in adults of low SES and with no or one healthy behaviour, especially in adults aged ≤ 65 years and males.
Up to now, limited cohort studies have analysed the associations between SES and respiratory disease mortality. Our study explored the comprehensive associations between SES and respiratory disease mortality and found that adults of low SES had a higher risk of respiratory disease mortality. One cohort study from Poland reported that higher socioeconomic status was associated with a lower risk of mortality due to diseases of the respiratory system, which supports our results [8]. Our study acquired death information until 30 June 2020; the onset of the COVID-19 pandemic could have determined an increase in mortality from respiratory diseases starting from March–April 2020. It should be noted that the impact of the pandemic was stronger among the more vulnerable groups of the population (i.e., low-educated, low-income, and unhealthy behaviours) that were usually found at higher risk of infection and mortality [26,27]. Therefore, it is important to pay attention to the impact of SES inequalities on the progression of respiratory diseases and take measures to reduce the inequalities of SES or attenuate its harmful effects on respiratory disease mortality using relevant screening and intervention programmes. After adjusting for healthy behaviours, there was a minimal change in the HR for low SES, from 4.48 to 4.44. However, we observed joint associations between healthy behaviours and SES; at the same level of SES, the risk of respiratory disease mortality was lower among adults with more healthy behaviours. The risk of mortality from respiratory diseases was highest among persons of low SES who had no or one healthy behaviour. Previous studies reported that healthy behaviours, as important factors influencing health, might alleviate the risk of death [10,11,12]. Our results highlight that adherence to healthy behaviours represents potentially modifiable targets for improving the harmful impact of low SES on life expectancy from respiratory disease. The benefits of adopting healthy behaviors (two or more) are evident when considering the joint effect of SES levels and healthy behaviors.
Moreover, our study expanded on findings by showing age and gender differences for the associations of SES with mortality from respiratory diseases. We further identified that the associations were stronger in men than in women and in younger than older adults. Wang et al. also found that low SES had a larger effect on mortality among younger population [28]. Similarly, joint associations of less healthy behaviours and low SES with mortality from respiratory diseases were also stronger in men than in women, and in younger than older adults. The reasons for age and gender differences are not yet clear. It may be that men have higher respiratory disease mortality, and men and younger people with less healthy behaviours and/or of low SES may be more exposed to other risk factors for respiratory disease mortality, such as second-hand smoke [2,29]. Further research is needed to replicate this finding and identify the mechanisms behind the age and gender differences for the above associations. The above findings suggest that SES inequalities cause gaps in mortality from respiratory diseases, especially in younger male populations.
We also observed that experiencing weight loss in the past year and having multiple comorbidities, poorer general health, and abnormal sleep duration were more prevalent among adults of low SES. Other studies also found similar characters [15]. Adults of low SES with more comorbidities and poor health may explained the higher risk of respiratory diseases mortality in this group. Additionally, higher SES generally means more resources, including better living accommodations and medical care.
The large sample size and sufficient statistical power of our results were the major strengths of this study. Additionally, death records were obtained from the NHS Information Centre and the NHS Central Register to ensure accuracy. There were some limitations in the study. First, part of the self-reported information may cause recall bias. Thus, further objective measurements should be urgently carried out in this field. Second, although our estimation models adjusted for a wide range of known confounders, the potential for residual bias still existed. Third, the healthy behaviour index was defined by the assessment of five factors: alcohol intake, smoking status, physical exercise, eating habits, and BMI in UKB studies. Although BMI is not a behaviour and is commonly used as a marker of healthy behaviour (low level of physical activity, poor diet) in other studies, it may represent other potential health behaviours and help to reflect the subjects’ healthy behaviours comprehensively. In addition, although SES was evaluated by three factors, including employment status, income, and educational attainment, using latent class analysis in this study, it still cannot represent SES comprehensively. For example, the employed group included those in paid employment or self-employment, retired, doing unpaid work, voluntary workers, and student categories, but doing unpaid work, voluntary workers, and student categories might have different health outcomes compared to income perceivers. Finally, results cannot be generalised because of the convenience of the sample, regardless of its size and statistical power.

5. Conclusions

In conclusion, this large nationwide UK prospective cohort analysis found that both low SES and less healthy behaviours were associated with an increased risk of respiratory disease mortality, which augmented when both presented together. Our results highlight the risk of SES inequalities and unhealthy behaviours for the progression of respiratory disease, especially their joint effect. In the future, understanding their mutual relationship in reducing respiratory disease burden will still be required by using other approaches, such as a randomised controlled trial. Our novel findings may provide relevant evidence for respiratory disease management in clinical and public health.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/nu15081872/s1. Appendix method. Assessment of socioeconomic status using latent class analysis. Table S1. The numbers (percentages) of participants with missing covariates (N = 542,414). Table S2. Scoring system for healthy behaviour indices. Table S3. Sensitivity analyses of associations between socioeconomic status and respiratory disease mortality. Table S4. Associations between socioeconomic status and mortality from influenza and pneumonia and chronic lower respiratory diseases. Figure S1. Associations of healthy behaviors or socioeconomic status with respiratory disease mortality. Table S5. Associations of socioeconomic status with mortality from influenza and pneumonia and chronic lower respiratory diseases by healthy behaviors. Table S6. Associations of healthy behaviours with respiratory disease mortality. Table S7. Associations of healthy behaviors with mortality from influenza and pneumonia and chronic lower respiratory diseases by socioeconomic status. Table S8. Joint associations of healthy behaviors and socioeconomic status with respiratory disease mortality. Table S9 Sensitivity analyses of joint association of healthy behaviours and socioeconomic status on total respiratory disease mortality. Table S10. Associations of socioeconomic status with total respiratory disease mortality by gender and age. Table S11. Associations of socioeconomic status with influenza and pneumonia mortality by gender and age. Table S12. Associations of socioeconomic status with chronic lower respiratory disease mortality by gender and age. Table S13. The joint associations of healthy behaviours and socioeconomic status on influenza and pneumonia mortality by gender and age. Table S14. The joint associations of healthy behaviours and socioeconomic status on chronic lower respiratory disease mortality by gender and age.

Author Contributions

M.D., M.L. and J.L. conceptualized and designed the study; M.D. performed data acquisition; M.D. and L.Z. performed data curation and formal analysis; M.D. performed visualization, M.D. performed writing—original draft, J.L. and M.L. performed writing—reviewing and editing. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by the Beijing Natural Science Foundation (grant number L222027) and National Natural Science Foundation of China (grant number 72122001).

Institutional Review Board Statement

The UK Biobank was approved by the Research Ethics Committees of the Northwest Multi-Centre (reference no. 16/NW/0274).

Informed Consent Statement

All the study participants signed an informed consent form.

Data Availability Statement

The UK Biobank datasets are openly available by submitting a data request proposal from https://www.ukbiobank.ac.uk/ (accessed on 9 June 2022). We are authorised to access the database through the Access Management System (AMS) (Application number: 79114).

Acknowledgments

This study was conducted using the UK Biobank resource (applications 79114). The UK Biobank was established by the Wellcome Trust, the Medical Research Council, the UK Department of Health, and the Scottish Government. The UK Biobank has also received funding from the Welsh Assembly Government, the British Heart Foundation, and Diabetes United Kingdom. This work used the computational resources of the NIH High-Performance Computing Biowulf cluster.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

BMI: body mass index; CI: confidence interval; COPD: chronic obstructive pulmonary disease; IQR: interquartile range; SD: standard deviation; SES: socioeconomic status; UK: United Kingdom.

References

  1. Roth, G.A.; Abate, D.; Abate, K.H.; Abay, S.M.; Abbafati, C.; Abbasi, N.; Abbastabar, H.; Abd-Allah, F.; Abdela, J.; Abdelalim, A.; et al. Global, regional, and national age-sex-specific mortality for 282 causes of death in 195 countries and territories, 1980–2017: A systematic analysis for the Global Burden of Disease Study 2017. Lancet 2018, 392, 1736–1788. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  2. Soriano, J.B.; Kendrick, P.J.; Paulson, K.R.; Gupta, V.; Abrams, E.M.; Adedoyin, R.A.; Adhikari, T.B.; Advani, S.M.; Agrawal, A.; Ahmadian, E.; et al. Prevalence and attributable health burden of chronic respiratory diseases, 1990–2017: A systematic analysis for the Global Burden of Disease Study 2017. Lancet Respir. Med. 2020, 8, 585–596. [Google Scholar] [CrossRef] [PubMed]
  3. World Health Organization. Chronic Respiratory Diseases. Available online: https://www.who.int/health-topics/chronic-respiratory-diseases#tab=tab_2 (accessed on 16 September 2022).
  4. Salciccioli, J.D.; Marshall, D.C.; Shalhoub, J.; Maruthappu, M.; De Carlo, G.; Chung, K.F. Respiratory disease mortality in the United Kingdom compared with EU15+ countries in 1985–2015: Observational study. BMJ 2018, 363, k4680. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  5. Marmot, M.; Allen, J.; Boyce, T.; Goldblatt, P.; Morrison, M. Health Equity in England: The Marmot Review Ten Years on 2020. Available online: https://www.health.org.uk/publications/reports/the-marmot-review-10-years-on (accessed on 16 September 2022).
  6. Stringhini, S.; Carmeli, C.; Jokela, M.; Avendaño, M.; Muennig, P.; Guida, F.; Ricceri, F.; d’Errico, A.; Barros, H.; Bochud, M.; et al. Socioeconomic status and the 25 × 25 risk factors as determinants of premature mortality: A multicohort study and meta-analysis of 1·7 million men and women. Lancet 2017, 389, 1229–1237. [Google Scholar] [CrossRef] [Green Version]
  7. Williams, J.; Allen, L.; Wickramasinghe, K.; Mikkelsen, B.; Roberts, N.; Townsend, N. A systematic review of associations between non-communicable diseases and socioeconomic status within low- and lower-middle-income countries. J. Glob. Health 2018, 8, 020409. [Google Scholar] [CrossRef]
  8. Polak, M.; Genowska, A.; Szafraniec, K.; Fryc, J.; Jamiołkowski, J.; Pająk, A. Area-Based Socio-Economic Inequalities in Mortality from Lung Cancer and Respiratory Diseases. Int. J. Environ. Res. Public Health 2019, 16, 1791. [Google Scholar] [CrossRef] [Green Version]
  9. Belon, A.P.; Barros, M.B.; Marín-León, L. Mortality among adults: Gender and socioeconomic differences in a Brazilian city. BMC Public Health 2012, 12, 39. [Google Scholar] [CrossRef] [Green Version]
  10. Zhu, N.; Yu, C.; Guo, Y.; Bian, Z.; Han, Y.; Yang, L.; Chen, Y.; Du, H.; Li, H.; Liu, F.; et al. Adherence to a healthy lifestyle and all-cause and cause-specific mortality in Chinese adults: A 10-year prospective study of 0.5 million people. Int. J. Behav. Nutr. Phys. Act. 2019, 16, 98. [Google Scholar] [CrossRef] [Green Version]
  11. Wu, E.; Ni, J.T.; Zhu, Z.H.; Xu, H.Q.; Tao, L.; Xie, T. Association of a Healthy Lifestyle with All-Cause, Cause-Specific Mortality and Incident Cancer among Individuals with Metabolic Syndrome: A Prospective Cohort Study in UK Biobank. Int. J. Environ. Res. Public Health 2022, 19, 9936. [Google Scholar] [CrossRef]
  12. Inoue-Choi, M.; Ramirez, Y.; Cornelis, M.C.; Berrington de González, A.; Freedman, N.D.; Loftfield, E. Tea Consumption and All-Cause and Cause-Specific Mortality in the UK Biobank: A Prospective Cohort Study. Ann. Intern. Med. 2022, 175, 1201–1211. [Google Scholar] [CrossRef]
  13. YANG, G.; Cao, X.; Li, X.; Zhang, J.; Ma, C.; Zhang, N.; Lu, Q.; Crimmins, E.M.; Gill, T.M.; Chen, X.; et al. Association of Unhealthy Lifestyle and Childhood Adversity with Acceleration of Aging Among UK Biobank Participants. JAMA Netw. Open 2022, 5, e2230690. [Google Scholar] [CrossRef] [PubMed]
  14. Bountziouka, V.; Musicha, C.; Allara, E.; Kaptoge, S.; Wang, Q.; Angelantonio, E.D.; Butterworth, A.S.; Thompson, J.R.; Danesh, J.N.; Wood, A.M.; et al. Modifiable traits, healthy behaviours, and leukocyte telomere length: A population-based study in UK Biobank. Lancet Healthy Longev. 2022, 3, e321–e331. [Google Scholar] [CrossRef] [PubMed]
  15. Zhang, Y.B.; Chen, C.; Pan, X.F.; Guo, J.; Li, Y.; Franco, O.H.; Liu, G.; Pan, A. Associations of healthy lifestyle and socioeconomic status with mortality and incident cardiovascular disease: Two prospective cohort studies. BMJ 2021, 373, n604. [Google Scholar] [CrossRef]
  16. Sudlow, C.; Gallacher, J.; Allen, N.; Beral, V.; Burton, P.; Danesh, J.; Downey, P.; Elliott, P.; Green, J.; Landray, M.; et al. UK biobank: An open access resource for identifying the causes of a wide range of complex diseases of middle and old age. PLoS Med. 2015, 12, e1001779. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  17. Palmer, L.J. UK Biobank: Bank on it. Lancet 2007, 369, 1980–1982. [Google Scholar] [CrossRef]
  18. Li, Y.; Pan, A.; Wang, D.D.; Liu, X.; Dhana, K.; Franco, O.H.; Kaptoge, S.; Di Angelantonio, E.; Stampfer, M.; Willett, W.C.; et al. Impact of Healthy Lifestyle Factors on Life Expectancies in the US Population. Circulation 2018, 138, 345–355. [Google Scholar] [CrossRef]
  19. Fan, M.; Lyu, J.; He, P. Chinese guidelines for data processing and analysis concerning the International Physical Activity Questionnaire. Chin. J. Epidemiol. 2014, 35, 961–964. [Google Scholar]
  20. Vu, T.T.; Van Horn, L.; Achenbach, C.J.; Rydland, K.J.; Cornelis, M.C. Diet and Respiratory Infections: Specific or Generalized Associations? Nutrients 2022, 14, 1195. [Google Scholar] [CrossRef]
  21. Hirshkowitz, M.; Whiton, K.; Albert, S.M.; Alessi, C.; Bruni, O.; DonCarlos, L.; Hazen, N.; Herman, J.; Katz, E.S.; Kheirandish-Gozal, L.; et al. National Sleep Foundation’s sleep time duration recommendations: Methodology and results summary. Sleep Health 2015, 1, 40–43. [Google Scholar] [CrossRef]
  22. Biobank UK. Mortality Data: Linkage to Death Registries. 2020. Available online: https://biobank.ndph.ox.ac.uk/ukb/ukb/docs/DeathLinkage.pdf (accessed on 16 September 2022).
  23. International Statistical Classification of Diseases and Related Health Problems 10th Revision. 2019. Available online: https://icd.who.int/browse10/2019/en (accessed on 16 September 2022).
  24. Hosmer, D.W.; Lemeshow, S. Confidence interval estimation of interaction. Epidemiology 1992, 3, 452–456. [Google Scholar] [CrossRef]
  25. Liu, D.; Li, Z.H.; Shen, D.; Zhang, P.D.; Song, W.Q.; Zhang, W.T.; Huang, Q.M.; Chen, P.L.; Zhang, X.R.; Mao, C. Association of Sugar-Sweetened, Artificially Sweetened, and Unsweetened Coffee Consumption with All-Cause and Cause-Specific Mortality: A Large Prospective Cohort Study. Ann. Intern. Med. 2022, 175, 909–917. [Google Scholar] [CrossRef] [PubMed]
  26. Elliott, J.; Bodinier, B.; Whitaker, M.; Delpierre, C.; Vermeulen, R.; Tzoulaki, I.; Elliott, P.; Chadeau-Hyam, M. COVID-19 mortality in the UK Biobank cohort: Revisiting and evaluating risk factors. Eur. J. Epidemiol. 2021, 36, 299–309. [Google Scholar] [CrossRef] [PubMed]
  27. Foster, H.M.E.; Ho, F.K.; Mair, F.S.; Jani, B.D.; Sattar, N.; Katikireddi, S.V.; Pell, J.P.; Niedzwiedz, C.L.; Hastie, C.E.; Anderson, J.J.; et al. The association between a lifestyle score, socioeconomic status, and COVID-19 outcomes within the UK Biobank cohort. BMC Infect. Dis. 2022, 22, 273. [Google Scholar] [CrossRef] [PubMed]
  28. Wang, Z.; Zheng, Y.; Ruan, H.; Li, L.; He, S. Promotion of Healthy Lifestyles Alone Might Not Substantially Reduce Socioeconomic Inequity-Related Mortality Risk in Older People in China: A Prospective Cohort Study. J. Epidemiol. Glob. Health 2023, 4, 1–11. [Google Scholar] [CrossRef]
  29. Barco, S.; Valerio, L.; Ageno, W.; Cohen, A.T.; Goldhaber, S.Z.; Hunt, B.J.; Iorio, A.; Jimenez, D.; Klok, F.A.; Kucher, N.; et al. Age-sex specific pulmonary embolism-related mortality in the USA and Canada, 2000–2018: An analysis of the WHO Mortality Database and of the CDC Multiple Cause of Death database. Lancet Respir. Med. 2021, 9, 33–42. [Google Scholar] [CrossRef]
Figure 1. The study flowchart.
Figure 1. The study flowchart.
Nutrients 15 01872 g001
Figure 2. Joint associations of healthy behaviors and socioeconomic status with total respiratory disease mortality. Models all adjusted for age, gender, race and ethnicity, general health, weight loss, diabetes, cardiovascular disease, cancer, family history, poor psychological status, sleep duration, coffee intake, and consumption of tea. 95% CI = 95% confidence interval. SES = socioeconomic status.
Figure 2. Joint associations of healthy behaviors and socioeconomic status with total respiratory disease mortality. Models all adjusted for age, gender, race and ethnicity, general health, weight loss, diabetes, cardiovascular disease, cancer, family history, poor psychological status, sleep duration, coffee intake, and consumption of tea. 95% CI = 95% confidence interval. SES = socioeconomic status.
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Figure 3. The joint associations of healthy behaviours and socioeconomic status on respiratory disease mortality by gender and age. Models all adjusted for age, gender, race and ethnicity, general health, weight loss, diabetes, cardiovascular disease, cancer, family history, poor psychological status, sleep duration, coffee intake, and consumption of tea. Nine joint groups are presented in the following order: High SES and four or five healthy behaviours, high SES and two or three healthy behaviours, high SES and no or one healthy behaviour, medium SES and four or five healthy behaviours, medium SES and two or three healthy behaviours, medium SES and no or one healthy behaviour, low SES and four or five healthy behaviours, low SES and two or three healthy behaviours, low SES and no or one healthy behaviour. 95% CI = 95% confidence interval. SES = socioeconomic status.
Figure 3. The joint associations of healthy behaviours and socioeconomic status on respiratory disease mortality by gender and age. Models all adjusted for age, gender, race and ethnicity, general health, weight loss, diabetes, cardiovascular disease, cancer, family history, poor psychological status, sleep duration, coffee intake, and consumption of tea. Nine joint groups are presented in the following order: High SES and four or five healthy behaviours, high SES and two or three healthy behaviours, high SES and no or one healthy behaviour, medium SES and four or five healthy behaviours, medium SES and two or three healthy behaviours, medium SES and no or one healthy behaviour, low SES and four or five healthy behaviours, low SES and two or three healthy behaviours, low SES and no or one healthy behaviour. 95% CI = 95% confidence interval. SES = socioeconomic status.
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Table 1. Baseline characteristics of participants.
Table 1. Baseline characteristics of participants.
CharacteristicsNHigh SES (n, %)Medium SES (n, %)Low SES (n, %)
372,84578,104 (20.9)200,296 (53.7)94,445 (25.3)
Mean age (SD), y56.03 (8.07)52.48 (7.20)55.76 (7.98)59.52 (7.49)
Age, y
<65309,375 (83.0)74,020 (94.8)169,570 (84.7)65,785 (69.7)
≥6563,470 (17.0)4084 (5.2)30,726 (15.3)28,660 (30.3)
Gender
Male 194,555 (52.2)37,761 (48.3)103,574 (51.7)53,220 (56.4)
Female 178,290 (47.8)40,343 (51.7)96,722 (48.3)41,225 (43.6)
Race and ethnicity
White357,423 (95.9)75,115 (96.2)192,582 (96.1)89,726 (95.0)
Black4537 (1.2)495 (0.6)2500 (1.2)1542 (1.6)
Asian6288 (1.7)1447 (1.9)3036 (1.5)1805 (1.9)
Mixed2052 (0.6)514 (0.7)1000 (0.5)538 (0.6)
other2545 (0.7)533 (0.7)1178 (0.6)834 (0.9)
General health
Excellent67,336 (18.1)21,086 (27.0)35,577 (17.8)10,673 (11.3)
Good219,590 (58.9)46,077 (59.0)123,149 (61.5)50,364 (53.3)
Fair72,234 (19.4)9803 (12.6)36,775 (18.4)25,656 (27.2)
Poor13,685 (3.7)1138 (1.5)4795 (2.4)7752 (8.2)
Weight loss
No315,831 (84.7)66,706 (85.4)170,194 (85.0)78,931 (83.6)
Yes57,014 (15.3)11,398 (14.6)30,102 (15.0)15,514 (16.4)
Cancer
No344,912 (92.5)73,520 (94.1)185,777 (92.8)85,615 (90.7)
Yes27,933 (7.5)4584 (5.9)14,519 (7.2)8830 (9.3)
Diabetes
No355,309 (95.3)76,011 (97.3)192,006 (95.9)87,292 (92.4)
Yes17,536 (4.7)2093 (2.7)8290 (4.1)7153 (7.6)
Poor psychological status
No244,873 (65.7)56,290 (72.1)133,101 (66.5)55,482 (58.7)
Yes127,972 (34.3)21,814 (27.9)67,195 (33.5)38,963 (41.3)
Cardiovascular disease
No267,234 (71.7)63,133 (80.8)146,167 (73.0)57,934 (61.3)
Yes105,611 (28.3)14,971 (19.2)54,129 (27.0)36,511 (38.7)
Family history
No29,663 (8.0)7739 (9.9)15,636 (7.8)6288 (6.7)
Yes335,046 (89.9)69,224 (88.6)180,654 (90.2)85,168 (90.2)
Unknown8136 (2.2)1141 (1.5)4006 (2.0)2989 (3.2)
Sleep duration
Normal 273,210 (73.3)60,963 (78.1)149,144 (74.5)63,103 (66.8)
Short88,334 (23.7)16,505 (21.1)46,557 (23.2)25,272 (26.8)
Long11,301 (3.0)636 (0.8)4595 (2.3)6070 (6.4)
Tea intake (median [IQR]), cups/day3.00 [1.00, 5.00]3.00 [1.00, 5.00]3.00 [1.00, 5.00]3.00 [2.00, 5.00]
Coffee intake
No79,050 (21.2)13,736 (17.6)41,457 (20.7)23,857 (25.3)
Yes293,795 (78.8)64,368 (82.4)158,839 (79.3)70,588 (74.7)
Healthy behaviours
No or one healthy behaviour40,478 (10.9)8035 (10.3)21,348 (10.7)11,095 (11.7)
Two or three healthy behaviours252,202 (67.6)50,053 (64.1)135,701 (67.8)66,448 (70.4)
Four or five healthy behaviours80,165 (21.5)20,016 (25.6)43,247 (21.6)16,902 (17.9)
Body mass index (kg/m2)
<18.5/>24.9252,073 (67.6)47,520 (60.8)136,258 (68.0)68,295 (72.3)
18.5–24.9120,772 (32.4)30,584 (39.2)64,038 (32.0)26,150 (27.7)
Smoking
Yes168,194 (45.1)29,500 (37.8)88,892 (44.4)49,802 (52.7)
No204,651 (54.9)48,604 (62.2)111,404 (55.6)44,643 (47.3)
Diet score
Zero–three315,270 (84.6)66,428 (85.1)169,098 (84.4)79,744 (84.4)
Four–seven57,575 (15.4)11,676 (14.9)31,198 (15.6)14,701 (15.6)
Physical activity
Insufficient73,412 (19.7)17,477 (22.4)38,608 (19.3)17,327 (18.3)
Sufficient299,433 (80.3)60,627 (77.6)161,688 (80.7)77,118 (81.7)
Alcohol intake
Inappropriate44,392 (11.9)10,481 (13.4)24,028 (12.0)9883 (10.5)
Moderate328,453 (88.1)67,623 (86.6)176,268 (88.0)84,562 (89.5)
Notes: all p-values < 0.0001; SES = socioeconomic status.
Table 2. Associations of socioeconomic status with total respiratory disease mortality.
Table 2. Associations of socioeconomic status with total respiratory disease mortality.
Deaths/Mortality (per 100 Person-Years)Hazard Ratio (95% CI) *
Unadjusted for Healthy BehavioursAdjusted for Healthy Behaviours
High SES64/0.011 (Reference)1 (Reference)
Medium SES522/0.022.23 (1.72, 2.90)2.23 (1.72, 2.90)
Low SES861/0.084.48 (3.45, 5.82)4.44 (3.42, 5.78)
Models all adjusted for age, gender, race and ethnicity, general health, weight loss, diabetes, cardiovascular disease, cancer, family history, poor psychological status, sleep duration, coffee intake, and consumption of tea. * Hazard ratios for the product term between the healthy behaviours (no or one v four or five) and SES (high v low) were used to evaluate multiplicative interaction, and its confidence interval, which did not include 1, meant the statistically significant multiplicative interaction. The synergy index between the healthy behaviours (no or one vs. four or five) and SES (high vs. low) was used to evaluate additive interaction, and its confidence interval did not include 1 meant the statistically significant additive interaction [15,24]. Multiplicative interaction: 1.06 (95% CI: 0.44, 2.59), p = 0.892; additive interaction: the synergy index = 1.16 (95% CI: 0.69, 1.97). SES = socioeconomic status.
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Du, M.; Zhu, L.; Liu, M.; Liu, J. Mutual Associations of Healthy Behaviours and Socioeconomic Status with Respiratory Diseases Mortality: A Large Prospective Cohort Study. Nutrients 2023, 15, 1872. https://doi.org/10.3390/nu15081872

AMA Style

Du M, Zhu L, Liu M, Liu J. Mutual Associations of Healthy Behaviours and Socioeconomic Status with Respiratory Diseases Mortality: A Large Prospective Cohort Study. Nutrients. 2023; 15(8):1872. https://doi.org/10.3390/nu15081872

Chicago/Turabian Style

Du, Min, Lin Zhu, Min Liu, and Jue Liu. 2023. "Mutual Associations of Healthy Behaviours and Socioeconomic Status with Respiratory Diseases Mortality: A Large Prospective Cohort Study" Nutrients 15, no. 8: 1872. https://doi.org/10.3390/nu15081872

APA Style

Du, M., Zhu, L., Liu, M., & Liu, J. (2023). Mutual Associations of Healthy Behaviours and Socioeconomic Status with Respiratory Diseases Mortality: A Large Prospective Cohort Study. Nutrients, 15(8), 1872. https://doi.org/10.3390/nu15081872

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