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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

BACKGROUND: In 2011, WHO member states signed up to the 25 × 25 initiative, a plan to cut mortality due to non-communicable diseases by 25% by 2025. However, socioeconomic factors influencing non-communicable diseases have not been included in the plan. In this study, we aimed to compare the contrib...

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Autores principales: Stringhini, Silvia, Carmeli, Cristian, Jokela, Markus, Avendaño, Mauricio, Muennig, Peter, Guida, Florence, Ricceri, Fulvio, d'Errico, Angelo, Barros, Henrique, Bochud, Murielle, Chadeau-Hyam, Marc, Clavel-Chapelon, Françoise, Costa, Giuseppe, Delpierre, Cyrille, Fraga, Silvia, Goldberg, Marcel, Giles, Graham G, Krogh, Vittorio, Kelly-Irving, Michelle, Layte, Richard, Lasserre, Aurélie M, Marmot, Michael G, Preisig, Martin, Shipley, Martin J, Vollenweider, Peter, Zins, Marie, Kawachi, Ichiro, Steptoe, Andrew, Mackenbach, Johan P, Vineis, Paolo, Kivimäki, Mika
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5368415/
https://www.ncbi.nlm.nih.gov/pubmed/28159391
http://dx.doi.org/10.1016/S0140-6736(16)32380-7
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author Stringhini, Silvia
Carmeli, Cristian
Jokela, Markus
Avendaño, Mauricio
Muennig, Peter
Guida, Florence
Ricceri, Fulvio
d'Errico, Angelo
Barros, Henrique
Bochud, Murielle
Chadeau-Hyam, Marc
Clavel-Chapelon, Françoise
Costa, Giuseppe
Delpierre, Cyrille
Fraga, Silvia
Goldberg, Marcel
Giles, Graham G
Krogh, Vittorio
Kelly-Irving, Michelle
Layte, Richard
Lasserre, Aurélie M
Marmot, Michael G
Preisig, Martin
Shipley, Martin J
Vollenweider, Peter
Zins, Marie
Kawachi, Ichiro
Steptoe, Andrew
Mackenbach, Johan P
Vineis, Paolo
Kivimäki, Mika
author_facet Stringhini, Silvia
Carmeli, Cristian
Jokela, Markus
Avendaño, Mauricio
Muennig, Peter
Guida, Florence
Ricceri, Fulvio
d'Errico, Angelo
Barros, Henrique
Bochud, Murielle
Chadeau-Hyam, Marc
Clavel-Chapelon, Françoise
Costa, Giuseppe
Delpierre, Cyrille
Fraga, Silvia
Goldberg, Marcel
Giles, Graham G
Krogh, Vittorio
Kelly-Irving, Michelle
Layte, Richard
Lasserre, Aurélie M
Marmot, Michael G
Preisig, Martin
Shipley, Martin J
Vollenweider, Peter
Zins, Marie
Kawachi, Ichiro
Steptoe, Andrew
Mackenbach, Johan P
Vineis, Paolo
Kivimäki, Mika
author_sort Stringhini, Silvia
collection PubMed
description BACKGROUND: In 2011, WHO member states signed up to the 25 × 25 initiative, a plan to cut mortality due to non-communicable diseases by 25% by 2025. However, socioeconomic factors influencing non-communicable diseases have not been included in the plan. In this study, we aimed to compare the contribution of socioeconomic status to mortality and years-of-life-lost with that of the 25 × 25 conventional risk factors. METHODS: We did a multicohort study and meta-analysis with individual-level data from 48 independent prospective cohort studies with information about socioeconomic status, indexed by occupational position, 25 × 25 risk factors (high alcohol intake, physical inactivity, current smoking, hypertension, diabetes, and obesity), and mortality, for a total population of 1 751 479 (54% women) from seven high-income WHO member countries. We estimated the association of socioeconomic status and the 25 × 25 risk factors with all-cause mortality and cause-specific mortality by calculating minimally adjusted and mutually adjusted hazard ratios [HR] and 95% CIs. We also estimated the population attributable fraction and the years of life lost due to suboptimal risk factors. FINDINGS: During 26·6 million person-years at risk (mean follow-up 13·3 years [SD 6·4 years]), 310 277 participants died. HR for the 25 × 25 risk factors and mortality varied between 1·04 (95% CI 0·98–1·11) for obesity in men and 2 ·17 (2·06–2·29) for current smoking in men. Participants with low socioeconomic status had greater mortality compared with those with high socioeconomic status (HR 1·42, 95% CI 1·38–1·45 for men; 1·34, 1·28–1·39 for women); this association remained significant in mutually adjusted models that included the 25 × 25 factors (HR 1·26, 1·21–1·32, men and women combined). The population attributable fraction was highest for smoking, followed by physical inactivity then socioeconomic status. Low socioeconomic status was associated with a 2·1-year reduction in life expectancy between ages 40 and 85 years, the corresponding years-of-life-lost were 0·5 years for high alcohol intake, 0·7 years for obesity, 3·9 years for diabetes, 1·6 years for hypertension, 2·4 years for physical inactivity, and 4·8 years for current smoking. INTERPRETATION: Socioeconomic circumstances, in addition to the 25 × 25 factors, should be targeted by local and global health strategies and health risk surveillance to reduce mortality. FUNDING: European Commission, Swiss State Secretariat for Education, Swiss National Science Foundation, the Medical Research Council, NordForsk, Portuguese Foundation for Science and Technology.
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spelling pubmed-53684152017-04-04 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 Stringhini, Silvia Carmeli, Cristian Jokela, Markus Avendaño, Mauricio Muennig, Peter Guida, Florence Ricceri, Fulvio d'Errico, Angelo Barros, Henrique Bochud, Murielle Chadeau-Hyam, Marc Clavel-Chapelon, Françoise Costa, Giuseppe Delpierre, Cyrille Fraga, Silvia Goldberg, Marcel Giles, Graham G Krogh, Vittorio Kelly-Irving, Michelle Layte, Richard Lasserre, Aurélie M Marmot, Michael G Preisig, Martin Shipley, Martin J Vollenweider, Peter Zins, Marie Kawachi, Ichiro Steptoe, Andrew Mackenbach, Johan P Vineis, Paolo Kivimäki, Mika Lancet Articles BACKGROUND: In 2011, WHO member states signed up to the 25 × 25 initiative, a plan to cut mortality due to non-communicable diseases by 25% by 2025. However, socioeconomic factors influencing non-communicable diseases have not been included in the plan. In this study, we aimed to compare the contribution of socioeconomic status to mortality and years-of-life-lost with that of the 25 × 25 conventional risk factors. METHODS: We did a multicohort study and meta-analysis with individual-level data from 48 independent prospective cohort studies with information about socioeconomic status, indexed by occupational position, 25 × 25 risk factors (high alcohol intake, physical inactivity, current smoking, hypertension, diabetes, and obesity), and mortality, for a total population of 1 751 479 (54% women) from seven high-income WHO member countries. We estimated the association of socioeconomic status and the 25 × 25 risk factors with all-cause mortality and cause-specific mortality by calculating minimally adjusted and mutually adjusted hazard ratios [HR] and 95% CIs. We also estimated the population attributable fraction and the years of life lost due to suboptimal risk factors. FINDINGS: During 26·6 million person-years at risk (mean follow-up 13·3 years [SD 6·4 years]), 310 277 participants died. HR for the 25 × 25 risk factors and mortality varied between 1·04 (95% CI 0·98–1·11) for obesity in men and 2 ·17 (2·06–2·29) for current smoking in men. Participants with low socioeconomic status had greater mortality compared with those with high socioeconomic status (HR 1·42, 95% CI 1·38–1·45 for men; 1·34, 1·28–1·39 for women); this association remained significant in mutually adjusted models that included the 25 × 25 factors (HR 1·26, 1·21–1·32, men and women combined). The population attributable fraction was highest for smoking, followed by physical inactivity then socioeconomic status. Low socioeconomic status was associated with a 2·1-year reduction in life expectancy between ages 40 and 85 years, the corresponding years-of-life-lost were 0·5 years for high alcohol intake, 0·7 years for obesity, 3·9 years for diabetes, 1·6 years for hypertension, 2·4 years for physical inactivity, and 4·8 years for current smoking. INTERPRETATION: Socioeconomic circumstances, in addition to the 25 × 25 factors, should be targeted by local and global health strategies and health risk surveillance to reduce mortality. FUNDING: European Commission, Swiss State Secretariat for Education, Swiss National Science Foundation, the Medical Research Council, NordForsk, Portuguese Foundation for Science and Technology. Elsevier 2017-03-25 /pmc/articles/PMC5368415/ /pubmed/28159391 http://dx.doi.org/10.1016/S0140-6736(16)32380-7 Text en © 2017 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY license http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Articles
Stringhini, Silvia
Carmeli, Cristian
Jokela, Markus
Avendaño, Mauricio
Muennig, Peter
Guida, Florence
Ricceri, Fulvio
d'Errico, Angelo
Barros, Henrique
Bochud, Murielle
Chadeau-Hyam, Marc
Clavel-Chapelon, Françoise
Costa, Giuseppe
Delpierre, Cyrille
Fraga, Silvia
Goldberg, Marcel
Giles, Graham G
Krogh, Vittorio
Kelly-Irving, Michelle
Layte, Richard
Lasserre, Aurélie M
Marmot, Michael G
Preisig, Martin
Shipley, Martin J
Vollenweider, Peter
Zins, Marie
Kawachi, Ichiro
Steptoe, Andrew
Mackenbach, Johan P
Vineis, Paolo
Kivimäki, Mika
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
title 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
title_full 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
title_fullStr 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
title_full_unstemmed 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
title_short 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
title_sort 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
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5368415/
https://www.ncbi.nlm.nih.gov/pubmed/28159391
http://dx.doi.org/10.1016/S0140-6736(16)32380-7
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