Literature DB >> 31625870

Deaths Attributable to High Body Mass in Brazil.

Fabiana M Rabacow1,2, Catarina M Azeredo3, Leandro F M Rezende4.   

Abstract

Our study estimated the proportion of deaths from major noncommunicable diseases (NCDs) that could be prevented in Brazil by reducing population-wide body mass index (BMI) to different counterfactual (optimally theoretical) scenarios. We calculated population-attributable fractions by using BMI data from a representative national survey and relative risks from a published meta-analysis. Reductions in population-wide BMI could prevent 30,715 to 168,431 deaths from NCDs per year in Brazil. Cardiovascular diseases were the most preventable causes of death (5.8%-31.5% deaths prevented). Policies are needed to reduce population-wide BMI in Brazil.

Entities:  

Mesh:

Year:  2019        PMID: 31625870      PMCID: PMC6824148          DOI: 10.5888/pcd16.190143

Source DB:  PubMed          Journal:  Prev Chronic Dis        ISSN: 1545-1151            Impact factor:   2.830


What is already known about this topic?

High body mass index (BMI) is among the major modifiable factors to prevent noncommunicable diseases (NCDs).

What is added by this report?

We estimated the proportion of deaths from major NCDs that can be prevented in Brazil by reducing population-wide BMI.

What are the implications for public health practice?

We found that reductions in population-wide BMI might prevent up to 25.3% of major NCD deaths and 14.9% of all deaths in Brazil. Our findings can help guide public health interventions and policies to prevent NCDs in Brazil.

Objective

The objective of this study was to estimate preventable deaths from major noncommunicable diseases (NCDs) in Brazil by reducing the population-wide body mass index (BMI) (26.6 kg/m2) (1) to the following counterfactual scenarios: 1) theoretical minimum risk exposure level, where adults have a BMI of 22.0 kg/m2; 2) reduction in 1.0 kg/m2 at population level; and 3) reduction of BMI to levels observed in the Brazilian population in 2002 and 2003 (24.6 kg/m2) to show the effect of the continuous increase in BMI over time (2).

Methods

We obtained BMI data from the National Health Survey, Pesquisa Nacional de Saúde (PNS), conducted in 2013 (2). PNS is the most recent survey using a representative sample of Brazilian adults. Participants were randomly selected in 3 stages: census tracts (primary sample units), households (secondary sample units), and household members aged 18 years or older (tertiary sample units). A total of 62,202 adults were interviewed in the final sample. Both body weight (in kg) and height (in cm) were objectively measured (3). We estimated BMI distribution (mean and standard deviation [SD], prevalence, and 95% confidence intervals [CIs] of overweight [25.0–29.9 kg/m2] and obesity [≥30 kg/m2]) by sex. We obtained relative risk (RR) estimates and 95% CIs from the Global BMI Mortality Collaboration meta-analyses (4). RRs were estimated from never-smokers who had no preexisting chronic diseases and excluded the first 5 years of follow-up to reduce confounding and reverse causality (4). We retrieved RR estimates per 5 units of BMI for all-cause, cardiovascular disease, respiratory disease, and cancer mortality. We retrieved number of deaths from cardiovascular disease (International Classification of Diseases, Tenth Revision [ICD-10] codes I00-I99 and R96) (5), respiratory disease (ICD-10 codes J00-J99), and cancer (ICD-10 codes C00-C97 and D00-D48) in Brazil in 2013 by sex and age group from the Brazilian Information System for Mortality (6). We calculated population attributable fractions (PAF) by sex by using the following equation (7): PAF = Where P(x) is the population distribution of BMI (mean and SD), P*(x) is the counterfactual distribution of BMI, RR(x) is the relative risk of NCD associated with BMI (per 1.0 kg/m2 increment), and dx indicates that the integration occurred with respect to the BMI level. We used a log-logit function to represent each RR value across BMI units (8). We performed data analysis in Stata version 15.0 (StataCorp, LLC).

Results

Overall mean BMI in Brazil increased from 24.6 kg/m2 in 2002 and 2003 to 26.6 kg/m2 in 2013. The mean BMI was 27.0 kg/m2 (SD, 5.5 kg/m2) in women and 26.2 kg/m2 (SD, 4.5 kg/m2) in men. Approximately 25% of women were obese, and 35% were overweight. The prevalence of obesity in men was 17%, and 40% were overweight. We estimated that reducing population-wide BMI to a theoretical minimum risk exposure level (22.0 kg/m2) could prevent approximately 168,431 deaths per year in Brazil. These deaths represented about 25.3% of major NCD deaths and 14.9% of all deaths that occurred in 2013. Most of these preventable deaths were from cardiovascular disease (106,307), followed by respiratory disease (33,471) and cancer (28,653) (Table).
Table

Numbers of Deaths Preventable by Reductions in BMI, by Sex, Counterfactual Scenario, and Causes of Death in Brazila

OutcomesTotal No. of DeathsTheoretical Minimum Risk Exposure Levelb
Reduction in 1.0 kg/m2 at Population Levelc
BMI Levels in 2002–2003d
PAF, %No. of Preventable DeathsPAF, %No. of Preventable DeathsPAF, %No. of Preventable Deaths
Cancer
Both193,93614.828,6532.54,9335.310,366
Men103,45913.313,7642.62,6844.74,850
Women90,47716.514,8902.52,2496.15,515
Cardiovascular disease
Both337,55931.5106,3075.819,52912.441,979
Men176,74428.951,0145.910,43811.019,514
Women160,81534.455,2935.79,09114.022,465
Respiratory disease
Both133,12425.133,4714.76,25310.013,376
Men69,14322.715,6904.83,3198.86,100
Women63,98127.817,7814.62,93411.47,276
Major NCD deathse
Both664,61925.3168,4314.630,7159.965,721
Men349,34623.080,4684.716,4418.730,464
Women315,27327.987,9634.514,27411.235,257
All-cause mortality
Both1,130,62414.9168,4312.730,7155.865,721
Men635,75112.780,4682.616,4414.830,464
Women494,87317.887,9632.914,2747.135,257

Abbreviations: BMI, body mass index; NCD, noncommunicable disease; PAF, population attributable fraction; SD, standard deviation.

Data sources: Brazilian Institute of Geography and Statistics (1), Brazilian Institute of Geography and Statistics (2), Di Angelantonio et al (4), Departamento de Informática do Sistema Único de Saúde (6).

Theoretical minimum risk exposure level was 22.0 kg/m2 (SD, 1.0 kg/m2) for both sexes.

Reduction in 1.0 kg/m2 at population level was 25.6 kg/m2 (SD, 5.1 kg/m2) for both sexes, 25.2 kg/m2 (SD, 4.5 kg/m2) for men, and 26.0 kg/m2 (SD, 5.5 kg/m2) for women.

BMI levels in 2002 and 2003 were 24.6 kg/m2 (SD, 4.3 kg/m2) for both sexes, 24.5 kg/m2 (SD, 3.8 kg/m2) for men, and 24.6 kg/m2 (SD, 4.8 kg/m2) for women.

Cardiovascular disease, cancer, and respiratory disease mortality.

Abbreviations: BMI, body mass index; NCD, noncommunicable disease; PAF, population attributable fraction; SD, standard deviation. Data sources: Brazilian Institute of Geography and Statistics (1), Brazilian Institute of Geography and Statistics (2), Di Angelantonio et al (4), Departamento de Informática do Sistema Único de Saúde (6). Theoretical minimum risk exposure level was 22.0 kg/m2 (SD, 1.0 kg/m2) for both sexes. Reduction in 1.0 kg/m2 at population level was 25.6 kg/m2 (SD, 5.1 kg/m2) for both sexes, 25.2 kg/m2 (SD, 4.5 kg/m2) for men, and 26.0 kg/m2 (SD, 5.5 kg/m2) for women. BMI levels in 2002 and 2003 were 24.6 kg/m2 (SD, 4.3 kg/m2) for both sexes, 24.5 kg/m2 (SD, 3.8 kg/m2) for men, and 24.6 kg/m2 (SD, 4.8 kg/m2) for women. Cardiovascular disease, cancer, and respiratory disease mortality. Reducing population-wide BMI in Brazil to levels observed during 2002 and 2003 (24.6 kg/m2) could prevent 65,721 deaths, representing 10.0% of deaths from major NCDs and 5.8% of all deaths. A reduction in 1.0 kg/m2 of population-wide BMI could prevent 30,715 deaths, representing 4.6% of deaths from major NCD and 2.7% of all deaths (Table).

Discussion

Approximately 25.3% of major NCD deaths and 14.9% of all deaths could be prevented each year in Brazil by reducing population-wide BMI. Other scenarios indicated that 4.6% of major NCD deaths could be avoided by reducing 1.0 kg/m2 of BMI and 10% of NCD deaths by reducing BMI to levels observed during 2002 and 2003. The reduction of BMI would have the greatest effect on cardiovascular disease deaths, which account for one-third of all deaths in Brazil (9). The World Health Organization Global Plan for 2025 involves a series of targets to reduce 25% of premature mortality from major NCDs (10), among which is halting the rise in obesity rates. Our study considered more ambitious scenarios of BMI reduction, which can be a challenge. Obesity increase is primarily driven by obesogenic environments. To reverse this trend, some in the scientific community, especially in the fields of nutrition and physical activity, have suggested modifying obesogenic environments through fiscal and regulatory actions (eg, taxation, labeling, marketing of ultraprocessed products) (11). Our study has limitations. Although BMI is a useful indicator of body fat, it does not differentiate between lean and adipose tissues (12). Furthermore, we used RR estimates from a meta-analysis that included data from 4 continents but not Brazil (4). These RR estimates were not stratified by potential effect modifiers (eg, sex, age). Whether these RR estimates are applicable to Brazilians is unknown. On the other hand, by using RR estimates for never-smokers who had no preexisting chronic diseases and excluding the first 5 years of follow-up, we reduced reverse causation bias and achieved more reliable estimates of deaths attributable to BMI (4). By reducing population-wide BMI in Brazil, 30,715 to 168,431 deaths per year from NCDs could be prevented. Policies aimed to reduce obesogenic environments are needed to decrease population-wide BMI in Brazil.
  7 in total

1.  The relationship between BMI and percent body fat, measured by bioelectrical impedance, in a large adult sample is curvilinear and influenced by age and sex.

Authors:  S Meeuwsen; G W Horgan; M Elia
Journal:  Clin Nutr       Date:  2010-03-31       Impact factor: 7.324

2.  [National Health Survey in Brazil: design and methodology of application].

Authors:  Célia Landmann Szwarcwald; Deborah Carvalho Malta; Cimar Azeredo Pereira; Maria Lucia França Pontes Vieira; Wolney Lisboa Conde; Paulo Roberto Borges de Souza Júnior; Giseli Nogueira Damacena; Luiz Otávio Azevedo; Gulnar Azevedo E Silva; Mariza Miranda Theme Filha; Cláudia de Souza Lopes; Dália Elena Romero; Wanessa da Silva de Almeida; Carlos Augusto Monteiro
Journal:  Cien Saude Colet       Date:  2014-02

3.  The global obesity pandemic: shaped by global drivers and local environments.

Authors:  Boyd A Swinburn; Gary Sacks; Kevin D Hall; Klim McPherson; Diane T Finegood; Marjory L Moodie; Steven L Gortmaker
Journal:  Lancet       Date:  2011-08-27       Impact factor: 79.321

4.  Mortality due to noncommunicable diseases in Brazil, 1990 to 2015, according to estimates from the Global Burden of Disease study.

Authors:  Deborah Carvalho Malta; Elisabeth França; Daisy Maria Xavier Abreu; Rosângela Durso Perillo; Maíra Coube Salmen; Renato Azeredo Teixeira; Valeria Passos; Maria de Fátima Marinho Souza; Meghan Mooney; Mohsen Naghavi
Journal:  Sao Paulo Med J       Date:  2017 May-Jun       Impact factor: 1.044

5.  Global burden of cancer attributable to high body-mass index in 2012: a population-based study.

Authors:  Melina Arnold; Nirmala Pandeya; Graham Byrnes; Prof Andrew G Renehan; Gretchen A Stevens; Prof Majid Ezzati; Jacques Ferlay; J Jaime Miranda; Isabelle Romieu; Rajesh Dikshit; David Forman; Isabelle Soerjomataram
Journal:  Lancet Oncol       Date:  2014-11-26       Impact factor: 41.316

6.  Comparative quantification of health risks conceptual framework and methodological issues.

Authors:  Christopher JL Murray; Majid Ezzati; Alan D Lopez; Anthony Rodgers; Stephen Vander Hoorn
Journal:  Popul Health Metr       Date:  2003-04-14

7.  Body-mass index and all-cause mortality: individual-participant-data meta-analysis of 239 prospective studies in four continents.

Authors:  Emanuele Di Angelantonio; Shilpa Bhupathiraju; David Wormser; Pei Gao; Stephen Kaptoge; Amy Berrington de Gonzalez; Benjamin Cairns; Rachel Huxley; Chandra Jackson; Grace Joshy; Sarah Lewington; JoAnn Manson; Neil Murphy; Alpa Patel; Jonathan Samet; Mark Woodward; Wei Zheng; Maigen Zhou; Narinder Bansal; Aurelio Barricarte; Brian Carter; James Cerhan; George Smith; Xianghua Fang; Oscar Franco; Jane Green; Jim Halsey; Janet Hildebrand; Keum Jung; Rosemary Korda; Dale McLerran; Steven Moore; Linda O'Keeffe; Ellie Paige; Anna Ramond; Gillian Reeves; Betsy Rolland; Carlotta Sacerdote; Naveed Sattar; Eleni Sofianopoulou; June Stevens; Michael Thun; Hirotsugu Ueshima; Ling Yang; Young Yun; Peter Willeit; Emily Banks; Valerie Beral; Zhengming Chen; Susan Gapstur; Marc Gunter; Patricia Hartge; Sun Jee; Tai-Hing Lam; Richard Peto; John Potter; Walter Willett; Simon Thompson; John Danesh; Frank Hu
Journal:  Lancet       Date:  2016-07-13       Impact factor: 79.321

  7 in total
  4 in total

1.  Cardiovascular Statistics - Brazil 2021.

Authors:  Gláucia Maria Moraes de Oliveira; Luisa Campos Caldeira Brant; Carisi Anne Polanczyk; Deborah Carvalho Malta; Andreia Biolo; Bruno Ramos Nascimento; Maria de Fatima Marinho de Souza; Andrea Rocha De Lorenzo; Antonio Aurélio de Paiva Fagundes Júnior; Beatriz D Schaan; Fábio Morato de Castilho; Fernando Henpin Yue Cesena; Gabriel Porto Soares; Gesner Francisco Xavier Junior; Jose Augusto Soares Barreto Filho; Luiz Guilherme Passaglia; Marcelo Martins Pinto Filho; M Julia Machline-Carrion; Marcio Sommer Bittencourt; Octavio M Pontes Neto; Paolo Blanco Villela; Renato Azeredo Teixeira; Roney Orismar Sampaio; Thomaz A Gaziano; Pablo Perel; Gregory A Roth; Antonio Luiz Pinho Ribeiro
Journal:  Arq Bras Cardiol       Date:  2022-01       Impact factor: 2.000

2.  The future costs of cancer attributable to excess body weight in Brazil, 2030-2040.

Authors:  Leandro F M Rezende; Thainá Alves Malhão; Rafael da Silva Barbosa; Arthur Orlando Correa Schilithz; Ronaldo Corrêa Ferreira da Silva; Luciana Grucci Maya Moreira; Paula Aballo Nunes Machado; Bruna Pitasi Arguelhes; Maria Eduarda Leão Diogenes Melo
Journal:  BMC Public Health       Date:  2022-06-21       Impact factor: 4.135

3.  Reception of Dietary and Other Health-Related Lifestyle Advice to Address Non-communicable Diseases in a Primary Care Context: A Mixed-Method Study in Central Argentina.

Authors:  Raúl E Sánchez Urbano; Ariel Paredes; Frank R Vargas Chambi; Pedro Guedes Ruela; David E V Olivares; Benicio T Souza Pereira; Sandaly O S Pacheco; Fabio J Pacheco
Journal:  Front Nutr       Date:  2021-01-27

4.  Time trends and projected obesity epidemic in Brazilian adults between 2006 and 2030.

Authors:  José Matheus Estivaleti; Juan Guzman-Habinger; Javiera Lobos; Catarina Machado Azeredo; Rafael Claro; Gerson Ferrari; Fernando Adami; Leandro F M Rezende
Journal:  Sci Rep       Date:  2022-07-26       Impact factor: 4.996

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.