Journal of Obesity & Metabolic Syndrome

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J Obes Metab Syndr 2021; 30(2): 155-162

Published online June 30, 2021 https://doi.org/10.7570/jomes20110

Copyright © Korean Society for the Study of Obesity.

The Risk of Multimorbidity Associated with Overweight and Obesity: Data from the Brazilian National Health Survey 2013

Thaynã Ramos Flores1, Ana Paula dos Santos Rodrigues2, Rosália Garcia Neves3, Sandro Rodrigues Batista4, Doralice Severo da Cruz Teixeira5, Erika Aparecida da Silveira4, Deborah Carvalho Malta6, Bruno Pereira Nunes1,7

1Postgraduate Program in Epidemiology, Federal University of Pelotas, Pelotas; 2Superintendence of Health Surveillance, Goiás State Health Department, Goiás; 3The Third Regional Health Coordination, Pelotas; 4Faculty of Medicine, Goiás Federal University, Goiânia; 5São Paulo Municipal Health Department, Sao Paulo; 6Department of Maternal and Child Nursing and Public Health, School of Nursing, Federal University of Minas Gerais, Belo Horizonte; 7Department of Nursing in Collective Health and the Postgraduate Program in Nursing at the Federal University of Pelotas, Pelotas, Brazil

Correspondence to:
Thaynã Ramos Flores
https://orcid.org/0000-0003-0098-1681
Postgraduate Program in Epidemiology, Federal University of Pelotas, Marechal Deodoro, 1160, 3rd floor, Pelotas
96020-220, Brazil
Tel: +55-53-3284-1300
Fax: +55-53-3284-1300
E-mail: floresrthayna@gmail.com

Received: October 8, 2020; Reviewed : November 27, 2020; Accepted: February 16, 2021

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

Background: An increase in body mass index (BMI) is strongly associated with the occurrence of multimorbidity, and overweight and obesity are contributing factors for the increase in morbidities. Thus, the present study aimed to evaluate the occurrence of multimorbidity and associated factors in Brazilian adults with and without overweight or obesity.
Methods: This was a cross-sectional population-based study with data from the National Health Survey (2013) including individuals aged 18 years or older. Multimorbidity was defined as having ≥2 diseases from the list of 15 morbidities on the self-reported questionnaire (self-reported medical diagnosis in life). BMI was categorized as: ≤24.9 kg/m2 (low weight and eutrophy), 25.0–29.9 kg/m2 (overweight), and ≥30.0 kg/m2 (obesity). Sex, age, and schooling were the covariates. Poisson regression was used for crude and adjusted analyses for the variables representing access to health services estimating the prevalence ratio (PR) and 95% confidence interval (CI).
Results: The total sample consisted of 59,402 individuals. The prevalence of multimorbidity was 25% overall and was higher among overweight (25.8%) and obese (32.5%) individuals. Obese women 60 years or older had a higher occurrence of multimorbidity (80%). In the adjusted analysis, a lower prevalence of multimorbidity was observed among those with higher educational levels in all BMI classifications: low weight/eutrophy, PR=0.66 (95% CI, 0.58–0.75); overweight, PR=0.62 (95% CI, 0.56–0.70); and obesity, PR=0.75 (95% CI, 0.67–0.85).
Conclusion: A higher prevalence of multimorbidity was found among obese women who were 60 years of age or older. Schooling was an associated factor regardless of BMI.

Keywords: Multimorbidity, Overweight, Obesity, Body mass index, Prevalence

Overweight and obesity have increased alarmingly in recent decades. The overall prevalence of overweight, defined as body mass index (BMI) ≥25.0 kg/m2, increased by 27.5% between 1980 and 2013, from 857 million to 2.1 billion individuals.1 The increase in BMI is associated with increased mortality and various health problems, such as cardiovascular disease and stroke, which are mainly mediated by high blood pressure, cholesterol, and blood glucose.2 In addition, obesity is associated with a reduction in life expectancy, worsening in quality of life, higher unemployment, lower productivity, and social disadvantage.3

Overweight and obesity contribute to the occurrence of concomitant diseases in individuals.4 The coexistence of one or more morbidities is called multimorbidity and has been increasingly studied because it is associated with higher mortality, reduced functional capacity, polypharmacy, reduction in quality of life, worse self-rated health, and lower continuity of care.5-8 In recent years, there has been an increase in the prevalence of multimorbidity in several countries, probably due to the improved longevity of populations related to advances in medicine and preventive aspects in public health. It is worth highlighting that multimorbidity occurs not only in older individuals, but also in younger individuals.9-11 In Brazil, the prevalence of multimorbidity in adults was estimated at 22.2% for two or more morbidities and 10.2% for three or more morbidities.12 Obesity is associated with a higher prevalence of multimorbidity;11,13-15 however, there are few studies evaluating overweight, using the BMI cutoff point of ≥25.0 kg/m2.

The epidemiological transition and, consequently, the higher frequency of chronic noncommunicable diseases in the population plays a determining role in the prevalence of multimorbidity. Health data from 28 countries showed that those with low to moderate incomes experienced a rise in multimorbidity with increasing age and a positive nonlinear association with income.16 This same study observed an inverse association between multimorbidity and education, especially in young people when compared to individuals aged 60 years or older.16 In Brazilian men and women over the age of 60, there was a higher occurrence of morbidities (five or more) in individuals with lower incomes compared to those with higher incomes, and the same trend was observed for educational level when considering the occurrence of three or more, four or more, and five or more morbidities.17 Additionally, a systematic review and meta-analysis of 24 cross-sectional studies found a 64% greater chance of multimorbidity (odds ratio [OR], 1.64; 95% confidence interval [CI], 1.41–1.91) in individuals of low compared to high educational level; however, there was a high degree of heterogeneity in the studies. Deprivation has been consistently associated with increased risk of multimorbidity.18 The relationship between multimorbidity and sociodemographic factors and inequalities in individuals with BMI ≥25.0 kg/m2 is still unknown.

Identifying the prevalence of multimorbidity according to overweight and obesity in the Brazilian population and the associated inequalities is important in developing more effective approaches that address the needs of each group of individuals. An increase in BMI is strongly associated with the occurrence of multimorbidity, and overweight and obesity are contributing factors for the increase in morbidities.14,15 Thus, the present study aimed to evaluate the occurrence of multimorbidity and associated factors in Brazilian adults with and without overweight/obesity.

This was a cross-sectional, population-based study with data from the National Health Survey (Pesquisa Nacional de Saúde [PNS]) conducted in 2013 by the Brazilian Institute of Geography and Statistics (IBGE) and the Ministry of Health in Brazil.19,20 The sample is representative of residents of permanent households, located in urban or rural areas, in the five major geographical regions, 27 federation units, capitals, and other municipalities. The selection of the PNS sample was carried out in three stages: the first stage selected the census tracts, followed by the second stage which selected the households, and finally the third stage which selected individuals aged 18 years or older. Data collection was performed by trained interviewers using handheld computers called PDAs (personal digital assistants). More details can be found in the methodological study.19,20

We included all individuals at least 18 years of age who had information for the 15 morbidities that were evaluated and the anthropometric measurements required for BMI calculation (i.e., weight and height). To evaluate multimorbidity, a list containing the 15 morbidities assessed by the individual’s report of receiving a medical diagnosis was used. Morbidities were identified through the question, “Has any doctor already diagnosed you with...,” and the following diseases and risk factors were listed: hypertension; hypercholesterolemia; depression; diabetes; arthritis or rheumatism; bronchitis, asthma, or wheezing; work-related musculoskeletal disorders; cancer; heart problems; stroke; chronic renal failure; other lung disease; chronic obstructive pulmonary disease; and any other chronic disease. In the case of other mental health illness, the question was “Has a doctor or mental health professional (psychiatrist or psychologist) ever diagnosed you with another mental illness?” In the case of a spinal column problem, the question was “Do you have any chronic column or neck problem, low back pain, sciatica, vertebra or disc problem?” Multimorbidity was assessed by the cutoff point of two or more morbidities.21-23 Among women, high blood pressure episodes and diabetes only during pregnancy were not considered morbidities.

The independent variables used in this study were: sex (male/female); age in full years (dichotomized as: 18–59 years and 60 years or more), and schooling in years (categorized as: no instruction, incomplete primary education, complete elementary and incomplete high school, and complete high school until higher education). For adjustment purposes, the following variables related to health aspects were included: possession of health insurance (no/yes), coverage by the Family Health Strategy (FHS; no/yes), continuity of care explanation (no/yes), and hospitalization in the last year (no/ yes). The main independent variable used to stratify the sample of individuals with multimorbidity was the BMI, calculated using the weight (kg) and height squared (in meters), which were both measured at the time of the interview. BMI was categorized according to the cutoff points of the World Health Organization:24 low weight and eutrophy, ≤24.9 kg/m2; overweight, 25.0–29.9 kg/m2; and obesity, ≥30.0 kg/m2.

The database was obtained from the IBGE website (http://www.ibge.gov.br/home). Statistical analyses were carried out using Stata version 15.0 (StataCorp., College Station, TX, USA), considering the sample design of the study (using the svy command). Descriptive analysis was performed, obtaining variable prevalence. All analyses were stratified for BMI. Poisson regression was used for the crude and adjusted analyses between multimorbidity and independent variables,25 estimating the prevalence ratios (PR) and their respective 95% CI, in addition to P-values for heterogeneity and linear trend (schooling). The analyses were performed using a hierarchical model; the variables included in the first level were sex, age, and schooling, and those included in the second level were the variables of health services: possession of health insurance, FHS coverage, continuity of care, and hospitalization in the last year. Variables with P-values that were lower than 0.20 were retained in the model, controlling for possible confounders at the same level and the level above. Associations with P-values <0.05 were considered statistically significant. Furthermore, the margins and marginsplot commands were used to present differences in the prevalence of multimorbidity according to BMI, stratified for sex and age.

To ensure the stratification of the analyses for the BMI variable, an interaction test was performed for the association between the outcome (multimorbidity) and the independent variables, testing the interaction for the third variable (BMI). For this test, in addition to the P-value ≤0.10, the effect measures were considered.

The project was submitted to the National Research Ethics Commission and approved under protocol number 10853812.7.0000. 0008. All participants signed free and informed consent that ensured data confidentiality.

The total sample consisted of 59,402 individuals for whom information on diseases and BMI was available; of these, 14,291 individuals had multimorbidity. Overall, the prevalence of multimorbidity (≥2 diseases) was 25% (95% CI, 24.4%–25.6%). The prevalence of multimorbidity according to BMI varied, being 20.2% (95% CI, 19.4%–21.0%) for those individuals with low weight/eutrophy, 25.8% (95% CI, 24.8%–26.7%) for those with overweight, and 32.5% (95% CI, 31.2%–33.8%) for those with obesity. Regarding the characteristics of the total sample, the majority (52.9%) were female, 18.0% were 60 years or older, and about 45.5% had the highest level of education (complete high school to higher education). Similar proportions were also observed when the sample was stratified according to BMI among those individuals who had multimorbidity (Table 1).

Among the individuals classified as overweight and obese, the prevalence of diseases varied, with hypertension being the most frequent, reaching 33.9% among obese individuals (Fig. 1). The prevalence of each disease, according to BMI classification, is shown in Supplementary Table 1. Fig. 2 presents the prevalence of multimorbidity according to BMI, adjusted for sex and age, showing a tendency to increase in multimorbidity with increasing BMI. For women with obesity and over the age of 60 years, the prevalence of multimorbidity was around 80%.

In the crude analysis between multimorbidity and the independent variables, stratified by BMI, it can be observed that all variables were statistically associated with multimorbidity. In the adjusted analysis, in all strata of BMI, it was possible to observe a higher prevalence of multimorbidity among women and those aged 60 years or older and a lower prevalence in individuals with higher educational levels (Table 2).

Multimorbidity reached a quarter of the population and was higher among overweight and obese individuals. Considering the PNS sample, it is estimated that approximately 36,000 individuals overall had multimorbidity, 14,293 with overweight and 11,368 with obesity. In the analyses stratified by BMI, multimorbidity was higher among women, individuals over the age of 60 years, and individuals with a lower educational level.

The positive associations between multimorbidity and overweight/obesity, as well as the directions evidenced, are in accordance with the hypotheses that were investigated by this study, which were also observed in the relevant literature.26-28 Another study conducted with PNS data found that different groups of chronic diseases were associated with high BMI.29 In addition to BMI, other ways to classify obesity have been studied in association with multimorbidity; for example, an assessment of body fat percentage (% bodyfat) showed that adult populations with high percentages of body fat carry a higher risk of multimorbidity than those with higher BMI.28

In this study, when the chronic diseases that made up the multimorbidity construct were evaluated, hypertension presented the most greatest percentage difference. Some studies have identified hypertension as the most prevalent of the morbidities evaluated among individuals with higher BMI.26,27,30 In addition, these results emphasize the findings of Guimarães et al.,31 which indicate that weight control has a positive relationship with more suitable blood pressure measurements.

Considering sex and age, the findings showed that women with overweight and obesity, over the age of 60 years, presented a higher prevalence of multimorbidity (reaching 80%), which is in contrast with the results found by Zhang et al.,30 that the higher multimorbidity prevalence was observed among Chinese men over the age of 60 years. Nevertheless, there is a consensus on the positive association between multimorbidity and female sex, since it is measured by medical diagnosis in most surveys.32 In this context, the variables used for the adjustments were selected for their well-established relationships with both multimorbidity and BMI.32

This study points out the importance of monitoring as well as managing chronic diseases, with emphasis on obesity in women over the age of 60 years. While there is evidence demonstrating that the occurrence of chronic diseases increases with age, these conditions should not be attributed only to aging, due to the important component related to the presence of obesity.4,11,14 A study conducted in Finland found a 1.6- to 1.8-fold increase in the risk among individuals with obesity, both men and women, of having a stroke and hospitalization for any cardiovascular disease.33,34 Furthermore, obese individuals have an increased risk (1.5- to 2.2-fold) of developing diabetes according to data from a study conducted with 16 prospective cohorts from the United States and Europe, showing that the risk of cardiometabolic multimorbidity increases with BMI.27

As has been demonstrated in the general population, this study showed an association between multimorbidity and educational level, with a lower prevalence observed in more educated individuals across all BMI strata. Studies carried out in low- to moderate-income countries have consistently demonstrated the association between a lower educational level and the increased occurrence of multimorbidity.16,35 According to an analysis using PNS data, individuals with 1 to 8 years of schooling were more likely to have multimorbidity, with an OR of 1.40 (95% CI, 1.32–1.49) for ≥2 diseases and an OR of 1.58 (95% CI, 1.45–1.72) for ≥3 morbidities, compared to subjects with ≥12 years of schooling.12

There are practical implications related to the findings of this study. A higher prevalence of diseases such as diabetes, arthritis and rheumatism, depression, high cholesterol, column problems, and hypertension was observed among obese individuals. In addition, a higher prevalence of multimorbidity was also identified among obese women over the age of 60 years. These findings draw attention to measures aimed at addressing morbidities and obesity as different conditions, but which have a strong relationship. In a temporal sequence, overweight and obesity should be considered as conditions that contribute to the emergence or aggravation of chronic diseases, for example.14,27

Some limitations of this study should be mentioned. First, there is the possibility of underestimating the multimorbidity estimate because, with the exception of depression, all other diseases were self-reported from a previous medical diagnosis. Although there are studies that validated the information reported by the interviewee considering the medical diagnosis, such as in reporting hypertension,36 it is known that self-reported information may contain some bias. However, as this study was interested in evaluating the association between multimorbidity and overweight, it is believed that this underestimation may have been diluted.

In this study, it was observed that one in four individuals presented with multimorbidity, and this proportion was significantly higher among overweight and obese individuals. The occurrence of multimorbidity increased with a higher BMI. We highlight the high prevalence of multimorbidity in obese women over the age of 60 years, as well as the high occurrence of hypertension among obese individuals. The individual’s educational level was an independent factor of BMI, with a lower prevalence of multimorbidity among individuals with higher schooling.

Study concept and design: TRF; acquisition of data: TRF and BPN; analysis and interpretation of data: TRF, APSR, and BPN; drafting of the manuscript: TRF, APSR, and BPN; critical revision of the manuscript: all authors; statistical analysis: TRF and BPN; administrative, technical, or material support: BPN and DCM.

Fig. 1. Prevalence of chronic diseases stratified by body mass index (BMI). National Health Survey, 2013 (n= 59,402). COPD, chronic obstructive pulmonary disease; WMSD, work-related musculoskeletal disorders.
Fig. 2. Prevalence of multimorbidity according to body mass index (BMI), adjusted for sex and age (adults, 18–59 years; elderly, ≥ 60 years). National Health Survey, 2013 (n= 59,402).

Description of the general sample and of individuals with multimorbidity when stratified by BMI (National Health Survey Brazil, 2013)

Variable Multimorbidity P *

General sample (n = 59,402) Low weight/eutrophy (n = 4,390) Overweight (n = 5,437) Obesity (n = 4,410)
Sex < 0.001
Male 25,920 (47.1) 1,578 (45.6) 1,850 (45.6) 1,179 (45.1)
Female 34,282 (52.9) 2,812 (54.4) 3,587 (54.4) 3,231 (54.9)
Age (full years) < 0.001
18–59 49,025 (82.0) 2,583 (80.9) 3,231 (80.6) 2,828 (79.6)
≥ 60 11,177 (18.0) 1,807 (19.1) 2,206 (19.4) 1,582 (20.4)
Schooling (in years) < 0.001
No instruction 9,434 (13.7) 1,066 (16.8) 1,183 (14.3) 868 (15.1)
Incomplete primary school 14,649 (25.3) 1,305 (27.7) 1,664 (28.6) 1,499 (30.7)
Complete elementary school and incomplete high school 9,215 (15.5) 484 (13.6) 692 (15.5) 586 (15.5)
Complete high school to higher education 26,904 (45.5) 1,535 (41.9) 1,898 (41.6) 1,457 (38.7)
Multimorbidity ( ≥ 2 diseases) < 0.001
No 45,911 (75.0) 21,056 (79.8) 16,158 (74.2) 7,951 (67.5)
Yes 14,291 (25.0) 4,390 (20.2) 5,437 (25.8) 4,410 (32.5)

Values are presented as number (%). Low weight/eutrophy, BMI ≤ 24.9 kg/m2; Overweight, BMI 25.0–29.9 kg/m2; Obesity, BMI ≥ 30.0 kg/m2.

*Chi-square test for heterogeneity between independent variables and BMI in individuals who had multimorbidity.

BMI, body mass index; %, prevalence according to the sampling design (svy).

Prevalence of multimorbidity according to independent variables and crude and adjusted analyses stratified by BMI (National Health Survey Brazil, 2013)

Variable Multimorbidity (%)

Low weight/eutrophy (n = 4,387) Overweight (n = 5,437) Obesity (n = 4,410)



PR crude (95% CI) PRadj (95% CI) PR crude (95% CI) PRadj (95% CI) PR crude (95% CI) PRadj (95% CI)
Sex P < 0.001* P < 0.001* P < 0.001* P < 0.001* P < 0.001* P < 0.001*
Male 1.00 1.00 1.00 1.00 1.00 1.00
Female 1.54 (1.42–1.67) 1.48 (1.36–1.61) 1.58 (1.47–1.69) 1.49 (1.39–1.60) 1.40 (1.28–1.52) 1.32 (1.21–1.43)
Age (full years) P < 0.001* P < 0.001* P < 0.001* P < 0.001* P < 0.001* P < 0.001*
18–59 1.00 1.00 1.00 1.00 1.00 1.00
≥ 60 3.04 (2.79–3.31) 2.45 (2.22–2.71) 2.86 (2.68–3.05) 2.36 (2.19–2.55) 2.36 (2.19–2.54) 2.04 (1.88–2.21)
Schooling (in years) P < 0.001 P < 0.001 P < 0.001 P < 0.001 P < 0.001 P < 0.001
No instruction 1.00 1.00 1.00 1.00 1.00 1.00
Incomplete primary school 0.92 (0.82–1.03) 1.07 (0.96–1.19) 0.87 (0.78–0.95) 1.00 (0.91–1.09) 1.09 (0.98–1.22) 1.18 (1.06–1.31)
Complete elementary school and incomplete high school 0.51 (0.44–0.60) 0.73 (0.62–0.85) 0.56 (0.49–0.64) 0.75 (0.66–0.86) 0.68 (0.58–0.80) 0.89 (0.76–1.04)
Complete high school to higher education 0.52 (0.46–0.59) 0.66 (0.58–0.75) 0.50 (0.45–0.55) 0.62 (0.56–0.70) 0.59 (0.53–0.66) 0.75 (0.67–0.85)

Low weight/eutrophy, BMI ≤ 24.9 kg/m2; Overweight, BMI 25.0–29.9 kg/m2; Obesity, BMI ≥ 30.0 kg/m2.

*Wald test for heterogeneity; Wald test for linear trend.

BMI, body mass index; PR, prevalence ratio; CI, confidence interval; PRadj, prevalence ratio adjusted for sex, age, and schooling, plus health insurance, coverage by Family Health Strategy, continuity of care, and hospitalization in the last year.

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