|Year : 2021 | Volume
| Issue : 1 | Page : 9-13
Prevalence of obesity and associated factors in Benue State, Nigeria: A population-based study
Damaris Amarachukwu Osunkwo1, Patrick M Nguku2, Amina Mohammed3, Chukwuma David Umeokonkwo4, Moreen Kamateeka2, Mohammed Ibrahim5, Ibrahim Bekshak Kefas6, Oladimeji S Abolade7, Hulda Ijeoma Nwokeukwu8, Ayuba Ibrahim Zoakah6
1 Department of Medicine, National Hospital; African Field Epidemiology Network, Nigeria Country Office, Abuja, Nigeria
2 African Field Epidemiology Network, Nigeria Country Office, Abuja, Nigeria
3 Department of Family Health, National Bureau of Statistics, Abuja; Department of Community Medicine, Jos University Teaching Hospital, Jos, Nigeria
4 African Field Epidemiology Network, Nigeria Country Office, Abuja; Department of Community Medicine, Alex Ekwueme Federal University Teaching Hospital, Abakaliki, Ebonyi State, Nigeria
5 Department of Community Medicine, Ahmadu Bello University, Zaria, Nigeria
6 Department of Community Medicine, Jos University Teaching Hospital, Jos, Nigeria
7 Department of Demography and Social Statistics, National Bureau of Statistics, Abuja, Nigeria
8 Federal Medical Centre, Umuahia, Nigeria
|Date of Submission||12-Jul-2019|
|Date of Acceptance||24-Aug-2020|
|Date of Web Publication||13-Mar-2021|
Dr. Damaris Amarachukwu Osunkwo
Department of Medicine, National Hospital Abuja, Abuja
Source of Support: None, Conflict of Interest: None
| Abstract|| |
Background: The prevalence of obesity has risen to over 650 million adults in 2016, and accounts for 41 million deaths globally. It is a major contributor to the burden of noncommunicable diseases. We determined the prevalence and associated factors of obesity to inform policy decisions toward developing robust prevention and management strategies. Materials and Methods: We conducted a population-based cross-sectional study in July 2017 among 1265 adults in urban and rural communities in Benue State. We used multistage sampling technique in selecting the participants. The WHO standardized and validated tool were used to collect information on sociodemographic and anthropometric measurements. We calculated age standardized prevalence of obesity and determined factors associated with obesity using logistic regression at 5% level of significance. Results: The age standardized prevalence of obesity was 11.1% (rural 4.2%, urban 14.3%). The odds for obesity was higher among females (adjusted odds ratio [aOR]: 3.4; 95% confidence interval [CI]: 2.27–4.99), those with tertiary education (aOR: 3.3; 95% CI: 1.61–6.95), married (aOR: 2.1; 95% CI: 1.37–3.36), and those residing in urban areas (aOR: 3.0; 95% CI: 1.73–5.05) compared to rural dwellers. Conclusions: The prevalence of obesity was high among adults in Benue State. It is more prevalent among females, married, educated, and urban dwellers. Interventions targeted at healthy lifestyle choices should be directed at these populations for effective control.
| Abstract in French|| |
Contexte: La prévalence de l'obésité est passée à plus de 650 millions d'adultes en 2016 et représente 41 millions de décès dans le monde. C'est un majeur contribuant au fardeau des maladies non transmissibles. Nous avons déterminé la prévalence et les facteurs associés de l'obésité pour éclairer les décisions politiques vers l'élaboration de stratégies solides de prévention et de gestion. Matériel et méthodes: Nous avons réalisé une analyse transversale basée sur la population étude réalisée en juillet 2017 auprès de 1265 adultes des communautés urbaines et rurales de l'État de Benue. Nous avons utilisé une technique d'échantillonnage à plusieurs degrés pour sélectionner les participants. L'outil normalisé et validé de l'OMS a été utilisé pour collecter des informations sur les mesures sociodémographiques et anthropométriques. Nous avons calculé la prévalence standardisée selon l'âge de l'obésité et déterminé les facteurs associés à l'obésité en utilisant une régression logistique à un niveau de 5% de importance. Résultats: La prévalence de l'obésité normalisée selon l'âge était de 11,1% (rurale 4,2%, urbaine 14,3%). Les probabilités d'obésité étaient plus élevées chez femmes (rapport de cotes ajusté [aOR]: 3,4; intervalle de confiance à 95% [IC]: 2,27–4,99), celles ayant fait des études supérieures (aOR: 3,3; IC à 95%: 1,61–6,95), mariés (aOR: 2,1; IC à 95%: 1,37–3,36) et ceux résidant dans les zones urbaines (aOR: 3,0; IC à 95%: 1,73–5,05) par rapport aux habitants des zones rurales. Conclusions: La prévalence de l'obésité était élevée chez les adultes de l'État de Benue. Il est plus répandu chez les femmes mariées, instruites et citadins. Les interventions ciblées sur les choix de modes de vie sains devraient être dirigées vers ces populations pour un contrôle efficace.
Keywords: Age standardization, Benue, obesity, population-based, prevalence
|How to cite this article:|
Osunkwo DA, Nguku PM, Mohammed A, Umeokonkwo CD, Kamateeka M, Ibrahim M, Kefas IB, Abolade OS, Nwokeukwu HI, Zoakah AI. Prevalence of obesity and associated factors in Benue State, Nigeria: A population-based study. Ann Afr Med 2021;20:9-13
|How to cite this URL:|
Osunkwo DA, Nguku PM, Mohammed A, Umeokonkwo CD, Kamateeka M, Ibrahim M, Kefas IB, Abolade OS, Nwokeukwu HI, Zoakah AI. Prevalence of obesity and associated factors in Benue State, Nigeria: A population-based study. Ann Afr Med [serial online] 2021 [cited 2022 Jan 17];20:9-13. Available from: https://www.annalsafrmed.org/text.asp?2021/20/1/9/311172
| Introduction|| |
Obesity is a major risk factor for cardiovascular disease, diabetes mellitus (DM), musculoskeletal disorders and cancers which all constitute a significant proportion of all noncommunicable diseases (NCDs). It is also associated with poorer mental health outcomes and reduced quality of life. NCDs account for an estimated 41 million (71%) of all deaths globally. Fifteen million people die from NCDs between the ages of 30 and 69 years annually and over 85% of these “premature” deaths occur in low- and middle-income countries including Nigeria. The global burden of NCDs is rapidly increasing, and Africa is the most affected region in the world. Obesity and overweight are second only to elevated blood pressure as the leading metabolic risk factor globally in terms of attributable deaths. Globally, the prevalence of obesity has exponentially increased to an estimated over 650 million (13%) of adults 18 years and older, and more than 124 million children as well as adolescents in 2016.
The epidemic of obesity is driven by economic growth, rapid urbanization, and sedentary lifestyle. Nutritional transition is occurring globally and is characterized by changes from healthy nutritional diets to unhealthy energy-dense foods, high in fat. This transition, alongside epidemiological and demographic transition is contributing toward increased prevalence and incidence of obesity. Obesity occurs due to difference in the calories consumed and calories expended.
In Nigeria, obesity, systemic hypertension, and DM and alongside their complications accounted for 27% of all deaths in 2008, and this is increasing rapidly annually. Yet, NCDs in Nigeria, have been comparatively neglected, partly due to donor-driven funding priorities despite obesity being a principal cause of mortality in low- and middle-income countries. Obesity is preventable. The WHO “Global Action Plan” sets to achieve a 25% relative reduction in premature mortality from NCDs by 2025 and a halt in the rise of global obesity. An important step for countries to contribute toward achieving these global targets is to generate evidence to accurately describe the burden of this emerging epidemic of obesity to inform policy change and actions.
In Nigeria, the prevalence of obesity is of epidemic proportion, with more obese people in the urban than in rural settings. Although previous studies in the country have shown a rise in the incidence of obesity which has been attributed to the adoption of western diet and lifestyle patterns., We conducted this study to determine the prevalence obesity and its determinants to provide evidence that will inform policy decisions toward developing robust prevention and management strategies.
| Materials and Methods|| |
Study setting, population, and sampling technique
The study was conducted in Benue State Nigeria. The state is largely agrarian, and is tagged “food basket of the nation.” The study population included 1265 adults aged at least 18 years of age. We used multistage sampling method to recruit the participants. In stage one, a list of local government areas (LGA) in each senatorial district was made and stratified into rural and urban LGAs. One rural and one urban LGA were selected by balloting from each of the three senatorial districts. In stage two, a list of enumeration areas (EA) were made, and 33 EAs were selected by balloting using probability proportionate to size. In each EA, systematic sampling technique was used to select households for the study. In each household selected in stage three, a list of eligible adults was made and one eligible adult was selected by simple random sampling to participate in the study. The study was conducted from July to August 2017. Other details of the sampling and study setting have earlier been reported.
Study tool and data collection
We used a standardized and validated WHO STEPwise tool to collect information on participant's sociodemographic characteristics and anthropometric measurements. The anthropometric measurements were standing height, weight, and waist circumferences. We measured height without shoes and hat in an upright position with the aid of the stadiometer (ASCO height measuring scale floor model stadiometer). The height of the participants was measured to the nearest 0.1 cm. Validated electronic weighing scale (OMRON BF212), set to the nearest 0.1 kg was used to measure weight. Waist circumference was measured to the nearest 0.1 cm using measuring tape, placed directly over the skin or light clothing at the level of the midpoint in between the inferior margin of the last rib and iliac crest along the mid axillary line. Data were collected by trained research assistants.
Definition of terms
Body mass index (BMI, kg/m2) was calculated using the formula below, for each participant we used the weight in kilogram and height in meters.
We categorized the participants based on their BMI (underweight [BMI <18.5 kg/m2], normal weight [BMI 18.5–24.9 kg/m2], overweight [BMI 25–29.9 kg/m2], and obesity [BMI ≥30 kg/m2]). For the purpose of bivariate and multivariate analysis, we dichotomized BMI classification into two: BMI ≥30 kg/m2 as obese and BMI <30 kg/m2 as nonobese.
The analysis was done using Epi info version 7.2 (US CDC). We estimated the prevalence of obesity among the participants. We calculated age-specific standardization of the prevalence of obesity using the 2006 Benue State census population [Table 1]. We also calculated the standardized urban and rural prevalence of obesity in Benue [Table 2] and determined the relationship between sociodemographic characteristics and obesity using univariate logistic regression. The factors that were significant were modeled in a multivariable logistic regression at 5% level of significance. The adjusted odds ratio and the 95% confidence interval (CI) were reported.
|Table 2: Age-adjusted prevalence of obesity stratified by place of residence in Benue State|
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We obtained ethical approval from the National Health Research Ethics Committee of Nigeria Federal Ministry of Health (NHREC/01/01/2007-22/12/2016). Written informed consent was obtained from each participant.
| Results|| |
Among our respondents, 22.1% were overweight, 5.4% were underweight, and 59.1% were normal [Figure 1]. The prevalence of obesity was 13.5% among the respondents. However, after standardizing for age using Benue State population as the reference population, the age standardized prevalence of obesity was 11.1%. The urban and rural age standardized prevalence of obesity was 14.3% and 4.2%, respectively [Figure 2]. There is a statistically significant association between age, sex, tertiary education, marital status, occupation, and place of residence with obesity [P < 0.001, [Table 3]].
|Table 3: Relationship between sociodemographic characteristics with obesity among respondents in Benue state|
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The odds for obesity was 3.4 times higher among females (adjusted odds ratio [aOR]: 3.4; 95% CI: 2.27–4.99) compared to males. Those with tertiary education (aOR: 3.3; 95% CI: 1.61–6.95) had 3.3 times odds of having obesity compared with those with no formal education. The odds of being obese was twice higher among married (aOR: 2.1; 95% CI: 1.37–3.36) compared with unmarried. The odds for obesity was about 3 times greater among those in the urban (aOR: 3.0; 95% CI: 1.73–5.05) compared to those in the rural settings [Table 4].
|Table 4: Logistic regression showing sociodemographic predictors of obesity among respondents in Benue state|
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| Discussion|| |
The prevalence of obesity was generally high among the respondents. The prevalence was higher than earlier reported in Benue state and elsewhere in Nigeria. The high prevalence of obesity observed could probably be due to continued epidemiological transition ongoing in the population. The calculated age standardized prevalence of obesity was higher among urban than rural respondents. This could be attributed to the adoption of poorer nutritional habits and lifestyle choices. The higher prevalence of obesity observed in the urban compared to the rural dwellers has earlier been reported and attributed to sedentary lifestyle, and dietary options.,
Obesity was higher among females and among married respondents. It was also higher among the married females compared to the unmarried. These have been reported in earlier studies.,,,,,, This could be due to pregnancy and hormonal changes in females. It could also be associated with more involvement of males in physical activities compared to females. In addition, obesity is associated with wealth, beauty, good health strength, and respect among African women. This perspective of “healthy obesity” may fuel the epidemic and may also account for the lack of attention given to obesity.
Obesity increases with age with a slight decline after 60 years. Other studies reported similar findings.,, This may be due to changes occurring with advancing age. As people advance in age, they become less active physically. Physical inactivity has been associated with risk of obesity. However, the relationship between aging, physical inactivity, and obesity has not been fully understood. Obesity was higher among those with tertiary education compared to those with no formal education and has been reported. Those that had attained tertiary education were more likely to lead a sedentary lifestyle, more likely to be employed, live in urban area and eat westernized foods hence are more at risk of developing obesity compared to the uneducated that are more likely to engage in manual and unskilled work requiring more physical activity, less access to westernized food and hence less prone to obesity.
| Conclusions|| |
The prevalence of obesity was high among adults in Benue State, and it is more prevalent among females, married, educated, and urban residents. Policy and intervention should target these populations for effective control. The interventions should be targeted at younger people to help model their lifestyle and nutritional choices.
Financial support and sponsorship
Conflicts of interest
There are no conflicts of interest.
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[Figure 1], [Figure 2]
[Table 1], [Table 2], [Table 3], [Table 4]