Factors associated with childhood overweight and obesity in Uganda: a national survey

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Study Justification:
– Childhood obesity is a global public health problem that is increasing in low- and middle-income countries, including Uganda.
– Understanding the factors associated with childhood obesity and overweight is crucial for developing effective prevention and intervention strategies.
– This study aims to explore the factors associated with childhood obesity and overweight in Uganda using data from the Uganda Demographic and Health Survey (UDHS) of 2016.
Highlights:
– The prevalence of overweight and obesity among children under 5 years in Uganda was 5.0%, with overweight at 3.9% and obesity at 1.1%.
– Factors associated with childhood obesity and overweight included the mother’s nutritional status, sex of the child, child’s age, and region of residence.
– Boys were more likely to be overweight or obese compared to girls.
– Younger children and those with overweight or obese mothers were more likely to have obesity or overweight.
– Children from the western region of Uganda were more likely to be overweight or obese compared to those from the North.
Recommendations:
– Develop targeted interventions to address childhood obesity and overweight, considering the identified risk factors.
– Implement nutrition education programs for mothers and caregivers, focusing on healthy eating habits and maintaining a healthy weight.
– Promote physical activity among children through school-based programs and community initiatives.
– Strengthen healthcare systems to provide early detection and management of childhood obesity and overweight.
– Conduct further research to explore additional factors contributing to childhood obesity and overweight in Uganda.
Key Role Players:
– Ministry of Health: Responsible for developing and implementing policies and programs related to childhood obesity prevention and management.
– Education Ministry: Involved in promoting nutrition education and physical activity in schools.
– Healthcare professionals: Provide healthcare services, including screening, counseling, and treatment for childhood obesity and overweight.
– Non-governmental organizations (NGOs): Support community-based interventions and advocacy efforts.
– Community leaders and parents: Play a crucial role in promoting healthy lifestyles and creating supportive environments for children.
Cost Items for Planning Recommendations:
– Development and implementation of nutrition education programs: Includes materials, training, and monitoring.
– School-based physical activity programs: Requires resources for equipment, training, and supervision.
– Healthcare services: Funding for screening, counseling, and treatment of childhood obesity and overweight.
– Research funding: Support for further studies on childhood obesity and overweight in Uganda.
– Community-based interventions: Resources for awareness campaigns, workshops, and community engagement activities.

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong because it is based on a nationally representative cross-sectional study conducted using validated questionnaires. The study used a large sample size of 4338 children less than 5 years. Multivariable logistic regression was used to determine factors associated with childhood obesity and overweight. The prevalence of overweight and obesity was reported with 95% confidence intervals. The abstract also provides information on the sampling process, data collection methods, and statistical analysis. To improve the evidence, the abstract could include more details on the validated questionnaires used and the specific demographic, health, and nutrition indicators collected in the survey.

Background: Childhood obesity is an emerging public health problem globally. Although previously a problem of high-income countries, overweight and obesity is on the rise in low- and middle-income countries. This paper explores the factors associated with childhood obesity and overweight in Uganda using data from the Uganda Demographic and Health Survey (UDHS) of 2016. Methods: We used Uganda Demographic and Health Survey (UDHS) 2016 data of 4338 children less than 5 years. Multistage stratified sampling was used to select study participants and data were collected using validated questionnaires. Overweight and obesity were combined as the primary outcome. Children whose BMI z score was over two were considered as overweight while those with a BMI z score greater than three were considered as obese. We used multivariable logistic regression to determine factors associated with obesity and overweight among children under 5 years of age in Uganda. Results: The prevalence of overweight and obesity was 5.0% (217/4338) (95% CI: 4.3–5.6), with overweight at 3.9% (168/4338: 95% CI: 3.2–4.3) and obesity at 1.1% (49/4338: 95% CI: 0.8–1.5). Mother’s nutritional status, sex of the child, and child’s age were associated with childhood obesity and overweight. Boys were more likely to be overweight or obese (aOR = 1.81; 95% CI 1.24 to 2.64) compared to girls. Children who were younger (36 months and below) and those with mothers who were overweight or obese were more likely to have obesity or overweight compared to those aged 49–59 months and those with underweight mothers respectively. Children from the western region were more likely to be overweight or obese compared to those that were from the North. Conclusion: The present study showed male sex, older age of the children, nutritional status of the mothers and region of residence were associated with obesity and overweight among children under 5 years of age.

UDHS 2016 was a nationally representative cross-sectional study conducted using validated questionnaires. UDHS is a periodical survey that is carried out every 5 years as part of the MEASURE DHS global survey and collects Information on demographic, health and nutrition indicators. The survey was conducted between June 2016 and December 2016 using stratified two-stage cluster sampling design that resulted in the random selection of a representative sample of 20,880 households [22, 23]. The households were randomly selected in two stages: clusters (or enumeration areas) were drawn in the first stage and then a count within each cluster led to a list of households from which was conducted a systematic sampling with equal probability [22]. A detailed explanation of the sampling process is available in the UDHS 2016 report [22]. A systematic random draw was conducted amongst the selected households to choose households whose women/ mothers’ and children’s anthropometric measurements (weight and height) were taken. Anthropometric measurements were done on a subsample of about one-third of households [22]. Weight was taken with an electronic SECA 878 flat scale while a Shorr Board® measuring board was used for height [22]. Children less than 24 months were measured lying down. Our secondary analysis excluded children whose BMI z-score were missing or was recorded as “Flagged cases”. Flagged cases were defined as more than 5 SD above or below the standard population median (Z-scores) based on the WHO Child Growth Standards [24]. In the children’s dataset, a final weighted sample of 4338 was analyzed after excluding flagged cases and those with missing values. Written permission to access the whole UDHS database was obtained through DHS program website at the address https://dhsprogram.com/. The BMI z-scores based on WHO 2006 reference population were used to assess obesity and overweight [25]. Children whose BMI z score was over two were considered as overweight and those with a BMI z score greater than three were considered as obese [25]. Independent variables were categorized into children, parents’ and household characteristics that were chosen basing on previous studies [25–27] and availability in the UDHS data base. Maternal nutritional status (underweight defined as body mass index (BMI) less than (<) 18.50 kg/m2, normal between 18.50 kg/m2 and 24.99 kg/m2 and overweight or obesity between 25.0 kg/m2 and above 30.0 kg/m2) [23, 28], mother’s level of education (no education, primary, secondary and tertiary), father’s level of education (no education, primary, secondary and tertiary), mother’s age (15–24, 25–34, 35–49), mother’s marital status (married and not married), mother’s working status (working and not working). Mother’s marital status was excluded from the multivariable model because data on father’s level of education was missing for children whose mothers were not married (separated, widowed and never been in a formal or informal relationship). Wealth index is a measure of relative household economic status and was calculated by DHS from information on household asset ownership using Principal Component Analysis (categorized into quintiles: richest, richer, middle poorer and poorest) [22], type of residence (urban and rural), number of household members (less than 5 and 5 and above), sex of household head (female and male) and region (North, East, West and Central). Age of the child in months (0–12, 13–24, 24–36, 37–48, 49–59), sex of the child (male and female) and stunting status (categorized as stunted and not stunted) defined as height-for-age Z-score is below minus two standard deviations (− 2 SD) from the median of the reference population [22]. We used the SPSS analytic software version 25.0 Complex Samples package for this analysis. Weighted data was used to account for the unequal probability sampling in different strata. Frequency distributions were used to describe the background characteristics of the children. Pearson’s chi-squared tests were used to investigate the significant differences between childhood obesity and overweight and the explanatory variables. Bivariable logistic regression was also conducted and we present crude odds ratio (COR), 95% confidence interval (CI) and p-values. Variables included in our multivariable model were determined a priori during literature review [29]. All variables in the model were assessed for collinearity, which was considered present if the variables had a variance inflation factor (VIF) greater than 10. However, none of the factors had a VIF above 3. Sensitivity analyses were done excluding underweight children so that a comparison was made between overweight and obese children and normal weight children. We also conducted sensitivity analyses excluding children less than 2 years since some literature suggests that BMI is not an appropriate index for that age group.

Based on the provided information, here are some potential innovations that could improve access to maternal health:

1. Mobile Health (mHealth) Applications: Develop mobile applications that provide pregnant women and new mothers with access to important health information, reminders for prenatal and postnatal care appointments, and educational resources.

2. Telemedicine Services: Implement telemedicine services that allow pregnant women in remote or underserved areas to consult with healthcare professionals through video calls, reducing the need for travel and improving access to medical advice.

3. Community Health Workers: Train and deploy community health workers who can provide maternal health education, support, and basic healthcare services to pregnant women and new mothers in their communities.

4. Maternal Health Vouchers: Introduce voucher programs that provide pregnant women with subsidized or free access to essential maternal health services, such as prenatal care visits, delivery services, and postnatal care.

5. Maternal Health Clinics on Wheels: Establish mobile clinics equipped with medical professionals and necessary equipment to provide maternal health services in rural or underserved areas on a regular basis.

6. Maternal Health Hotlines: Set up toll-free hotlines staffed by trained healthcare professionals who can provide guidance, answer questions, and offer support to pregnant women and new mothers.

7. Maternal Health Education Campaigns: Launch targeted education campaigns to raise awareness about the importance of maternal health, proper nutrition during pregnancy, and the benefits of prenatal and postnatal care.

8. Maternal Health Financing Initiatives: Develop innovative financing mechanisms, such as microinsurance or savings schemes, to help pregnant women and their families afford the costs associated with maternal healthcare.

9. Maternal Health Monitoring Systems: Implement digital systems that track and monitor the health status of pregnant women, allowing healthcare providers to identify high-risk cases and provide timely interventions.

10. Maternal Health Partnerships: Foster collaborations between healthcare providers, government agencies, non-profit organizations, and community leaders to improve coordination and ensure comprehensive maternal health services are available to all women.
AI Innovations Description
Based on the information provided, the recommendation to improve access to maternal health would be to implement targeted interventions that address the factors associated with childhood obesity and overweight in Uganda. These interventions should focus on the following areas:

1. Maternal nutritional status: Provide education and support for pregnant women and new mothers to improve their nutritional status. This can include promoting healthy eating habits, ensuring access to nutritious food, and addressing any underlying health conditions that may contribute to obesity or overweight.

2. Child’s age: Develop age-specific interventions that target children at different stages of development. This can include promoting physical activity and healthy eating habits that are appropriate for each age group.

3. Sex of the child: Recognize that boys may be more susceptible to obesity and overweight and tailor interventions accordingly. This can include promoting physical activity and healthy eating habits that specifically address the needs of boys.

4. Region of residence: Identify regions with higher prevalence of childhood obesity and overweight and implement targeted interventions in those areas. This can include community-based programs, education campaigns, and access to healthcare services.

5. Parental education: Provide education and support for parents, particularly mothers, on the importance of healthy lifestyles for their children. This can include workshops, counseling, and resources that promote healthy eating, physical activity, and overall well-being.

6. Socioeconomic status: Address socioeconomic disparities that may contribute to childhood obesity and overweight. This can include providing access to affordable healthy food options, promoting physical activity in low-income communities, and addressing barriers to healthcare services.

By implementing these targeted interventions, it is possible to improve access to maternal health and reduce the prevalence of childhood obesity and overweight in Uganda.
AI Innovations Methodology
Based on the provided information, here are some potential recommendations to improve access to maternal health:

1. Strengthening healthcare infrastructure: Investing in the development and improvement of healthcare facilities, particularly in rural and underserved areas, can enhance access to maternal health services. This includes ensuring the availability of skilled healthcare professionals, essential medical equipment, and necessary medications.

2. Increasing community awareness and education: Implementing community-based programs that focus on raising awareness about maternal health issues, promoting healthy behaviors during pregnancy, and providing education on the importance of antenatal and postnatal care can help improve access to maternal health services.

3. Enhancing transportation and logistics: Addressing transportation barriers by improving road infrastructure, providing transportation subsidies or vouchers, and establishing referral systems can facilitate access to healthcare facilities for pregnant women, especially in remote areas.

4. Expanding telemedicine and mobile health solutions: Utilizing technology, such as telemedicine and mobile health applications, can enable pregnant women to access healthcare services remotely. This can include virtual consultations, remote monitoring of vital signs, and access to educational resources.

To simulate the impact of these recommendations on improving access to maternal health, a methodology could include the following steps:

1. Define the indicators: Identify specific indicators that measure access to maternal health, such as the number of antenatal care visits, percentage of skilled birth attendance, or maternal mortality rate.

2. Collect baseline data: Gather existing data on the selected indicators before implementing the recommendations. This can be obtained from national surveys, health records, or other relevant sources.

3. Implement the recommendations: Introduce the recommended interventions, such as strengthening healthcare infrastructure, community awareness programs, transportation improvements, and telemedicine solutions.

4. Monitor and collect data: Continuously monitor the implementation of the recommendations and collect data on the selected indicators. This can be done through surveys, health facility records, or other data collection methods.

5. Analyze the data: Analyze the collected data to assess the impact of the recommendations on the selected indicators. Compare the post-intervention data with the baseline data to determine any changes or improvements.

6. Evaluate the results: Evaluate the results of the analysis to determine the effectiveness of the recommendations in improving access to maternal health. Identify any gaps or areas for further improvement.

7. Adjust and refine: Based on the evaluation results, make adjustments and refinements to the recommendations as needed. This iterative process allows for continuous improvement and optimization of the interventions.

It is important to note that the specific methodology may vary depending on the context and available resources. Consulting with experts in the field and utilizing established research methodologies can further enhance the accuracy and reliability of the simulation.

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