Poor nutrition for under-five children from poor households in Ethiopia: Evidence from 2016 Demographic and Health Survey

listen audio

Study Justification:
– Undernutrition among under-five children in Ethiopia is a prominent public health concern.
– The government of Ethiopia and other stakeholders have committed to overcoming the impact of malnutrition through a transformational plan.
– This study aims to show the magnitude of undernutrition among under-five children and identify factors associated with it.
Highlights:
– The prevalence of stunting, underweight, and wasting among under-five children in Ethiopia is high.
– Factors such as sex of the child, age, recent experience of diarrhea, household wealth index, and administrative regions contribute to undernutrition.
– Children born from overweight mothers and educated mothers have a lower risk of undernutrition.
Recommendations:
– Implementation of strategies and policies that focus on improving the socioeconomic and educational status of the community should be sustained.
– Immediate attention is needed to address factors contributing to undernutrition among under-five children to achieve national and global nutrition targets.
Key Role Players:
– Government of Ethiopia
– Ministry of Health
– Ministry of Education
– Non-governmental organizations (NGOs) working in the field of nutrition
– Community leaders and volunteers
– Health workers and educators
Cost Items for Planning Recommendations:
– Education and awareness campaigns
– Training programs for health workers and educators
– Nutritional supplements and food programs
– Infrastructure development for healthcare and education facilities
– Research and monitoring activities
– Data collection and analysis
– Program evaluation and impact assessment

The strength of evidence for this abstract is 8 out of 10.
The evidence in the abstract is strong, but there are some areas for improvement. The study used a large sample size and a rigorous methodology, including multilevel logistic regression analysis. The prevalence of undernutrition among under-five children in Ethiopia was reported with 95% confidence intervals. However, to improve the evidence, the abstract could provide more details on the sampling method and the representativeness of the sample. Additionally, it would be helpful to include information on the limitations of the study and potential biases. Overall, the evidence is strong, but these suggestions can further enhance its quality.

Background: Ethiopia is commonly affected by drought and famine, and this has taken quite a toll on citizens of the country, particularly the under-five children. Undernutrition among under-five children in Ethiopia is a prominent public health concern, and it lacked attention for decades. However, the government of Ethiopia, together with other stakeholders, committed to overcoming the impact of malnutrition through the transformational plan. Here we show the magnitude of undernutrition among under-five children and the factors predicting the achievement of global nutrition targets set for 2025 at the World Health Assembly. Methods: Ethiopian Demographic and Health Survey (EDHS) 2016 was used for this study. A total of 9494 child-mother pairs were included in this analysis. The nutritional status indicators (Height-for-age, Weight-for-height and Weight-for-age) of children were measured and categorized based on the World Health Organization child growth standards. A multilevel logistic regression model adjusted for clusters and sampling weights were used to identify factors associated with stunting, underweight, and wasting. The independent variables were assessed by calculating the odds ratios with 95% confidence interval (CI). Result: The prevalence of stunting was 38.3% (95% CI: 36.4% to 40.2%), under-weight 23.3% (95%CI: 21.9% to 24.9%) and wasting 10.1% (95%, CI: 9.1% to 11.2%). Sex of the child (male), children older than 24 months, recent experience of diarrhea, household wealth index (poorest), and administrative regions (Tigray, Amhara and developing regions) had a higher risk of undernutrition. On the other hand, children born from overweight mothers and educated mother (primary, secondary or higher) had a lower risk of undernutrition. Conclusion: The burden of undernutrition is still considerably high in Ethiopia. Implimentation of strategies and policies that focus on improving the socioeconomic educatiional status of the community need to be sustained. Generally, actions targeted on factors contributing to undernutrition among under-five children demands immediate attention to achieve national and global nutrition target. Copyright:

This analysis was based on data from the Ethiopian Demographic and Health Survey (EDHS) 2016conducted by Central Statistical Agency (CSA) of Ethiopia and ICF international conducted the survey. We extracted the required variables for the study from IPUMS DHS [16] All nine regional states and two administrative cities in Ethiopia were included in the survey. Data were collected from January 18, 2016, to June 27, 2016. The sample was stratified and pulled in two-stages. The sampling frame for the first-stage was based on the Ethiopia Population and Housing Census (PHC) conducted in 2007. In this stage, a total of 645 enumeration areas (EAs) (443 in rural areas and 202 in urban areas) were selected with probability proportional to EA size. In the second stage, using equal probability, systematic selection 28 households were selected from each cluster. For all children younger than five years and their mother’s in the selected household, anthropometric data were collected. In this study we analysed data that the survey team obtained after they screened the children for eligibility critera and excluded some children (12%) from final report because of the misclassification and errors. Finally, 8,757 unweighted (9,464 weighted) mother-child pairs were considered for this study. Fig 1 shows the selection process of the mother-child pair at the household level. The details of the sampling and methodology of the EDHS 2016 were provided in the report of the survey[17]. The CSA received the ethical clearance for the survey (EDHS 2016) from Ethiopian Health and Nutrition Research Institute (EHNRI) Review Board, the National Research Ethics Review Committee (NRERC) at the Ministry of Science and Technology, the Institutional Review Board of ICF International, and the CDC. The Central statistical agency obtained written informed consents from the parents of the children for the data obtained from the children, and the permissions for variables regarded with households were granted from the respondents. Voluntary participation was ensured during interviews. We received the survey data from Measure DHS upon submission of a proposal. After data access is authorized from Measure DHS, we have maintained the confidentiality. The dependent variables were stunting (height-for-age), underweight (weight-for-age), and wasting (weight-for-height). Measurements of height and weight were obtained for under-five children in the selected households. We extracted the raw variable exprecing the standard diviation of each measurement and then we classified the findings to get each undernutrition. Classifications of child undernutrition were made based on WHO Child Growth Standards[18]. Stunting: expressed as a binary outcome, category 0 not stunted if height-for-age Z (HAZ) standard deviations (SD) is greater than −2 and category 1 stunted if Z (HAZ) less than −2SD. Underweight: categorized as 0 no underweight if the weight for age Z (WAZ) is greater than −2 SD and category 1 underweight if Z (WAZ) less than −2SD. Wasting: expressed as category 0 no wasting if the weight-for-height Z (WHZ) is higher than −2 SD and category 1 wasting if Z (WHZ) less than −2SD. We have also reported the prevalence of moderate (between -2SD and -3SD) and severe (less than -3SD) for stunting, underweight and wasting respectively. The independent variables were identified based on a conceptual framework developed by UNICEF[19] and previous studies in the area of undernutrition among children (Fig 2). The variables were grouped into three categories which include: community factors, household and environmental factors, and individual factors (Fig 2). Community level factors involve the place of residence (urban-rural status), and administrative regions. The administrative regions were further grouped into six categories based on socioeconomic status and urbanity for this study. Afar, Somali, Benshangul Gumuz, and Gambela are commonly known as developing regional states in Ethiopia because of their lower socioeconomic status and thus grouped. Administrative regions with a predominantly urban population, such as Addis Ababa, Dire Dawa and Harari were also grouped together. However, Oromia, SNNPR, Tigray and Amhara were not grouped. Household and environmental factors included socio-demographic factors (household wealth index, mother’s education, work status, marital status and the number of under-five children in the house), environmental factors (source of drinking water and type of toilet facility) and media exposure (reading newspaper, listening to the radio and watching television). The individual factors included maternal factors (age and body mass index) and child factors (gender, age, the recent history of diarrhea and acute respiratory infections). Data analysis was performed after adjusting for sampling design (stratification and clustering) using ‘svy’ command in Stata 14.2. Descriptive characteristics were computed and presented by nutritional status (underweight, stunting and wasting). We reported the prevalence of underweight, stunting and wasting along with confidence interval. Generalized linear latent and mixed models (gllamm)[20] with the logit link and binomial family that adjusted for clusters and sampling weights were used to identify factors associated with stunting, underweight, and wasting. We first conducted bivariable regressions with each potential risk factor, and the decision to retain the potential risk factor in the final multivariable model was made based on P-value < 0.25. Three multilevel multivariable logistic regression models, one model for each form of undernutrition (stunting, underweight and wasting) were constructed. The adjusted risk of independent variables was assessed by calculating the odds ratios with 95% confidence interval and those with p-value 0.05 were reported from the final model.

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

1. Mobile Health (mHealth) Solutions: Develop and implement mobile applications or SMS-based systems that provide pregnant women and new mothers with important health information, reminders for prenatal and postnatal care appointments, and access to teleconsultations with healthcare providers.

2. Community Health Workers: Train and deploy community health workers to provide education, counseling, and basic healthcare services to pregnant women and new mothers in remote or underserved areas. These workers can also facilitate referrals to higher-level healthcare facilities when necessary.

3. Telemedicine: Establish telemedicine networks that connect healthcare providers in urban areas with pregnant women and new mothers in rural or remote locations. This allows for remote consultations, diagnosis, and treatment, reducing the need for travel and improving access to specialized care.

4. Maternal Health Vouchers: Implement voucher programs that provide pregnant women with subsidized or free access to essential maternal healthcare services, including antenatal care, skilled birth attendance, and postnatal care. This can help overcome financial barriers to accessing quality care.

5. Maternal Waiting Homes: Establish and support maternal waiting homes near healthcare facilities in rural areas. These homes provide accommodation for pregnant women who live far from healthcare facilities, allowing them to stay closer to the facility as they approach their due date, reducing the risk of complications during childbirth.

6. Transportation Support: Develop transportation initiatives, such as community-based ambulance services or transportation vouchers, to ensure that pregnant women can reach healthcare facilities quickly and safely when in labor or in need of emergency care.

7. Health Education and Awareness Campaigns: Conduct targeted health education campaigns to raise awareness about the importance of maternal health, including antenatal care, nutrition, and hygiene practices. These campaigns can be delivered through various channels, such as radio, television, community meetings, and mobile messaging.

8. Strengthening Health Infrastructure: Invest in improving and expanding healthcare facilities, particularly in rural areas, to ensure that pregnant women have access to well-equipped and staffed facilities for safe deliveries and emergency obstetric care.

9. Maternity Waiting Village Model: Implement the maternity waiting village model, where pregnant women from remote areas are provided with accommodation near a healthcare facility in the weeks leading up to their due date. This allows them to receive regular antenatal care and be closer to emergency obstetric services when needed.

10. Public-Private Partnerships: Foster collaborations between the government, private sector, and non-profit organizations to leverage resources, expertise, and innovation in improving access to maternal health services. This can involve initiatives such as public-private partnerships for the construction and management of healthcare facilities or the provision of mobile health services.
AI Innovations Description
Based on the provided description, it appears that the recommendation to improve access to maternal health in Ethiopia would be to implement strategies and policies that focus on improving the socioeconomic and educational status of the community. This recommendation is based on the findings that factors such as household wealth index (poorest), administrative regions (Tigray, Amhara, and developing regions), and lack of education among mothers were associated with a higher risk of undernutrition among under-five children.

By addressing these factors and working towards improving the socioeconomic and educational status of the community, it is likely that access to maternal health services will also improve. This can be achieved through initiatives such as providing financial support for families in poverty, increasing access to education for women, and implementing programs that promote nutrition and health education.

It is important to note that this recommendation should be implemented in conjunction with other interventions aimed at improving maternal health, such as increasing the availability and quality of healthcare facilities, training healthcare providers, and raising awareness about the importance of maternal health.
AI Innovations Methodology
Based on the provided information, it seems that the focus of the study is on undernutrition among under-five children in Ethiopia. However, the request is to consider innovations for potential recommendations to improve access to maternal health. It is important to note that the information provided does not directly address maternal health. Therefore, I will provide a general methodology to simulate the impact of recommendations on improving access to maternal health, rather than specific recommendations based on the given data.

Methodology to Simulate the Impact of Recommendations on Improving Access to Maternal Health:

1. Identify the current barriers: Conduct a comprehensive assessment to identify the existing barriers to accessing maternal health services. This can include factors such as geographical distance, lack of healthcare facilities, cultural beliefs, financial constraints, and limited availability of skilled healthcare providers.

2. Develop potential recommendations: Based on the identified barriers, develop potential recommendations to address each barrier. These recommendations can include strategies such as improving infrastructure, increasing the number of healthcare facilities, training and deploying more skilled healthcare providers, implementing community-based interventions, and addressing cultural and social norms that hinder access to maternal health services.

3. Quantify the impact: Use available data and evidence to estimate the potential impact of each recommendation on improving access to maternal health. This can involve analyzing data from previous interventions, conducting surveys or interviews with relevant stakeholders, and using statistical modeling techniques to estimate the potential changes in access to maternal health services.

4. Simulate the impact: Utilize simulation models to simulate the impact of the recommendations on improving access to maternal health. These models can take into account various factors such as population demographics, geographical distribution, healthcare infrastructure, and the effectiveness of the proposed interventions. By simulating different scenarios, it is possible to estimate the potential outcomes and identify the most effective recommendations.

5. Evaluate and refine: Evaluate the simulated impact of the recommendations and assess their feasibility, cost-effectiveness, and sustainability. Refine the recommendations based on the simulation results and stakeholder feedback.

6. Implement and monitor: Implement the recommended interventions and closely monitor their implementation and impact. Continuously collect data to assess the actual impact of the interventions on improving access to maternal health services.

By following this methodology, it is possible to simulate the potential impact of recommendations on improving access to maternal health. However, it is important to note that the specific recommendations would need to be developed based on a thorough understanding of the context and the specific barriers to accessing maternal health services in Ethiopia.

Yabelana ngalokhu:
Facebook
Twitter
LinkedIn
WhatsApp
Email