Background. Underweight is one of the paramount major worldwide health problems, and it traces a big number of populations from infancy to old age. This study aimed to analyze the trends and predictors of change in underweight among children under five years in Ethiopia. Method. The data for this study were accessed from three Ethiopian Demographic and Health Survey data sets 2005, 2011, and 2016. The trend was examined separately for the periods 2005-2011, 2005-2016, and 2011-2016. Multivariate decomposition analysis of change in underweight was employed to answer the major research question of this study. The technique employed the output from the logistic regression model to parcel out the observed difference in underweight into components, and STATA 14 was utilized for data management and analysis. Result. Perceiving the overall trend, the rate of underweight was decreased from 38% in 2005 to 24% in 2016. The decomposition analysis results revealed that, about 12.60% of declines in underweight have been explained by the difference in population characteristics or endowments (E) over the study period. The size of the child at birth, husband’s education, women’s education, and household wealth index contributed significantly to the compositional decline in underweight. Conclusion. The magnitude of underweight among children under five years indicates a remarkable decline over the last ten years in Ethiopia. In this study, two-twelfth of the overall decrease in underweight among children under five years over the decade was due to the difference in characteristics between 2005 and 2016. Continuing to educate the population and boost the population’s economy is needed on the government side in Ethiopia.
This study was based on a secondary analysis of cross-sectional population data from Ethiopia Demographic Health Surveys (EDHS) 2005, 2011, and 2016 to investigate trends and the factors associated with underweight among children under five years in Ethiopia. In addition, in Ethiopia, four consecutive surveys were conducted in the cross-sectional years of 2000, 2005, 2011, and 2016. Similar to other demographic and health surveys, the principal objective of the Ethiopian Demographic and Health Survey (EDHS) was to offer current and consistent data on fertility and family planning behavior, child mortality, adult and maternal mortality, children’s nutritional status, and use of maternal and child health services, as well as data, which were collected on knowledge and attitudes of women and men about sexually transmitted diseases and HIV/AIDS and evaluated potential exposure to the risk of HIV infection by exploring high-risk behaviors and condom use. The sampling frame used for the 2016 EDHS was the Ethiopia Population and Housing Census (EPHC), which was conducted in 2007 by the Ethiopia Central Statistical Agency. The census frame is a complete list of 84,915 enumeration areas (EAs) created for the 2007 PHC. An EA is a geographical area covering on average 181 households. The sampling frame contains information about the EA location, type of residence (urban or rural), and an estimated number of residential households. Except for EAs in the six zones of the Somali region, each EA has accompanying cartographic materials. These materials delineate geographic locations, boundaries, main access, and landmarks in or outside the EA that help identify the EA. In Somali, a cartographic frame was used in three zones where sketch maps delineating the EA geographic boundaries were available for each EA; in the remaining six zones, satellite image maps were used to provide a map for each EA. The outcome variable for this study was underweight measured based on WHO guidelines, children under five years with weight-for-age Z-score of less than two. Weight-for-age is a composite index of height-for-age and weight-for-height that accounts for both acute and chronic undernutrition. Children whose weight-for-age Z-score is below minus two standard deviations (−2 SD) from the median of the reference population are classified as underweight, while weight-for-age Z-score is above minus two standard deviations (−2 SD) considered as normal weight. Children whose weight-for-age Z-score is below minus three standard deviations (−3 SD) from the median are considered severely underweight. The explanatory variables of interest in this study were as follows: child’s age (months), child’s sex, living area (urban/rural), mother’s education level, and household socioeconomic status, place of delivery, antenatal care service during pregnancy, birth order, duration of breastfeeding, size of child at birth, BMI of women’s, occupational status, vaccination status, and religion. This study employed a trend analysis of underweight among children under five years and decomposition of changes in underweight. The trend in underweight was analyzed using descriptive analyses, stratified by region, urban-rural residence, and selected sociodemographic characteristics. The trend was examined separately for the periods 2005–2011, 2005−2016, and 2011−2016. Data from EDHS 2005, 2011, and 2016 were appended together after extracting important variables for trend and decomposition analysis. Multivariate decomposition analysis of change in underweight was employed to answer the major research question of this study. The purpose of the decomposition analysis was to identify the sources of changes in underweight in the last decade. Both changes in population composition and population behavior related to underweight are important. This method is used for several purposes in demography, economics, and other fields. The present analysis focused on how underweight responds to changes in children’s characteristics at adult age and how these factors form differences across surveys conducted at different times. Both the difference in composition (Endowments) of the population and the difference in the effect of characteristics (coefficients) between the surveys are important to know the factors contributing to the decrease in underweight over the last ten years. The multivariate decomposition analysis for nonlinear response utilizes the output from the logistic regression model (Binary outcome) to parcel out the observed difference in underweight into components. The difference can be attributed to compositional changes between surveys (i.e., the difference in characteristics) and changes in the effects of selected explanatory variables (i.e., the difference in the coefficients due to changes in population behavior). Logit-based decomposition analysis technique was used to identify factors contributing to the change in underweight rate over the last decades. The observed difference in underweight between different surveys is additively decomposed into a characteristic (or endowment) component and a coefficient (or effect of characteristics) component. STATA 14 was utilized for data management and analysis, and STATA command with mvdcmp package was employed throughout the process of analysis. All calculations presented in this manuscript were weighted for sampling probabilities and nonresponse using the weighted factor included in the EDHS data. In the process of testing statistical significance or associations, with 95% confidence interval calculations), complex sampling procedures were considered. The detailed sampling procedure was presented in the full EDHS report [23, 29, 30]. For linear relations, the dependent variable is a function of a linear combination of predictors and regression coefficients, where Y = F (X β), where Y denotes the N × 1 dependent variable, X is an N × K matrix of independent variables, and β is a K × 1 vector of coefficients, where A and B represent EDHS 2016 and 2005, respectively. The mean difference in Y between groups A and B can be decomposed as For our logistic regression, the logit or log-odds of underweight are taken as The E component refers to the part of the differential owing to differences in endowments or characteristics. The C component refers to that part of the differential attributable to differences in the coefficients of effect [31].
N/A