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Abstract
Health professionals need a strong prediction system to reach appropriate disease diagnosis, particularly for under-five child with health problems like anemia. Diagnosis and treatment delay can potentially lead to devastating disease complications resulting in childhood mortality. However, the application of machine learning techniques using a large data set provides scientifically sounded information to solve such palpable critical health and health-related problems. Therefore, this study aimed to determine the predictors of anemia among under-5 year’s age children in Ethiopia using a machine learning approach. A cross-sectional study design was done using the Ethiopian Demographic and Health Survey 2016 data set. A two-stage stratified cluster sampling technique was employed to select the samples. The data analysis was conducted using Statistical Package for Social Sciences/SPSS version 25 and R-software. Data were derived from Ethiopian Demographic and Health Survey. Boruta algorism was applied to select the features and determine the predictors of anemia among under-5 years-old children in Ethiopia. The machine learning algorism showed that number of children, distance to health facilities, health insurance coverage, youngest child’s stool disposal, residence, mothers’ wealth index, type of cooking fuel, number of family members, mothers’ educational status and receiving rotavirus vaccine were the top ten important predictors for anemia among under-five children. Machine-learning algorithm was applied to determine the predictors of anemia among under- 5 year’s age children in Ethiopia. We have identified the determinant factors by conducting a feature importance analysis with the Boruta algorithm. The most significant predictors were number of children, distance to health facility, health insurance coverage, youngest child’s stool disposal, residence, mothers’ wealth index, and type of cooking fuel. Machine learning model plays a paramount role for policy and intervention strategies related to anemia prevention and control among under-five children.
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Details
1 Wollo University, Department of Health Informatics, School of Public Health, College of Medicine and Health Sciences, Dessie, Ethiopia (GRID:grid.467130.7) (ISNI:0000 0004 0515 5212)
2 Woldia University, Department of Public Health, College of Health Sciences, Woldia, Ethiopia (GRID:grid.507691.c) (ISNI:0000 0004 6023 9806)
3 Wollo University, Department of Information Technology, College of Informatics, Dessie, Ethiopia (GRID:grid.467130.7) (ISNI:0000 0004 0515 5212)
4 Woldia University, Department of Pediatrics and Child Health Nursing, School of Nursing, College of Medicine and Health Sciences, Woldia, Ethiopia (GRID:grid.507691.c) (ISNI:0000 0004 6023 9806)