Title
Ensemble Machine Learning Model to Predict the Waterborne Syndrome
Abstract
The COVID-19 epidemic has highlighted the significance of sanitization and maintaining hygienic access to clean water to reduce mortality and morbidity cases worldwide. Diarrhea is one of the prevalent waterborne diseases caused due to contaminated water in many low-income countries with similar living conditions. According to the latest statistics from the World Health Organization (WHO), diarrhea is among the top five primary causes of death worldwide in low-income nations. The condition affects people in every age group due to a lack of proper water used for daily living. In this study, a stacking ensemble machine learning model was employed against traditional models to extract clinical knowledge for better understanding patients' characteristics; disease prevalence; hygienic conditions; quality of water used for cooking, bathing, and toiletries; chemicals used; therapist's medications; and symptoms that are reflected in the field study data. Results revealed that the ensemble model provides higher accuracy with 98.90% as part of training and testing phases when experimented against frequently used J48, Naive Bayes, SVM, NN, PART, Random Forest, and Logistic Regression models. Managing outcomes of this research in the early stages could assist people in low-income countries to have a better lifestyle, fewer infections, and minimize expensive hospital visits.
Year
DOI
Venue
2022
10.3390/a15030093
ALGORITHMS
Keywords
DocType
Volume
waterborne disease, classification algorithm, machine learning, data mining, retrospective analysis, artificial intelligence, public health, prevalence and management
Journal
15
Issue
ISSN
Citations 
3
1999-4893
0
PageRank 
References 
Authors
0.34
0
1
Name
Order
Citations
PageRank
Mohammed Gollapalli110.69