KESOZI Digital Twin: Physics-Informed Neural Network for Independent Estimation and Prediction of Childhood Diarrheal Disease Burden in Kenya, Somaliland, and Zimbabwe

dc.contributor.authorAgumba, John Onyango
dc.contributor.authorNamusonge, Lucy Natecho
dc.contributor.authorOgendo, Joshua Ondura
dc.contributor.authorTakavarasha, Musiiwa
dc.contributor.authorMohamad Ahmed Hassan
dc.contributor.authorSenghor, Morris Shisanya
dc.contributor.authorWaswa, Lydia
dc.contributor.authorPembere, Anthony
dc.date.accessioned2026-06-24T07:54:14Z
dc.date.available2026-06-24T07:54:14Z
dc.date.issued2026-06-24
dc.descriptionJournal Article
dc.description.abstractChildhood diarrheal disease remains a leading cause of morbidity and mortality among children under five years in sub-Saharan Africa, particularly in settings affected by inadequate sanitation, climate variability, malnutrition, and limited healthcare access. Conventional forecasting approaches are often constrained by sparse surveillance data, weak spatial representation, and limited incorporation of mechanistic disease dynamics. This study presents a Physics-Informed Multimodal Artificial Intelligence Digital Twin framework that integrates Physics-Informed Neural Networks, Graph Neural Networks, diffusion-reaction epidemiological modeling, multimodal fusion learning, and Digital Twin simulation to estimate and predict childhood diarrheal disease burden in Kenya, Somaliland, and Zimbabwe. Using public epidemiological, environmental, climate, sanitation, and synthetic proof-of-concept datasets, the framework modeled temporal disease dynamics, spatial transmission, pathogen-attributed burden, and outbreak trajectories while enforcing epidemiological consistency through physics-informed optimization. Results demonstrated robust forecasting performance, enhanced spatial transmission modeling, uncertainty-aware predictions, and realistic outbreak simulations across the three countries. Rotavirus, Shigella, and Cryptosporidium were identified as major contributors to modeled mortality burden, while unsafe water exposure, poor sanitation, malnutrition, and climate-sensitive transmission substantially increased disease risk. Compared with a Bayesian baseline model, the multimodal framework achieved superior nonlinear risk characterization, geospatial learning, and temporal prediction. These findings highlight the potential of scientific machine learning and digital twin systems for infectious disease surveillance, outbreak forecasting, climate-health analytics, and evidence-based public health decision-making in low-resource African settings.
dc.description.sponsorshipKIBU
dc.identifier.urihttp://erepository.kibu.ac.ke/handle/123456789/11872
dc.language.isoen
dc.subjectPhysics-Informed Neural Networks
dc.subjectGraph Neural Networks
dc.subjectDigital Twin
dc.subjectChildhood Diarrheal Disease
dc.subjectEpidemiology
dc.subjectKenya
dc.subjectSomaliland
dc.subjectZimbabwe
dc.subjectScientific Machine Learning
dc.subjectSpatial Epidemiology
dc.subjectMultimodal Fusion
dc.titleKESOZI Digital Twin: Physics-Informed Neural Network for Independent Estimation and Prediction of Childhood Diarrheal Disease Burden in Kenya, Somaliland, and Zimbabwe
dc.typeArticle

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