4.5 Article

Fog-Computing Based Healthcare Framework for Predicting Encephalitis Outbreak

Journal

BIG DATA RESEARCH
Volume 29, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.bdr.2022.100330

Keywords

Acute encephalitis syndrome; Cloud computing; Long short-term memory; Spatio-temporal mining; Convolutional neural network

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The study presents a system based on deep learning and GIS for monitoring and preventing the spread of Acute Encephalitis Syndrome, providing effective medical decision support through real-time alert generation and spatial analysis techniques.
Acute Encephalitis Syndrome (AES) is a serious, life-threatening disease, which is endemic in India and South-East Asia, where it adds to the strain on healthcare systems. It is a communicable disease that is caused by a virus attacking the brain tissues. The main objective of this study is to present a system that allows for monitoring, controlling, and preventing the spread of Encephalitis. The system is based on Hybrid-Fog-Computing (HFC) for real-time alert generation and notifies medical caregivers in case of abnormal geospatial distribution of infections. Deep learning, incorporating Multi-scaled Long Short Term Memory (MLSTM) and Convolutional Neural Network (CNN), is used to identify the health risk in terms of the Outbreak Severity Index (OSI). Our deep-learning model is integrated with Geographical Information System (GIS) tools to analyze the spatial distribution of disease-ridden areas and a Self -Organized Mapping (SOM) technique is used to visualize AES hotspots using spatial cluster analysis techniques including Getis-Ord Gi*. To determine the category of a patient's health state, a Bayesian classifier is used. A Spatio-temporal prediction model is used to coordinate medical resources toward successful health-oriented decision-making and effective knowledge delivery. The system is validated using real datasets, and the results are compared to various state-of-the-art prediction models. The proposed model outperforms other decision models for accuracy, precision, f-measure, and overall system stability. (C) 2022 Elsevier Inc. All rights reserved.

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