THE ROLE OF AI IN PREDICTING DISEASE OUTBREAKS

Authors

  • Muhammad Asif Khan Department of Computer Science, University of Karachi, Pakistan Author

DOI:

https://doi.org/10.71465/bhsr59

Keywords:

Artificial Intelligence, Disease Prediction, Epidemiology, Machine Learning, Public Health, Big Data

Abstract

Artificial Intelligence (AI) has emerged as a crucial tool in predicting disease  outbreaks, revolutionizing public health surveillance and response systems. By  leveraging machine learning algorithms, big data analytics, and deep learning  techniques, AI can analyze vast datasets to detect patterns, identify risk factors, and  forecast potential outbreaks with remarkable accuracy. This paper explores the  various applications of AI in epidemiology, discussing its role in data collection,  analysis, and prediction of infectious diseases such as COVID-19, influenza, and  dengue fever. We also examine the challenges associated with AI-driven disease  prediction, including data privacy concerns, ethical considerations, and the need for  robust AI frameworks. The study provides insights into the future of AI in global  health security, emphasizing its potential to enhance early warning systems and  disease prevention strategies.

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Published

2025-12-31

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Articles