Social technologies, Artificial intelligence (AI), and predictive data analytics—all related to artificial intelligence (AI)—are changing the organization of epidemiology into a new era where health systems can monitor, predict, and act upon the threat of disease. The conventional methods of epidemiology, despite being successful, have difficulty in dealing with the increased size and complexity of world health data. With early warning signals and better accuracy in outbreak prediction, AI-based approaches, especially machine learning and big data analytics, offer an opportunity to handle large and heterogeneous datasets in real-time. This paper discusses how AI is being used to promote disease surveillance, pandemic preparedness, and global health security. It focuses on the importance of the factors that can strengthen predictive analytics in early detection of emerging threats, resource distribution, and evidence-based policy. The case usage evidences how AI models could be used in predicting diseases trend, clarifying high-risk groups, or facilitating a quick response in case of an emergency (like COVID-19). Meanwhile, there are also issues of data quality and the lack of transparency in algorithms, ethical use of sensitive health data, and access to AI should be equalized in all regions. Results indicate that AI-based epidemiology may shift epidemiological health systems to a proactive model rather than the reactive model, making the world less vulnerable to epidemics and pandemics. Nevertheless, this potential can manifest itself only with strong governance structures, international cooperation, and the integration of AI tools into the existing social health systems. The need to remove these concerns can make AI-based predictive analytics a foundation for a healthier and safer planet in the 21st century.
Bukhair et al. (Thu,) studied this question.
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