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ISSN: 2582-8266 (Online)  || UGC Compliant Journal || Google Indexed || Impact Factor: 9.48 || Crossref DOI

Fast Publication within 2 days || Low Article Processing charges || Peer reviewed and Referred Journal

Research and review articles are invited for publication in Volume 18, Issue 2 (February 2026).... Submit articles

Federated learning for national healthcare systems: Balancing privacy and innovation

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  • Federated learning for national healthcare systems: Balancing privacy and innovation

Oben Yapar *

Department of Computer Science, Florida Institute of Technology, USA.

Research Article
 
World Journal of Advanced Engineering Technology and Sciences, 2024, 13(01), 153–166.
Article DOI: 10.30574/wjaets.2024.13.1.0384
DOI url: https://doi.org/10.30574/wjaets.2024.13.1.0384

Received on 23 July 2024; revised on 07 September 2024; accepted on 10 September 2024

Federated Learning provides a revolutionary model for handling the United States' healthcare data while addressing privacy concerns and pushing forward innovations. FL works especially in contrast to other organizational top-down approaches that do not allow for decentralization while training AI over various datasets—patient data, for instance, are considerably sensitive. This shift is important in creating a new generation of AI solutions for healthcare that can be used to prevent deaths, improve care, and cut on expenses. Thus, when applied to healthcare, Federated Learning can help unleash the value of massive and varied datasets while remaining compliant with privacy laws. This paper discusses how FL can be implemented in the healthcare systems of different nations and how this has the potential to greatly enhance medical research, pharmaceuticals, and disease prevention. Most notable, the article describes the concrete obstacles of data heterogeneity, model accuracy, and the ethical implications of FL at scale. The outcomes of this research bring to light FL as a crucial element in how innovation can be effected without infringing the rights of patients by enhancing the capacity for using efficient delivery of healthcare in the country.

Health care database; Federated Learning; Data security; Ethical considerations; Public Health Strategies; Decentralized data; AI Driven Healthcare solutions

https://wjaets.com/sites/default/files/fulltext_pdf/WJAETS-2024-0384.pdf

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Oben Yapar. Federated learning for national healthcare systems: Balancing privacy and innovation. World Journal of Advanced Engineering Technology and Sciences, 2024, 13(01), 153–166. Article DOI: https://doi.org/10.30574/wjaets.2024.13.1.0384

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