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Systematic Review

Federated Learning in Public Health: A Systematic Review of Decentralized, Equitable, and Secure Disease Prevention Approaches

1
Department of Computer Science, Abasyn University, Islamabad 44000, Pakistan
2
Department of Creative Technologies, Faculty of Computing and Artificial Intelligence (FCAI), Air University, Islamabad 44000, Pakistan
3
Faculty of Arts and Science, Edge Hill University, Ormskirk L39 4QP, Lancashire, UK
4
Department of Optical Engineering, Sejong University, Seoul 03181, Republic of Korea
*
Authors to whom correspondence should be addressed.
These authors contributed equally to this work.
Healthcare 2025, 13(21), 2760; https://doi.org/10.3390/healthcare13212760
Submission received: 16 September 2025 / Revised: 10 October 2025 / Accepted: 28 October 2025 / Published: 30 October 2025
(This article belongs to the Section Artificial Intelligence in Healthcare)

Abstract

Background and Objectives: Public health needs collaborative, privacy-preserving analytics, but centralized AI is constrained by data sharing and governance. Federated learning (FL) enables training without moving sensitive data. This review assessed how FL is used for disease prevention in population and public health, and mapped benefits, challenges, and policy implications. Methods: Following PRISMA 2020, we searched PubMed, Scopus, Web of Science, IEEE Xplore, and Google Scholar for peer reviewed English-language studies from January 2020–30 June 2025, applying FL to surveillance, outbreak detection, risk prediction, or policy support. Two reviewers screened and extracted data with third-reviewer arbitration. Quality was appraised with a tool adapted from MMAT and AI reporting frameworks. No meta-analysis was performed. Results: Of 5230 records identified (4720 after deduplication), 200 full texts were assessed and 19 were included. Most used horizontal FL across multiple institutions for communicable diseases ,COVID-19, tuberculosis and some chronic conditions. Reported gains included privacy preservation across sites, better generalizability from diverse data, near real-time intelligence, localized risk stratification, and support for resource planning. Common barriers were non-IID data, interoperability gaps, compute and network limits in low-resource settings, unclear legal pathways, and concerns about fairness and transparency. Few studies linked directly to formal public-health policy or low-resource deployments. Conclusions: FL is promising for equitable, secure, and scalable disease-prevention analytics that respect data sovereignty. Priorities include robust methods for heterogeneity, interoperable standards, secure aggregation, routine fairness auditing, clearer legal and regulatory guidance, and capacity building in underrepresented regions.
Keywords: machine learning; environmental pollution; exposure assessment; risk prediction; sustainable interventions; public health; equity; responsible AI; PRISMA machine learning; environmental pollution; exposure assessment; risk prediction; sustainable interventions; public health; equity; responsible AI; PRISMA

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MDPI and ACS Style

Shah, S.T.; Ali, Z.; Waqar, M.; Kim, A. Federated Learning in Public Health: A Systematic Review of Decentralized, Equitable, and Secure Disease Prevention Approaches. Healthcare 2025, 13, 2760. https://doi.org/10.3390/healthcare13212760

AMA Style

Shah ST, Ali Z, Waqar M, Kim A. Federated Learning in Public Health: A Systematic Review of Decentralized, Equitable, and Secure Disease Prevention Approaches. Healthcare. 2025; 13(21):2760. https://doi.org/10.3390/healthcare13212760

Chicago/Turabian Style

Shah, Sayed Tariq, Zulfiqar Ali, Muhammad Waqar, and Ajung Kim. 2025. "Federated Learning in Public Health: A Systematic Review of Decentralized, Equitable, and Secure Disease Prevention Approaches" Healthcare 13, no. 21: 2760. https://doi.org/10.3390/healthcare13212760

APA Style

Shah, S. T., Ali, Z., Waqar, M., & Kim, A. (2025). Federated Learning in Public Health: A Systematic Review of Decentralized, Equitable, and Secure Disease Prevention Approaches. Healthcare, 13(21), 2760. https://doi.org/10.3390/healthcare13212760

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