Federated Learning in Medical AI: Advancing Privacy-Preserving Data Sharing for Collaborative Healthcare Research

Authors

  • Sriharsha Daram Senior AWS Full stack Engineer, CGI, USA. Author

DOI:

https://doi.org/10.63282/3050-9262.IJAIDSML-V6I2P107

Keywords:

Federated Learning, Medical AI, Differential Privacy, Secure Aggregation, Homomorphic Encryption

Abstract

Federated Learning (FL) has emerged as a practical approach to training machine learning models collaboratively across multiple institutions, especially in domains like healthcare where patient data is highly sensitive. By allowing data to remain local while only model updates are shared, FL addresses a critical balance between innovation and privacy. This paper explores FL’s growing relevance in medical AI particularly its role in improving diagnostic models, patient management, and regulatory compliance. Key contributions include a breakdown of FL's interaction with healthcare systems, a look at privacy-preserving techniques like differential privacy and homomorphic encryption, and real-world use cases in oncology, cardiology, and radiology. We present experimental results, challenges with interoperability, and a vision for FL's evolution in secure global healthcare collaboration

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Published

2025-04-17

Issue

Section

Articles

How to Cite

1.
Daram S. Federated Learning in Medical AI: Advancing Privacy-Preserving Data Sharing for Collaborative Healthcare Research. IJAIDSML [Internet]. 2025 Apr. 17 [cited 2025 Jul. 10];6(2):65-72. Available from: https://ijaidsml.org/index.php/ijaidsml/article/view/136