1 MS in Information system, Pacific States University, Los Angeles, California 90010, USA.
2 Department of Information Technology, Middle Georgia State University, Georgia, USA.
3 Master of Science in Computer Science (Major in Data Analytics), Westcliff University, Irvine, California 92614, USA.
4 Doctorate in Management, International American University, Los Angeles, California 90010, USA.
5 MS in Applied Statistics, California State University, Long Beach, California 90840, USA.
6 MBA in Management Information Systems, International American University, Los Angeles, California 90010, USA.
International Journal of Science and Research Archive, 2025, 17(03), 225-241
Article DOI: 10.30574/ijsra.2025.17.3.3187
Received 27 October 2025; revised on 04 December 2025; accepted on 06 December 2025
The increasing frequency and sophistication of cyberattacks on the U.S. healthcare system pose a significant threat to patient safety and data privacy. Centralizing sensitive patient data from multiple hospitals to train a collective cyber-defense model is often infeasible due to stringent data privacy regulations like HIPAA. This paper proposes a privacy-preserving federated deep learning (FDL) framework for collaborative cyber threat detection across healthcare networks without sharing raw data. In our framework, participating healthcare institutions train local deep learning models, specifically a Long Short-Term Memory (LSTM) network, on their internal network traffic data. Only the model parameter updates (gradients), not the data itself, are sent to a central aggregator server, which uses the Federated Averaging (FedAvg) algorithm to synthesize a global, robust model. We simulated a federated learning environment with five independent hospital nodes using the CIC-IDS-2017 dataset to benchmark performance. The results demonstrate that the federated model achieves a high classification performance, with an F1-score of 97.8%, which is comparable to a model trained on centralized data (98.5%). Furthermore, the federated model showed superior generalization capabilities when tested on unseen data from a new hospital node, outperforming individually trained local models by an average of 15.3%. This study concludes that federated deep learning presents a viable and effective strategy for enhancing collective cybersecurity posture in the healthcare sector while rigorously preserving data privacy and complying with regulatory requirements.
Federated Learning; Healthcare Cybersecurity; Privacy-Preserving Ai; Deep Learning; Intrusion Detection System; Hipaa.
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Debabrata Biswas, Mohon Raihan, Araf Islam, Afia Khanom, Tanjima Rahman and Azam Khan. Federated deep learning for privacy-preserving cyber threat detection in U.S. healthcare networks. International Journal of Science and Research Archive, 2025, 17(03), 225-241. Article DOI: https://doi.org/10.30574/ijsra.2025.17.3.3187.
Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0







