posted by user: CasellaJr || 135 views || tracked by 1 users: [display]

FedHealth 2025 : Federated and Distributed Learning for Healthcare: Methods for Privacy-Preserving and Robust AI in Critical Medical Applications

FacebookTwitterLinkedInGoogle

Link: https://app.jove.com/methods-collections/4060/federated-and-distributed-learning-for-healthcare-methods-for-privacy-preserving-and-robust-ai-in-critical-medical-applications
 
When N/A
Where N/A
Submission Deadline Sep 30, 2025
Categories    federated learning   healthcare   critical applications   medical imaging
 

Call For Papers

Federated learning (FL) has emerged as a promising solution for privacy-preserving machine learning in sensitive domains like healthcare. By enabling collaborative model training without sharing raw data, FL holds the potential to unlock high-quality and generalizable AI models across different institutions. Despite significant academic interest, the real-world deployment of FL in healthcare remains limited due to persistent challenges, including strict privacy requirements, robustness to failures and adversarial attacks, regulatory compliance, and infrastructural constraints. These barriers are particularly critical in medical contexts, where errors can have life-threatening consequences and trust in AI systems must be exceptionally high.

This Methods Collection aims to advance the development of practical and reliable FL methods tailored to the healthcare domain. It invites contributions that address the full spectrum of challenges in deploying FL for medical applications, including privacy-preserving algorithms, robustness against malicious clients, handling heterogeneous data distributions, compliance with data protection regulations, and fault-tolerant system designs. By focusing on methods bridging the gap between research prototypes and production-ready healthcare systems, this collection will serve as a valuable resource for researchers and practitioners.

This Methods Collection will help accelerate the development of federated learning systems that are technically sound and deployable in high-stakes medical environments, ultimately contributing to safer, fairer, and more effective AI-driven healthcare solutions.

Related Resources

IVCNZ 2025   40th Conference on Image and Vision Computing New Zealand
PDCAT 2025   Parallel and Distributed Computing: Applications and Technologies
Ei/Scopus-CVIV 2025   2025 7h International Conference on Advances in Computer Vision, Image and Virtualization (CVIV 2025)
FLEdge-AI 2025   Federated Learning and Edge AI for Privacy and Mobility (FLEdge-AI) @ ACM MOBICOM 2025
ICBSP--EI 2025   2025 10th International Conference on Biomedical Imaging, Signal Processing (ICBSP 2025)
Security 2025   Special Issue on Recent Advances in Security, Privacy, and Trust
ML4H 2025   AHLI Machine Learning for Health Symposium
Ei/Scopus-SGGEA 2025   2025 2nd Asia Conference on Smart Grid, Green Energy and Applications (SGGEA 2025)
ICABB 2025   2025 7th International Conference on Advanced Bioinformatics and Biomedical Engineering (ICABB 2025)
FedGenAI-IJCAI 2025   International Workshop on Federated Learning with Generative AI In Conjunction with IJCAI 2025