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Federated Learning in Healthcare Ethics: A Systematic Review of Privacy-Preserving and Equitable Medical AI
1
Zitationen
3
Autoren
2026
Jahr
Abstract
: FL has significant potential to promote ethical AI in healthcare, but advancement will require the development of common fairness standards, workable governance plans, and systems to guarantee fair benefit sharing. Future studies should develop standardized fairness metrics, implement multi-stakeholder governance frameworks, and prioritize real-world clinical validation beyond proof-of-concept implementations.
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