AEGIS: An Operational Infrastructure for Post-Market Governance of Adaptive Medical AI Under US and EU Regulations
Fardin Afdideh, Mehdi Astaraki, Fernando Seoane, and Farhad Abtahi

TL;DR
AEGIS is a comprehensive governance framework for adaptive medical AI that operationalizes US and EU regulations, enabling safe continuous learning through monitoring, decision-making, and regulatory compliance across diverse healthcare applications.
Contribution
This paper introduces AEGIS, a novel infrastructure that operationalizes regulatory change-control concepts into executable governance procedures for adaptive medical AI.
Findings
AEGIS successfully implemented across different clinical contexts.
Detected model drift before performance degradation.
Supported regulatory compliance and continuous learning.
Abstract
Machine learning systems deployed in medical devices require governance frameworks that ensure safety while enabling continuous improvement. Regulatory bodies including the FDA and European Union have introduced mechanisms such as the Predetermined Change Control Plan (PCCP) and Post-Market Surveillance (PMS) to manage iterative model updates without repeated submissions. This paper presents AI/ML Evaluation and Governance Infrastructure for Safety (AEGIS), a governance framework applicable to any healthcare AI system. AEGIS comprises three modules, i.e., dataset assimilation and retraining, model monitoring, and conditional decision, that operationalize FDA PCCP and EU AI Act Article 43(4) provisions. We implement a four-category deployment decision taxonomy (APPROVE, CONDITIONAL APPROVAL, CLINICAL REVIEW, REJECT) with an independent PMS ALARM signal, enabling detection of the critical…
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Taxonomy
TopicsHealthcare Technology and Patient Monitoring · Artificial Intelligence in Healthcare and Education · Adversarial Robustness in Machine Learning
