AEGIS: An Operational Infrastructure for Post-Market Governance of Adaptive Medical AI Under US and EU Regulations
arXiv cs.AI / 3/25/2026
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Key Points
- The paper introduces AEGIS, an AI/ML evaluation and governance infrastructure designed to support post-market oversight of adaptive medical AI under both US FDA and EU regulatory mechanisms like PCCP and PMS.
- AEGIS operationalizes the governance lifecycle through three modules—dataset assimilation and retraining, model monitoring, and conditional decision—mapped to FDA and EU AI Act Article 43(4) concepts.
- It proposes a four-outcome deployment decision taxonomy (APPROVE, CONDITIONAL APPROVAL, CLINICAL REVIEW, REJECT) and adds an independent PMS “ALARM” signal to flag critical conditions where no deployable model exists while the current released model is at risk.
- The approach is demonstrated with two heterogeneous healthcare AI examples (sepsis prediction from EHRs and brain tumor segmentation from imaging) using the same governance architecture with different configurations.
- In 11 simulated sepsis iterations, AEGIS exercised all decision categories and used ALARM signals to detect drift before measurable performance degradation.
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