Deploying and evolving machine learning (ML) solutions presents unique challenges in healthcare due to stringent regulatory requirements. This paper discusses the requirements for an extended MLOps framework that supports the certification of ML models as medical devices. By incorporating automated compliance checks, documentation generation, and continuous monitoring, we aim to facilitate adherence to standards and guidelines. This approach could enable healthcare ML models to maintain compliance throughout their lifecycle, fostering a smoother transition from prototype to clinical deployment.

Towards Ensuring Responsible AI for Medical Device Certification

Giulio Mallardi
;
Luigi Quaranta;Fabio Calefato;Filippo Lanubile
Supervision
2025-01-01

Abstract

Deploying and evolving machine learning (ML) solutions presents unique challenges in healthcare due to stringent regulatory requirements. This paper discusses the requirements for an extended MLOps framework that supports the certification of ML models as medical devices. By incorporating automated compliance checks, documentation generation, and continuous monitoring, we aim to facilitate adherence to standards and guidelines. This approach could enable healthcare ML models to maintain compliance throughout their lifecycle, fostering a smoother transition from prototype to clinical deployment.
2025
979-8-3315-1466-2
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11586/539220
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