Litcius/Paper detail

A general framework for governing marketed AI/ML medical devices

Boris Babic, I. Glenn Cohen, Ariel Dora Stern, Yiwen Li, Melissa Ouellet

2025npj Digital Medicine45 citationsDOIOpen Access PDF

Abstract

This project represents the first systematic assessment of the US Food and Drug Administration's postmarket surveillance of legally marketed artificial intelligence and machine learning based medical devices. We focus on the Manufacturer and User Facility Device Experience database-the FDA's central tool for tracking the safety of marketed AI/ML devices. In particular, we evaluate the data pertaining to adverse events associated with approximately 950 medical devices incorporating AI/ML functions for devices approved between 2010 through 2023, and we find that the existing system is insufficient for properly assessing the safety and effectiveness of AI/ML devices. In particular, we make three contributions: (1) characterize the adverse event reports for such devices, (2) examine the ways in which the existing FDA adverse reporting system for medical devices falls short, and (3) suggest changes FDA might consider in its approach to adverse event reporting for devices incorporating AI/ML functions.

Topics & Concepts

Food and drug administrationAdverse Event Reporting SystemAdverse effectEvent (particle physics)Patient safetyMedical deviceComputer scienceMedicineMedical emergencyPharmacologyHealth careEconomicsPhysicsBiomedical engineeringEconomic growthQuantum mechanicsArtificial Intelligence in Healthcare and Education
A general framework for governing marketed AI/ML medical devices | Litcius