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A scoping review of reporting gaps in FDA-approved AI medical devices
111
Zitationen
15
Autoren
2024
Jahr
Abstract
Machine learning and artificial intelligence (AI/ML) models in healthcare may exacerbate health biases. Regulatory oversight is critical in evaluating the safety and effectiveness of AI/ML devices in clinical settings. We conducted a scoping review on the 692 FDA-approved AI/ML-enabled medical devices approved from 1995-2023 to examine transparency, safety reporting, and sociodemographic representation. Only 3.6% of approvals reported race/ethnicity, 99.1% provided no socioeconomic data. 81.6% did not report the age of study subjects. Only 46.1% provided comprehensive detailed results of performance studies; only 1.9% included a link to a scientific publication with safety and efficacy data. Only 9.0% contained a prospective study for post-market surveillance. Despite the growing number of market-approved medical devices, our data shows that FDA reporting data remains inconsistent. Demographic and socioeconomic characteristics are underreported, exacerbating the risk of algorithmic bias and health disparity.
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Autoren
Institutionen
- University of Ibadan(NG)
- Babcock University(NG)
- Stanford University(US)
- Afe Babalola University(NG)
- Lagos State Health Service Commission(NG)
- University of Lagos(NG)
- Stanford Medicine(US)
- University College London(GB)
- Helicon Foundation(US)
- University of Illinois Urbana-Champaign(US)
- University College Hospital, Ibadan(NG)