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Charting a new course in healthcare: early-stage AI algorithm registration to enhance trust and transparency
17
Zitationen
12
Autoren
2024
Jahr
Abstract
AI holds the potential to transform healthcare, promising improvements in patient care. Yet, realizing this potential is hampered by over-reliance on limited datasets and a lack of transparency in validation processes. To overcome these obstacles, we advocate the creation of a detailed registry for AI algorithms. This registry would document the development, training, and validation of AI models, ensuring scientific integrity and transparency. Additionally, it would serve as a platform for peer review and ethical oversight. By bridging the gap between scientific validation and regulatory approval, such as by the FDA, we aim to enhance the integrity and trustworthiness of AI applications in healthcare.
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Autoren
Institutionen
- Erasmus MC(NL)
- Erasmus University Rotterdam(NL)
- Utrecht University(NL)
- University Medical Center Utrecht(NL)
- World Health Organization(CH)
- Medisch Spectrum Twente(NL)
- Geneeskundige en Gezondheidsdienst(NL)
- Delft University of Technology(NL)
- Microsoft (Netherlands)(NL)
- SAS Institute (United States)(US)
- Executive Office of the President(US)