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Understanding Responsible Development in AI-Based Clinical Prediction Models for Mortality: Protocol for a Scoping Review
0
Zitationen
4
Autoren
2026
Jahr
Abstract
This review will provide a comprehensive summary of AIPMs that predict mortality, highlighting the specific elements included in their development. Informed by the responsible research and innovation (RRI) framework, we will consider interest-holder engagement, interdisciplinary collaboration, and computational and clinical ethics will in the context of the four RRI dimensions: anticipation, reflexivity, inclusion, and responsiveness.
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