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arxiv: 2311.05418 · v2 · pith:VOU7ZYPE · submitted 2023-11-09 · cs.LG · cs.AI

Generalization in medical AI: a perspective on developing scalable models

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classification cs.LG cs.AI
keywords generalizationmedicalcharacterizemodelsout-of-distributionscaleaddressesapplications
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The scientific community is increasingly recognizing the importance of generalization in medical AI for translating research into practical clinical applications. A three-level scale is introduced to characterize out-of-distribution generalization performance of medical AI models. This scale addresses the diversity of real-world medical scenarios as well as whether target domain data and labels are available for model recalibration. It serves as a tool to help researchers characterize their development settings and determine the best approach to tackling the challenge of out-of-distribution generalization.

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