A Guide to Cross-Validation for Artificial Intelligence in Medical Imaging

Artificial intelligence (AI) is being increasingly used to automate and improve technologies within the field of medical imaging. A critical step in the development of an AI algorithm is estimating its prediction error through cross-validation (CV). The use of CV can help prevent overoptimism in AI...

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Veröffentlicht in:Radiology. Artificial intelligence 2023-07, Vol.5 (4), p.e220232-e220232
Hauptverfasser: Bradshaw, Tyler J, Huemann, Zachary, Hu, Junjie, Rahmim, Arman
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Sprache:eng
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Zusammenfassung:Artificial intelligence (AI) is being increasingly used to automate and improve technologies within the field of medical imaging. A critical step in the development of an AI algorithm is estimating its prediction error through cross-validation (CV). The use of CV can help prevent overoptimism in AI algorithms and can mitigate certain biases associated with hyperparameter tuning and algorithm selection. This article introduces the principles of CV and provides a practical guide on the use of CV for AI algorithm development in medical imaging. Different CV techniques are described, as well as their advantages and disadvantages under different scenarios. Common pitfalls in prediction error estimation and guidance on how to avoid them are also discussed. Education, Research Design, Technical Aspects, Statistics, Supervised Learning, Convolutional Neural Network (CNN) . © RSNA, 2023.
ISSN:2638-6100
2638-6100
DOI:10.1148/ryai.220232