Understanding calibration of deep neural networks for medical image classification

Computer methods and programs in biomedicine(2023)

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摘要
Background and Objective – In the field of medical image analysis, achieving high accuracy is not enough; ensuring well-calibrated predictions is also crucial. Confidence scores of a deep neural network play a pivotal role in explainability by providing insights into the model's certainty, identifying cases that require attention, and establishing trust in its predictions. Consequently, the significance of a well-calibrated model becomes paramount in the medical imaging domain, where accurate and reliable predictions are of utmost importance. While there has been a significant effort towards training modern deep neural networks to achieve high accuracy on medical imaging tasks, model calibration and factors that affect it remain under-explored.
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关键词
Calibration,Deep neural network,Fully-supervised,Self-supervised,Transfer learning,Medical imaging
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