论文标题
深度学习中置信度校准的比较研究:从计算机视觉到医学成像
A Comparative Study of Confidence Calibration in Deep Learning: From Computer Vision to Medical Imaging
论文作者
论文摘要
尽管深度学习预测模型在歧视不同阶层方面已经成功,但它们通常会遭受包括医疗保健在内的具有挑战性领域的校准不良。此外,长尾分布在深度学习分类问题(包括临床疾病预测)中构成了巨大挑战。最近提出了一些方法来校准计算机视觉中的深入预测,但是没有发现代表模型如何在不同挑战性的环境中起作用。在本文中,我们通过对四个高影响力校准模型的比较研究桥接了从计算机视觉到医学成像的置信度校准。我们的研究是在不同的情况下进行的(自然图像分类和肺癌风险估计),包括在平衡与不平衡训练集以及计算机视觉与医学成像中进行。我们的结果支持关键发现:(1)我们获得了新的结论,这些结论未在不同的学习环境中进行研究,例如,将两个校准模型组合在一起,这些模型既可以减轻过度启发的预测,都会导致不足的预测,并且来自计算机视觉领域的更简单的校准模型倾向于对医学成像更为普遍。 (2)我们强调了一般计算机视觉任务和医学成像预测之间的差距,例如,校准方法是通用计算机视觉任务的理想选择,实际上可能会损坏医学成像预测的校准。 (3)我们还加强了自然图像分类设置的先前结论。我们认为,这项研究的优点是指导读者选择校准模型,并了解一般计算机视觉和医学成像域之间的差距。
Although deep learning prediction models have been successful in the discrimination of different classes, they can often suffer from poor calibration across challenging domains including healthcare. Moreover, the long-tail distribution poses great challenges in deep learning classification problems including clinical disease prediction. There are approaches proposed recently to calibrate deep prediction in computer vision, but there are no studies found to demonstrate how the representative models work in different challenging contexts. In this paper, we bridge the confidence calibration from computer vision to medical imaging with a comparative study of four high-impact calibration models. Our studies are conducted in different contexts (natural image classification and lung cancer risk estimation) including in balanced vs. imbalanced training sets and in computer vision vs. medical imaging. Our results support key findings: (1) We achieve new conclusions which are not studied under different learning contexts, e.g., combining two calibration models that both mitigate the overconfident prediction can lead to under-confident prediction, and simpler calibration models from the computer vision domain tend to be more generalizable to medical imaging. (2) We highlight the gap between general computer vision tasks and medical imaging prediction, e.g., calibration methods ideal for general computer vision tasks may in fact damage the calibration of medical imaging prediction. (3) We also reinforce previous conclusions in natural image classification settings. We believe that this study has merits to guide readers to choose calibration models and understand gaps between general computer vision and medical imaging domains.