Hidden Stratification Causes Clinically Meaningful Failures in Machine Learning for Medical Imaging.

Luke Oakden-Rayner, Jared Dunnmon, Gustavo Carneiro, Christopher Ré
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引用次数: 268

Abstract

Machine learning models for medical image analysis often suffer from poor performance on important subsets of a population that are not identified during training or testing. For example, overall performance of a cancer detection model may be high, but the model may still consistently miss a rare but aggressive cancer subtype. We refer to this problem as hidden stratification, and observe that it results from incompletely describing the meaningful variation in a dataset. While hidden stratification can substantially reduce the clinical efficacy of machine learning models, its effects remain difficult to measure. In this work, we assess the utility of several possible techniques for measuring hidden stratification effects, and characterize these effects both via synthetic experiments on the CIFAR-100 benchmark dataset and on multiple real-world medical imaging datasets. Using these measurement techniques, we find evidence that hidden stratification can occur in unidentified imaging subsets with low prevalence, low label quality, subtle distinguishing features, or spurious correlates, and that it can result in relative performance differences of over 20% on clinically important subsets. Finally, we discuss the clinical implications of our findings, and suggest that evaluation of hidden stratification should be a critical component of any machine learning deployment in medical imaging.

隐藏分层导致医学成像机器学习中有临床意义的失败。
用于医学图像分析的机器学习模型通常在训练或测试期间未识别的重要子集上表现不佳。例如,癌症检测模型的整体性能可能很高,但该模型仍然可能始终遗漏罕见但具有侵袭性的癌症亚型。我们将这个问题称为隐藏分层,并观察到它是由于不完全描述数据集中有意义的变化而导致的。虽然隐藏分层会大大降低机器学习模型的临床疗效,但其效果仍然难以衡量。在这项工作中,我们评估了几种可能用于测量隐藏分层效应的技术的效用,并通过在CIFAR-100基准数据集和多个现实世界医学成像数据集上的综合实验来表征这些效应。使用这些测量技术,我们发现证据表明,隐藏分层可能发生在低患病率、低标签质量、细微区别特征或虚假相关性的未识别成像子集中,并且它可能导致临床重要子集的相对性能差异超过20%。最后,我们讨论了我们的研究结果的临床意义,并建议隐藏分层的评估应该是医学成像中任何机器学习部署的关键组成部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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