使用内处理和后处理方法去偏深胸部x线分类器

Ricards Marcinkevics, Ece Ozkan, Julia E. Vogt
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引用次数: 9

摘要

用于基于图像的筛查和计算机辅助诊断的深度神经网络在各种医学成像模式(包括胸部x线片)上达到了专家级的性能。最近,一些研究表明,这些最先进的分类器可能会对敏感的患者属性(如种族或性别)产生偏见,从而导致人们越来越关注医疗保健中基于算法和模型的决策所导致的人口差异和歧视。公平的机器学习侧重于减轻对弱势或边缘群体的偏见,主要集中在表格数据或自然图像上。这项工作提出了两种新的基于微调和修剪已经训练好的神经网络的内部处理技术。这些方法简单而有效,并且可以很容易地在模型开发和测试期间被保护属性未知的情况下应用。此外,我们比较了几种用于去除胸部深x线分类器的内处理和后处理方法。据我们所知,这是研究胸部x线片去偏方法的首次努力之一。我们的研究结果表明,所考虑的方法成功地减轻了全连接和卷积神经网络中的偏差,在各种设置下提供稳定的性能。当将深度医学图像分类器部署在具有不同公平性考虑和约束条件的领域时,所讨论的方法有助于实现深度医学图像分类器的分组公平性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Debiasing Deep Chest X-Ray Classifiers using Intra- and Post-processing Methods
Deep neural networks for image-based screening and computer-aided diagnosis have achieved expert-level performance on various medical imaging modalities, including chest radiographs. Recently, several works have indicated that these state-of-the-art classifiers can be biased with respect to sensitive patient attributes, such as race or gender, leading to growing concerns about demographic disparities and discrimination resulting from algorithmic and model-based decision-making in healthcare. Fair machine learning has focused on mitigating such biases against disadvantaged or marginalised groups, mainly concentrating on tabular data or natural images. This work presents two novel intra-processing techniques based on fine-tuning and pruning an already-trained neural network. These methods are simple yet effective and can be readily applied post hoc in a setting where the protected attribute is unknown during the model development and test time. In addition, we compare several intra- and post-processing approaches applied to debiasing deep chest X-ray classifiers. To the best of our knowledge, this is one of the first efforts studying debiasing methods on chest radiographs. Our results suggest that the considered approaches successfully mitigate biases in fully connected and convolutional neural networks offering stable performance under various settings. The discussed methods can help achieve group fairness of deep medical image classifiers when deploying them in domains with different fairness considerations and constraints.
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