Disparate Censorship & Undertesting: A Source of Label Bias in Clinical Machine Learning.

Trenton Chang, Michael W Sjoding, Jenna Wiens
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Abstract

As machine learning (ML) models gain traction in clinical applications, understanding the impact of clinician and societal biases on ML models is increasingly important. While biases can arise in the labels used for model training, the many sources from which these biases arise are not yet well-studied. In this paper, we highlight disparate censorship (i.e., differences in testing rates across patient groups) as a source of label bias that clinical ML models may amplify, potentially causing harm. Many patient risk-stratification models are trained using the results of clinician-ordered diagnostic and laboratory tests of labels. Patients without test results are often assigned a negative label, which assumes that untested patients do not experience the outcome. Since orders are affected by clinical and resource considerations, testing may not be uniform in patient populations, giving rise to disparate censorship. Disparate censorship in patients of equivalent risk leads to undertesting in certain groups, and in turn, more biased labels for such groups. Using such biased labels in standard ML pipelines could contribute to gaps in model performance across patient groups. Here, we theoretically and empirically characterize conditions in which disparate censorship or undertesting affect model performance across subgroups. Our findings call attention to disparate censorship as a source of label bias in clinical ML models.

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不同的审查和测试不足:临床机器学习中标签偏见的来源。
随着机器学习(ML)模型在临床应用中的发展,了解临床医生和社会偏见对ML模型的影响变得越来越重要。虽然用于模型训练的标签可能会产生偏差,但这些偏差产生的许多来源尚未得到很好的研究。在本文中,我们强调了不同的审查(即不同患者组的测试率差异)作为临床ML模型可能放大的标签偏差的来源,可能会造成伤害。许多患者风险分层模型是使用临床医生要求的诊断和实验室标签测试的结果来训练的。没有检测结果的患者通常被贴上阴性标签,这意味着未经检测的患者不会经历检测结果。由于订单受临床和资源考虑的影响,在患者群体中检测可能不统一,从而产生不同的审查。对同等风险的患者进行不同的审查导致某些群体的测试不足,反过来,对这些群体的标签更有偏见。在标准ML管道中使用这种有偏差的标签可能会导致不同患者组的模型性能存在差距。在这里,我们从理论上和经验上描述了不同审查或测试不足影响子组模型性能的条件。我们的研究结果引起了人们对临床ML模型中标签偏差来源的不同审查的关注。
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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