论文标题
医疗保健中的公平机器学习:评论
Fair Machine Learning in Healthcare: A Review
论文作者
论文摘要
医疗保健数据的数字化以及计算能力进步的数字化推动了医疗保健中机器学习(ML)的采用。但是,这些方法可能会延续甚至加剧现有的差异,从而导致公平问题,例如资源的不平等分配以及不同人口组之间的诊断不准确性。解决这些公平性问题对于防止进一步巩固社会不公的至关重要。在这项调查中,我们分析了机器学习与医疗保健差异中公平性的交集。我们采用基于分配正义原则的框架,将公平关注点分为两个不同的类别:平等分配和同等绩效。我们从机器学习的角度对相关的公平指标进行了批判性审查,并检查了ML生命周期阶段的偏见和缓解策略,并讨论了偏见与其对策之间的关系。本文最后讨论了在确保医疗保健ML中公平性的紧迫挑战中的讨论,并提出了一些新的研究指示,这些方向有望在医疗保健中开发道德和公平的ML应用。
The digitization of healthcare data coupled with advances in computational capabilities has propelled the adoption of machine learning (ML) in healthcare. However, these methods can perpetuate or even exacerbate existing disparities, leading to fairness concerns such as the unequal distribution of resources and diagnostic inaccuracies among different demographic groups. Addressing these fairness problem is paramount to prevent further entrenchment of social injustices. In this survey, we analyze the intersection of fairness in machine learning and healthcare disparities. We adopt a framework based on the principles of distributive justice to categorize fairness concerns into two distinct classes: equal allocation and equal performance. We provide a critical review of the associated fairness metrics from a machine learning standpoint and examine biases and mitigation strategies across the stages of the ML lifecycle, discussing the relationship between biases and their countermeasures. The paper concludes with a discussion on the pressing challenges that remain unaddressed in ensuring fairness in healthcare ML, and proposes several new research directions that hold promise for developing ethical and equitable ML applications in healthcare.