Enabling Fairness in Healthcare Through Machine Learning

被引:0
作者
Thomas Grote
Geoff Keeling
机构
[1] University of Tübingen,Ethics and Philosophy Lab; Cluster of Excellence: Machine Learning: New Perspectives for Science
[2] Stanford University,Institute for Human
来源
Ethics and Information Technology | 2022年 / 24卷
关键词
Fairness; Machine learning; Healthcare; Bias; Decision-making;
D O I
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中图分类号
学科分类号
摘要
The use of machine learning systems for decision-support in healthcare may exacerbate health inequalities. However, recent work suggests that algorithms trained on sufficiently diverse datasets could in principle combat health inequalities. One concern about these algorithms is that their performance for patients in traditionally disadvantaged groups exceeds their performance for patients in traditionally advantaged groups. This renders the algorithmic decisions unfair relative to the standard fairness metrics in machine learning. In this paper, we defend the permissible use of affirmative algorithms; that is, algorithms trained on diverse datasets that perform better for traditionally disadvantaged groups. Whilst such algorithmic decisions may be unfair, the fairness of algorithmic decisions is not the appropriate locus of moral evaluation. What matters is the fairness of final decisions, such as diagnoses, resulting from collaboration between clinicians and algorithms. We argue that affirmative algorithms can permissibly be deployed provided the resultant final decisions are fair.
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