LGAICYJun 29, 2022

Fair Machine Learning in Healthcare: A Review

arXiv:2206.14397v32 citationsh-index: 15
Originality Synthesis-oriented
AI Analysis

This addresses fairness problems in healthcare ML to prevent social injustices, but it is a review paper, so it is incremental in synthesizing existing knowledge.

The paper reviews fairness issues in machine learning applied to healthcare, analyzing how ML can exacerbate disparities and categorizing concerns into equal allocation and equal performance, while discussing metrics, biases, and mitigation strategies.

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.

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