建立公平的动脉粥样硬化性心血管疾病风险模型

S. Pfohl, Ben J. Marafino, Adrien Coulet, F. Rodriguez, L. Palaniappan, N. Shah
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引用次数: 56

摘要

动脉粥样硬化性心血管疾病(ASCVD)管理指南推荐使用风险分层模型来识别最有可能从降胆固醇和其他治疗中获益的患者。这些模型在不同的种族和性别群体中表现不同,在不同的研究中表现不一致,可能导致有益治疗的不公平分配。在这项工作中,我们利用对抗性学习和从电子健康记录(EHRs)中提取的大型观察队列,开发了一个“公平”的ASCVD风险预测模型,减少了组间错误率的可变性。我们的经验证明,我们的方法能够对基于高维电子病历数据构建的模型的结果同时跨几个组的风险预测分布进行调整。我们还讨论了这些结果在公平和模型性能之间的经验权衡的背景下的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Creating Fair Models of Atherosclerotic Cardiovascular Disease Risk
Guidelines for the management of atherosclerotic cardiovascular disease (ASCVD) recommend the use of risk stratification models to identify patients most likely to benefit from cholesterol-lowering and other therapies. These models have differential performance across race and gender groups with inconsistent behavior across studies, potentially resulting in an inequitable distribution of beneficial therapy. In this work, we leverage adversarial learning and a large observational cohort extracted from electronic health records (EHRs) to develop a "fair" ASCVD risk prediction model with reduced variability in error rates across groups. We empirically demonstrate that our approach is capable of aligning the distribution of risk predictions conditioned on the outcome across several groups simultaneously for models built from high-dimensional EHR data. We also discuss the relevance of these results in the context of the empirical trade-off between fairness and model performance.
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