Enhancing Clinical Decision Support in Nephrology: Addressing Algorithmic Bias Through Artificial Intelligence Governance.

IF 9.4 1区 医学 Q1 UROLOGY & NEPHROLOGY
American Journal of Kidney Diseases Pub Date : 2024-12-01 Epub Date: 2024-06-06 DOI:10.1053/j.ajkd.2024.04.008
Benjamin A Goldstein, Dinushika Mohottige, Sophia Bessias, Michael P Cary
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引用次数: 0

Abstract

There has been a steady rise in the use of clinical decision support (CDS) tools to guide nephrology as well as general clinical care. Through guidance set by federal agencies and concerns raised by clinical investigators, there has been an equal rise in understanding whether such tools exhibit algorithmic bias leading to unfairness. This has spurred the more fundamental question of whether sensitive variables such as race should be included in CDS tools. In order to properly answer this question, it is necessary to understand how algorithmic bias arises. We break down 3 sources of bias encountered when using electronic health record data to develop CDS tools: (1) use of proxy variables, (2) observability concerns and (3) underlying heterogeneity. We discuss how answering the question of whether to include sensitive variables like race often hinges more on qualitative considerations than on quantitative analysis, dependent on the function that the sensitive variable serves. Based on our experience with our own institution's CDS governance group, we show how health system-based governance committees play a central role in guiding these difficult and important considerations. Ultimately, our goal is to foster a community practice of model development and governance teams that emphasizes consciousness about sensitive variables and prioritizes equity.

加强肾脏病学的临床决策支持:通过人工智能管理解决算法偏差。
使用临床决策支持(CDS)工具指导肾脏病学和一般临床护理的情况一直在稳步增加。通过联邦机构制定的指南和临床研究人员提出的问题,人们对此类工具是否会表现出算法偏差导致不公平的认识也在不断提高。这引发了一个更基本的问题,即 CDS 工具中是否应包含种族等敏感变量。为了正确回答这个问题,有必要了解算法偏差是如何产生的。我们分析了使用电子健康记录数据开发 CDS 工具时遇到的三个偏差来源:(1)使用替代变量;(2)可观察性问题;(3)潜在的异质性。我们讨论了在回答是否纳入种族等敏感变量的问题时,如何根据敏感变量的功能,更多地考虑定性因素而非定量分析。根据我们自己机构的 CDS 管理小组的经验,我们展示了基于卫生系统的管理委员会如何在指导这些困难而重要的考虑方面发挥核心作用。最终,我们的目标是促进模型开发和管理团队的社区实践,强调对敏感变量的意识并优先考虑公平性。
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来源期刊
American Journal of Kidney Diseases
American Journal of Kidney Diseases 医学-泌尿学与肾脏学
CiteScore
20.40
自引率
2.30%
发文量
732
审稿时长
3-8 weeks
期刊介绍: The American Journal of Kidney Diseases (AJKD), the National Kidney Foundation's official journal, is globally recognized for its leadership in clinical nephrology content. Monthly, AJKD publishes original investigations on kidney diseases, hypertension, dialysis therapies, and kidney transplantation. Rigorous peer-review, statistical scrutiny, and a structured format characterize the publication process. Each issue includes case reports unveiling new diseases and potential therapeutic strategies.
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