Quantifying Health Outcome Disparity in Invasive Methicillin-Resistant Staphylococcus aureus Infection using Fairness Algorithms on Real-World Data.

Q2 Computer Science
Inyoung Jun, Sarah E Ser, Scott A Cohen, Jie Xu, Robert J Lucero, Jiang Bian, Mattia Prosperi
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引用次数: 0

Abstract

This study quantifies health outcome disparities in invasive Methicillin-Resistant Staphylococcus aureus (MRSA) infections by leveraging a novel artificial intelligence (AI) fairness algorithm, the Fairness-Aware Causal paThs (FACTS) decomposition, and applying it to real-world electronic health record (EHR) data. We spatiotemporally linked 9 years of EHRs from a large healthcare provider in Florida, USA, with contextual social determinants of health (SDoH). We first created a causal structure graph connecting SDoH with individual clinical measurements before/upon diagnosis of invasive MRSA infection, treatments, side effects, and outcomes; then, we applied FACTS to quantify outcome potential disparities of different causal pathways including SDoH, clinical and demographic variables. We found moderate disparity with respect to demographics and SDoH, and all the top ranked pathways that led to outcome disparities in age, gender, race, and income, included comorbidity. Prior kidney impairment, vancomycin use, and timing were associated with racial disparity, while income, rurality, and available healthcare facilities contributed to gender disparity. From an intervention standpoint, our results highlight the necessity of devising policies that consider both clinical factors and SDoH. In conclusion, this work demonstrates a practical utility of fairness AI methods in public health settings.

在真实世界数据上使用公平算法量化侵袭性耐甲氧西林金黄色葡萄球菌感染的健康结果差异。
本研究利用新型人工智能(AI)公平算法--公平感知因果关系分解(FACTS),并将其应用于真实世界的电子健康记录(EHR)数据,量化了侵袭性耐甲氧西林金黄色葡萄球菌(MRSA)感染的健康结果差异。我们将美国佛罗里达州一家大型医疗保健提供商的 9 年电子健康记录与健康的社会决定因素(SDoH)进行了时空关联。我们首先创建了一个因果结构图,将 SDoH 与入侵性 MRSA 感染诊断前/诊断时的个人临床测量、治疗、副作用和结果联系起来;然后,我们应用 FACTS 对不同因果途径(包括 SDoH、临床和人口统计学变量)的潜在结果差异进行量化。我们发现,在人口统计学和 SDoH 方面存在中等程度的差异,而在年龄、性别、种族和收入方面导致结果差异的所有排名靠前的途径都包括合并症。既往肾功能损害、万古霉素的使用和时间与种族差异有关,而收入、农村地区和可用的医疗设施则导致了性别差异。从干预的角度来看,我们的研究结果强调了制定同时考虑临床因素和 SDoH 的政策的必要性。总之,这项工作证明了公平人工智能方法在公共卫生领域的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.50
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0.00%
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