评估基于种族和性别偏见的可避免医院事件预测模型。

IF 3.1 2区 医学 Q2 HEALTH CARE SCIENCES & SERVICES Health Services Research Pub Date : 2024-11-22 DOI:10.1111/1475-6773.14409
Leigh Goetschius, Ruichen Sun, Fei Han, Ian Stockwell, Morgan Henderson
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引用次数: 0

摘要

目的:评估可避免住院事件预测模型中是否存在种族和性别偏见:评估可避免医院(AH)事件预测模型中是否存在基于种族和性别的偏差:我们研究了马里兰州具有相似风险评分的医疗保险付费服务(FFS)受益人在真实 AH 事件风险方面是否存在种族或性别差异(n = 324,834 人)。数据来源和分析样本:受益人级别的风险评分来自 36 个月的医疗保险 FFS 申请(2019 年 4 月至 2022 年 3 月),并于 2022 年 5 月生成。在 2022 年 6 月的索赔中观察到了真正的 AH 事件:黑人患者的平均风险评分高于白人患者;然而,在控制预测风险的情况下,发生 AH 事件的可能性并不因种族而异(边际效应 [ME] = 0.0003,95%CI -0.0003 至 0.0009)。在控制风险水平的情况下,男性发生 AH 事件的可能性较低;然而,这种影响很小(ME = -0.0008,95% CI -0.0013~-0.0003),而且干预目标群体的性别差异也不大(ME = 0.0002,95% CI -0.0031~0.0036):我们采用了一种简单的偏差评估方法,在该模型中没有发现有意义的种族或性别偏差证据。我们鼓励将偏差检查纳入预测模型的开发和监控过程中。
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Evaluating a predictive model of avoidable hospital events for race- and sex-based bias.

Objective: To evaluate whether race- and sex-based biases are present in a predictive model of avoidable hospital (AH) events.

Study setting and design: We examined whether Medicare fee-for-service (FFS) beneficiaries in Maryland with similar risk scores differed in true AH event risk on the basis of race or sex (n = 324,834). This was operationalized as a logistic regression of true AH events on race or sex with fixed effects for risk score percentile.

Data sources and analytic sample: Beneficiary-level risk scores were derived from 36 months of Medicare FFS claims (April 2019-March 2022) and generated in May 2022. True AH events were observed in claims from June 2022.

Principal findings: Black patients had higher average risk scores than White patients; however, the likelihood of experiencing an AH event did not differ by race when controlling for predicted risk (Marginal Effect [ME] = 0.0003, 95%CI -0.0003 to 0.0009). AH event likelihood was lower in males when controlling for risk level; however, the effect was small (ME = -0.0008, 95% CI -0.0013 to -0.0003) and it did not differ by sex for the target group for intervention (ME = 0.0002, 95% CI -0.0031 to 0.0036).

Conclusions: We implemented a simple bias assessment methodology and found no evidence of meaningful race- or sex-based bias in this model. We encourage the incorporation of bias checks into predictive model development and monitoring processes.

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来源期刊
Health Services Research
Health Services Research 医学-卫生保健
CiteScore
4.80
自引率
5.90%
发文量
193
审稿时长
4-8 weeks
期刊介绍: Health Services Research (HSR) is a peer-reviewed scholarly journal that provides researchers and public and private policymakers with the latest research findings, methods, and concepts related to the financing, organization, delivery, evaluation, and outcomes of health services. Rated as one of the top journals in the fields of health policy and services and health care administration, HSR publishes outstanding articles reporting the findings of original investigations that expand knowledge and understanding of the wide-ranging field of health care and that will help to improve the health of individuals and communities.
期刊最新文献
Evaluating a predictive model of avoidable hospital events for race- and sex-based bias. Addressing social and health needs in health care: Characterizing case managers' work to address patient-defined goals. Changes in healthcare costs and utilization for Medicaid recipients who received supportive housing through a payer-community-based housing partnership. Exploring the health impacts of climate change: Challenges and considerations for health services research. Commercial insurers' market power and hospital prices in Medicaid managed care.
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