Acceptance of Automated Social Risk Scoring in the Emergency Department: Clinician, Staff, and Patient Perspectives.

IF 1.8 3区 医学 Q2 EMERGENCY MEDICINE Western Journal of Emergency Medicine Pub Date : 2024-07-01 DOI:10.5811/westjem.18577
Olena Mazurenko, Adam T Hirsh, Christopher A Harle, Cassidy McNamee, Joshua R Vest
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Abstract

Introduction: Healthcare organizations are under increasing pressure from policymakers, payers, and advocates to screen for and address patients' health-related social needs (HRSN). The emergency department (ED) presents several challenges to HRSN screening, and patients are frequently not screened for HRSNs. Predictive modeling using machine learning and artificial intelligence, approaches may address some pragmatic HRSN screening challenges in the ED. Because predictive modeling represents a substantial change from current approaches, in this study we explored the acceptability of HRSN predictive modeling in the ED.

Methods: Emergency clinicians, ED staff, and patient perspectives on the acceptability and usage of predictive modeling for HRSNs in the ED were obtained through in-depth semi-structured interviews (eight per group, total 24). All participants practiced at or had received care from an urban, Midwest, safety-net hospital system. We analyzed interview transcripts using a modified thematic analysis approach with consensus coding.

Results: Emergency clinicians, ED staff, and patients agreed that HRSN predictive modeling must lead to actionable responses and positive patient outcomes. Opinions about using predictive modeling results to initiate automatic referrals to HRSN services were mixed. Emergency clinicians and staff wanted transparency on data inputs and usage, demanded high performance, and expressed concern for unforeseen consequences. While accepting, patients were concerned that prediction models can miss individuals who required services and might perpetuate biases.

Conclusion: Emergency clinicians, ED staff, and patients expressed mostly positive views about using predictive modeling for HRSNs. Yet, clinicians, staff, and patients listed several contingent factors impacting the acceptance and implementation of HRSN prediction models in the ED.

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急诊科对社会风险自动评分的接受程度:临床医生、员工和患者的观点。
导言:来自政策制定者、支付者和倡导者的压力越来越大,要求医疗机构筛查并满足患者与健康相关的社会需求(HRSN)。急诊科(ED)在筛查与健康相关的社会需求(HRSN)方面面临诸多挑战,而且患者经常未接受 HRSN 筛查。使用机器学习和人工智能的预测建模方法可以解决急诊室中一些实用的 HRSN 筛查难题。由于预测建模是对现有方法的重大变革,因此在本研究中,我们探讨了急诊室对 HRSN 预测建模的接受程度:方法:通过深入的半结构式访谈(每组 8 人,共 24 人),了解急诊临床医生、急诊室工作人员和患者对急诊室 HRSN 预测模型的可接受性和使用情况的看法。所有参与者都在一家中西部城市安全网医院系统执业或接受过治疗。我们采用改良的主题分析法和共识编码法对访谈记录进行了分析:结果:急诊临床医生、急诊室工作人员和患者一致认为,HRSN 预测建模必须能带来可行的应对措施和积极的患者治疗效果。对于使用预测建模结果启动自动转诊至 HRSN 服务的意见不一。急诊临床医生和工作人员希望数据输入和使用透明化,要求高性能,并对不可预见的后果表示担忧。患者虽然表示接受,但也担心预测模型会漏掉需要服务的人,并可能使偏见长期存在:急诊临床医生、急诊室工作人员和患者对在 HRSN 中使用预测模型大多持积极态度。然而,临床医生、急诊室工作人员和患者列出了影响急诊室接受和实施 HRSN 预测模型的几个偶然因素。
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来源期刊
Western Journal of Emergency Medicine
Western Journal of Emergency Medicine Medicine-Emergency Medicine
CiteScore
5.30
自引率
3.20%
发文量
125
审稿时长
16 weeks
期刊介绍: WestJEM focuses on how the systems and delivery of emergency care affects health, health disparities, and health outcomes in communities and populations worldwide, including the impact of social conditions on the composition of patients seeking care in emergency departments.
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