因成功而受惩罚?在评审平台上显示临床医院质量的自然实验

IF 5 3区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE Information Systems Research Pub Date : 2024-04-04 DOI:10.1287/isre.2021.0630
Lianlian (Dorothy) Jiang, Jinghui (Jove) Hou, Xiao Ma, Paul A. Pavlou
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引用次数: 0

摘要

医疗市场存在信息不对称的问题,限制了患者对医院做出明智选择的能力。为了弥补这一差距,Yelp 等点评平台开始在显示消费者点评的同时显示医院的临床质量数据。然而,我们的研究发现,Yelp 引入孕产妇护理临床质量衡量标准后,出乎意料地导致了人员配备不足的高质量医院在 Yelp 上的后续评分降低。利用精确的人流量数据和转移深度学习,我们发现,高质量但人员不足的医院经历了患者数量激增,这使其资源紧张,降低了患者满意度,从而导致负面评论。这一发现具有重大意义,表明揭示临床质量衡量标准会带来意想不到的后果,包括由于联邦资金减少而给医院造成的潜在经济损失。这项研究不仅有助于我们了解患者满意度的动态变化,还为高质量医院提供了可操作的见解,以减轻意外曝光对评论平台的负面影响。我们的研究强调了患者在决策过程中辨别客观临床质量衡量标准和自我报告的主观评价的重要性。这项研究将机器学习和转移深度学习技术应用于医疗分析,为信息披露、在线评论、患者满意度和医院管理之间的相互作用提供了更深入的理解。
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Punished for Success? A Natural Experiment of Displaying Clinical Hospital Quality on Review Platforms
The healthcare market struggles with information asymmetry, limiting patients’ ability to make informed hospital choices. Aiming to bridge this gap, review platforms like Yelp have begun displaying hospitals’ clinical quality data alongside consumer reviews. However, our research uncovers that Yelp’s introduction of maternity care clinical quality measures unexpectedly resulted in lower subsequent Yelp ratings for high-quality hospitals with insufficient staffing. Employing precise foot traffic data and transfer deep learning, we discovered that high-quality, yet understaffed, hospitals experienced a surge in patient volume, which strained their resources and diminished patient satisfaction, leading to negative reviews. This finding has significant implications, signaling the unintended consequences of revealing clinical quality measures, including potential financial losses for hospitals because of reduced federal funding. This research not only contributes to our understanding the dynamics of patient satisfaction but also, offers actionable insights for high-quality hospitals to mitigate the negative impacts of unexpected visibility on review platforms. Our research underscores the importance for patients to discern between objective clinical quality measures and self-reported subjective ratings in their decision-making process. This research applies machine learning and transfer deep learning techniques to healthcare analytics, offering a deeper understanding of the interplay between information disclosure, online reviews, patient satisfaction, and hospital management.
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来源期刊
CiteScore
9.10
自引率
8.20%
发文量
120
期刊介绍: ISR (Information Systems Research) is a journal of INFORMS, the Institute for Operations Research and the Management Sciences. Information Systems Research is a leading international journal of theory, research, and intellectual development, focused on information systems in organizations, institutions, the economy, and society.
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