医院单位容量管理中的入院控制偏差:占用信息障碍和决策噪音如何影响利用率

IF 0.1 4区 工程技术 Q4 ENGINEERING, MANUFACTURING
Song-Hee Kim, Jordan D. Tong, C. Peden
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引用次数: 15

摘要

在适当的病房为患者提供及时的护理既包括对患者需求的正确临床评估,也包括在面对随机患者到达和住院时间的情况下做出入院决定,从而有效地管理能力有限的病房。我们研究了人类在后一种操作管理任务中的决策行为。在医生和MTurk员工管理一个模拟医院单元的行为模型和对照实验中,我们确定了驱动系统性入院决策偏差的认知和环境因素。我们报告两个主要发现。首先,看似无害的“占用信息障碍”(例如,必须输入密码才能查看当前占用情况)可能导致一系列事件,导致医生系统地保持较低的单位利用率。具体来说,这些障碍导致医生在没有检查当前单元占用情况下做出大多数入院决定。然后,在他们做检查的时候,医生低估了可用床位的数量,因为入院的占用率增加比出院的占用率减少更明显。其次,决策相关的随机误差或“噪声”会导致医院单位在可预测模式下的利用率高于或低于最佳水平,具体取决于系统参数。我们提供的证据表明,这些模式是由于一些环境为医生提供了更多错误接收病人的机会,而另一些环境则提供了更多错误拒绝病人的机会。这些发现有助于确定临床医生何时以及为何可能由于人类认知局限性而做出低效决策,并提出缓解策略,以帮助医院单位改善其能力管理。这篇论文被运营管理的Charles Corbett接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Admission Control Biases in Hospital Unit Capacity Management: How Occupancy Information Hurdles and Decision Noise Impact Utilization
Providing patients with timely care from the appropriate unit involves both correct clinical evaluation of patient needs and making admission decisions to effectively manage a unit with limited capacity in the face of stochastic patient arrivals and lengths of stay. We study human decision behavior in the latter operations management task. Using behavioral models and controlled experiments in which physicians and MTurk workers manage a simulated hospital unit, we identify cognitive and environmental factors that drive systematic admission decision bias. We report on two main findings. First, seemingly innocuous “occupancy information hurdles” (e.g., having to type a password to view current occupancy) can cause a chain of events that leads physicians to maintain systematically lower unit utilization. Specifically, these hurdles cause physicians to make most admission decisions without checking the current unit occupancy. Then—between the times that they do check—physicians underestimate the number of available beds when occupancy increases from admissions are more salient than occupancy decreases from discharges. Second, decision-related random error or “noise” leads to higher- or lower-than-optimal utilization of hospital units in predictable patterns, depending on the system parameters. We provide evidence that these patterns are due to some settings providing more opportunity for physicians to mistakenly admit patients and other settings that provide more opportunity to mistakenly reject patients. These findings help identify when and why clinicians are likely to make inefficient decisions because of human cognitive limitations and suggest mitigation strategies to help hospital units improve their capacity management. This paper was accepted by Charles Corbett, operations management.
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来源期刊
Manufacturing Engineering
Manufacturing Engineering 工程技术-工程:制造
自引率
0.00%
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审稿时长
6-12 weeks
期刊介绍: Information not localized
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