Department of Biostatistics and Medical Informatics, University of Wisconsin-Madison, Madison, Wisconsin.
Department of Population Health, The University of Texas at Austin, Austin, Texas.
Stat Med. 2019 Sep 10;38(20):3911-3935. doi: 10.1002/sim.8210. Epub 2019 Jun 11.
In emergency departments (EDs), care providers continuously weigh admissions against continued monitoring and treatment often without knowing their condition and health needs. To understand the decision process and its causal effect on outcomes, an observational study must contend with unobserved/missing information and a lack of exchangeability between admitted and discharged patients. Our goal was to provide a general framework to evaluate admission decisions from electronic healthcare records (EHRs). We describe admission decisions as a decision-making process in which the patient's health needs is a binary latent variable. We estimate latent health needs from EHR with only partial knowledge of the decision process (ie, initial evaluation, admission decision, length of stay). Estimated latent health needs are then used to understand the admission decision and the decision's causal impact on outcomes. For the latter, we assume potential outcomes are stochastically independent from the admission decision conditional on latent health needs. As a case study, we apply our approach to over 150 000 patient encounters with the ED from the University of Michigan Health System collected from August 2012 through July 2015. We estimate that while admitting a patient with higher latent needs reduces the 30-day risk of revisiting the ED or later being admitted through the ED by over 79%, admitting a patient with lower latent needs actually increases these 30-day risks by 3.0% and 7.6%, respectively.
在急诊科 (ED),医护人员在不断权衡患者的入院治疗与持续监测,而他们往往并不了解患者的病情和健康需求。为了了解决策过程及其对结果的因果影响,观察性研究必须应对未观察到/缺失的信息以及入院和出院患者之间的不可交换性。我们的目标是提供一个从电子健康记录 (EHR) 评估入院决策的通用框架。我们将入院决策描述为一个决策过程,其中患者的健康需求是一个二值潜在变量。我们仅根据对决策过程的部分了解(即初始评估、入院决策、住院时间),从 EHR 中估计潜在健康需求。然后,我们使用估计的潜在健康需求来了解入院决策及其对结果的决策因果影响。对于后者,我们假设潜在健康需求条件下,结果与入院决策是随机独立的。作为一个案例研究,我们将我们的方法应用于从 2012 年 8 月到 2015 年 7 月期间从密歇根大学健康系统的急诊科收集的超过 150,000 名患者的就诊情况。我们估计,虽然对具有更高潜在需求的患者进行入院治疗可将 30 天内再次就诊或通过 ED 再次入院的风险降低 79%以上,但对具有较低潜在需求的患者进行入院治疗实际上会分别将这两个 30 天的风险分别增加 3.0%和 7.6%。