Using hospital administrative data to infer patient-patient contact via the consistent co-presence algorithm.

Jeffrey Lienert, Felix Reed-Tsochas, Laura Koehly, Christopher Steven Marcum
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引用次数: 1

Abstract

In health care settings, patients who are physically proximate to other patients (co-presence) for a meaningful amount of time may have differential health outcomes depending on who they are in contact with. How to best measure this co-presence, however is an open question and previous approaches have limitations that may make them inappropriate for complex health care settings. Here, we introduce a novel method which we term "consistent co-presence", that implicitly models the many complexities of patient scheduling and movement through a hospital by randomly perturbing the timing of patients' entry time into the health care system. This algorithm generates networks that can be employed in models of patient outcomes, such as 1-year mortality, and are preferred over previously established alternative algorithms from a model comparison perspective. These results indicate that consistent co-presence retains meaningful information about patient-patient interaction, which may affect outcomes relevant to health care practice. Furthermore, the generalizabiity of this approach allows it to be applied to a wide variety of complex systems.

利用医院管理数据,通过一致共在场算法推断患者-患者接触情况。
在卫生保健机构中,在有意义的时间内与其他患者身体接近(共同存在)的患者可能会产生不同的健康结果,这取决于他们与谁接触。然而,如何最好地衡量这种共同存在是一个悬而未决的问题,以前的方法有局限性,可能使它们不适合复杂的卫生保健环境。在这里,我们引入了一种我们称之为“一致共存”的新方法,该方法通过随机干扰患者进入医疗保健系统的时间,隐含地模拟了患者在医院的日程安排和移动的许多复杂性。该算法生成的网络可用于患者预后(如1年死亡率)模型,并且从模型比较的角度来看,优于先前建立的替代算法。这些结果表明,一致的共同存在保留了有关患者相互作用的有意义的信息,这可能会影响与医疗保健实践相关的结果。此外,这种方法的通用性使其能够应用于各种各样的复杂系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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