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学习临床工作流程以识别心力衰竭患者亚组。

Learning Clinical Workflows to Identify Subgroups of Heart Failure Patients.

作者信息

Yan Chao, Chen You, Li Bo, Liebovitz David, Malin Bradley

机构信息

Vanderbilt University, Nashville, TN.

University of Chicago, Chicago, IL.

出版信息

AMIA Annu Symp Proc. 2017 Feb 10;2016:1248-1257. eCollection 2016.

Abstract

Heart Failure (HF) is one of the most common indications for readmission to the hospital among elderly patients. This is due to the progressive nature of the disease, as well as its association with complex comorbidities (e.g., anemia, chronic kidney disease, chronic obstructive pulmonary disease, hyper- and hypothyroidism), which contribute to increased morbidity and mortality, as well as a reduced quality of life. Healthcare organizations (HCOs) have established diverse treatment plans for HF patients, but such routines are not always formalized and may, in fact, arise organically as a patient's management evolves over time. This investigation was motivated by the hypothesis that patients associated with a certain subgroup of HF should follow a similar workflow that, once made explicit, could be leveraged by an HCO to more effectively allocate resources and manage HF patients. Thus, in this paper, we introduce a method to identify subgroups of HF through a similarity analysis of event sequences documented in the clinical setting. Specifically, we 1) structure event sequences for HF patients based on the patterns of electronic medical record (EMR) system utilization, 2) identify subgroups of HF patients by applying a k-means clustering algorithm on utilization patterns, 3) learn clinical workflows for each subgroup, and 4) label each subgroup with diagnosis and procedure codes that are distinguishing in the set of all subgroups. To demonstrate its potential, we applied our method to EMR event logs for 785 HF inpatient stays over a 4 month period at a large academic medical center. Our method identified 8 subgroups of HF, each of which was found to associate with a canonical workflow inferred through an inductive mining algorithm. Each subgroup was further confirmed to be affiliated with specific comorbidities, such as hyperthyroidism and hypothyroidism.

摘要

心力衰竭(HF)是老年患者再次入院最常见的指征之一。这是由于该疾病的渐进性,以及它与复杂的合并症(如贫血、慢性肾病、慢性阻塞性肺疾病、甲状腺功能亢进和减退)相关,这些合并症会导致发病率和死亡率增加,以及生活质量下降。医疗保健组织(HCOs)已经为HF患者制定了多种治疗方案,但这些常规方案并不总是形式化的,实际上可能是随着患者管理随时间的演变而自然形成的。本研究的动机是基于这样一个假设,即与特定HF亚组相关的患者应该遵循类似的工作流程,一旦明确,HCOs就可以利用该流程更有效地分配资源并管理HF患者。因此,在本文中,我们介绍了一种通过对临床环境中记录的事件序列进行相似性分析来识别HF亚组的方法。具体来说,我们1)根据电子病历(EMR)系统的使用模式构建HF患者的事件序列,2)通过对使用模式应用k均值聚类算法来识别HF患者的亚组,3)学习每个亚组的临床工作流程,4)用在所有亚组集合中具有区分性的诊断和程序代码标记每个亚组。为了证明其潜力,我们将我们的方法应用于某大型学术医疗中心4个月期间785例HF住院患者的EMR事件日志。我们的方法识别出了8个HF亚组,每个亚组都与通过归纳挖掘算法推断出的典型工作流程相关。每个亚组进一步被证实与特定的合并症相关,如甲状腺功能亢进和减退。

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