Department of Electrical, Computer and Biomedical Engineering, University of Pavia, Pavia, Italy.
Dipartimento di Scienze Cliniche e Sperimentali dell'Università degli Studi di Brescia, Brescia, Italy.
Front Public Health. 2022 May 23;10:815674. doi: 10.3389/fpubh.2022.815674. eCollection 2022.
The impact of the COVID-19 pandemic involved the disruption of the processes of care and the need for immediately effective re-organizational procedures. In the context of digital health, it is of paramount importance to determine how a specific patients' population reflects into the healthcare dynamics of the hospital, to investigate how patients' sub-group/strata respond to the different care processes, in order to generate novel hypotheses regarding the most effective healthcare strategies. We present an analysis pipeline based on the heterogeneous collected data aimed at identifying the most frequent healthcare processes patterns, jointly analyzing them with demographic and physiological disease trajectories, and stratify the observed cohort on the basis of the mined patterns. This is a process-oriented pipeline which integrates process mining algorithms, and trajectory mining by topological data analyses and pseudo time approaches. Data was collected for 1,179 COVID-19 positive patients, hospitalized at the Italian Hospital "Istituti Clinici Salvatore Maugeri" in Lombardy, integrating different sources including text admission letters, EHR and hospital infrastructure data. We identified five temporal phenotypes, from laboratory values trajectories, which are characterized by statistically significant different death risk estimates. The process mining algorithms allowed splitting the data in sub-cohorts as function of the pandemic waves and of the temporal trajectories showing statistically significant differences in terms of events characteristics.
COVID-19 大流行的影响涉及到医疗护理流程的中断,以及对立即有效的重新组织程序的需求。在数字健康的背景下,至关重要的是要确定特定患者群体如何反映医院的医疗保健动态,研究患者亚组/阶层如何对不同的护理流程做出反应,以便针对最有效的医疗保健策略产生新的假设。我们提出了一个基于异构收集数据的分析管道,旨在识别最常见的医疗保健流程模式,将它们与人口统计学和生理疾病轨迹联合分析,并根据挖掘出的模式对观察队列进行分层。这是一个面向流程的管道,它集成了流程挖掘算法,以及拓扑数据分析和伪时间方法的轨迹挖掘。数据是为 1179 名在伦巴第的意大利医院“ Istituti Clinici Salvatore Maugeri ”住院的 COVID-19 阳性患者收集的,整合了包括文本入院信、电子病历和医院基础设施数据在内的不同来源。我们从实验室值轨迹中识别出了五个时间表型,它们的死亡风险估计有统计学上显著的不同。流程挖掘算法允许根据大流行波和显示出在事件特征方面具有统计学显著差异的时间轨迹将数据划分为子队列。