论文标题
重症监护病房患者敏锐度的可计算表型
Computable Phenotypes of Patient Acuity in the Intensive Care Unit
论文作者
论文摘要
持续监测和患者敏锐度评估是重症监护室(ICU)实践的关键方面,但两者都受到对医疗保健提供者的时间限制的限制。此外,预期临床轨迹仍然不精确。这项研究的目标是(1)使用电子健康记录中的自动可变检索发展敏锐度的电子表型,并且(2)描述了敏锐度状态之间的过渡,以说明ICU患者的临床轨迹。我们收集了两个单一中心的纵向电子健康记录数据集,该数据集为51,372名成年ICU患者(佛罗里达大学健康(UFH)Gainesville(GNV)和杰克逊维尔(JAX)录取。我们开发了每次ICU入院的四小时间隔来量化敏锐度状态的算法,并使用连续的敏锐度状态和K-均值聚类方法鉴定敏锐度表型。在UFH GNV数据集中有38,749例患者的51,073例入院,在UFH JAX数据集中为12,623例患者的患者接受了22,219例入院,至少有1个ICU持续了四个小时以上。有三种表型:持续稳定,持续不稳定,并从不稳定到稳定过渡。对于稳定的患者,大约0.7%-1.7%将过渡到不稳定,0.02%-0.1%到期,1.2%-3.4%将被排出,其余96%-97%的ICU每四个小时将保持稳定。对于不稳定的患者,大约6%-10%将过渡到稳定,0.4%-0.5%将到期,其余的89%-93%在接下来的四个小时内将在ICU中保持不稳定。我们每四个小时就开发了一次患者敏锐度状态的表型算法,同时被接纳为ICU。这种方法可能有助于开发预后和临床决策支持工具,以帮助患者,护理人员和提供者参与有关护理和患者价值观升级的共享决策过程。
Continuous monitoring and patient acuity assessments are key aspects of Intensive Care Unit (ICU) practice, but both are limited by time constraints imposed on healthcare providers. Moreover, anticipating clinical trajectories remains imprecise. The objectives of this study are to (1) develop an electronic phenotype of acuity using automated variable retrieval within the electronic health records and (2) describe transitions between acuity states that illustrate the clinical trajectories of ICU patients. We gathered two single-center, longitudinal electronic health record datasets for 51,372 adult ICU patients admitted to the University of Florida Health (UFH) Gainesville (GNV) and Jacksonville (JAX). We developed algorithms to quantify acuity status at four-hour intervals for each ICU admission and identify acuity phenotypes using continuous acuity status and k-means clustering approach. 51,073 admissions for 38,749 patients in the UFH GNV dataset and 22,219 admissions for 12,623 patients in the UFH JAX dataset had at least one ICU stay lasting more than four hours. There were three phenotypes: persistently stable, persistently unstable, and transitioning from unstable to stable. For stable patients, approximately 0.7%-1.7% would transition to unstable, 0.02%-0.1% would expire, 1.2%-3.4% would be discharged, and the remaining 96%-97% would remain stable in the ICU every four hours. For unstable patients, approximately 6%-10% would transition to stable, 0.4%-0.5% would expire, and the remaining 89%-93% would remain unstable in the ICU in the next four hours. We developed phenotyping algorithms for patient acuity status every four hours while admitted to the ICU. This approach may be useful in developing prognostic and clinical decision-support tools to aid patients, caregivers, and providers in shared decision-making processes regarding escalation of care and patient values.