Department of Biostatistics and Bioinformatics, Duke University, Durham, North Carolina.
Department of Population Health Sciences, Duke University, Durham, North Carolina.
JAMA Netw Open. 2020 Nov 2;3(11):e2023547. doi: 10.1001/jamanetworkopen.2020.23547.
Hospitals ceased most elective procedures during the height of coronavirus disease 2019 (COVID-19) infections. As hospitals begin to recommence elective procedures, it is necessary to have a means to assess how resource intensive a given case may be.
To evaluate the development and performance of a clinical decision support tool to inform resource utilization for elective procedures.
DESIGN, SETTING, AND PARTICIPANTS: In this prognostic study, predictive modeling was used on retrospective electronic health records data from a large academic health system comprising 1 tertiary care hospital and 2 community hospitals of patients undergoing scheduled elective procedures from January 1, 2017, to March 1, 2020. Electronic health records data on case type, patient demographic characteristics, service utilization history, comorbidities, and medications were and abstracted and analyzed. Data were analyzed from April to June 2020.
Predicitons of hospital length of stay, intensive care unit length of stay, need for mechanical ventilation, and need to be discharged to a skilled nursing facility. These predictions were generated using the random forests algorithm. Predicted probabilities were turned into risk classifications designed to give assessments of resource utilization risk.
Data from the electronic health records of 42 199 patients from 3 hospitals were abstracted for analysis. The median length of stay was 2.3 days (range, 1.3-4.2 days), 6416 patients (15.2%) were admitted to the intensive care unit, 1624 (3.8%) received mechanical ventilation, and 2843 (6.7%) were discharged to a skilled nursing facility. Predictive performance was strong with an area under the receiver operator characteristic ranging from 0.76 to 0.93. Sensitivity of the high-risk and medium-risk groupings was set at 95%. The negative predictive value of the low-risk grouping was 99%. We integrated the models into a daily refreshing Tableau dashboard to guide decision-making.
The clinical decision support tool is currently being used by surgical leadership to inform case scheduling. This work shows the importance of a learning health care environment in surgical care, using quantitative modeling to guide decision-making.
在 2019 年冠状病毒病(COVID-19)感染高峰期,医院停止了大多数选择性手术。随着医院开始重新开展选择性手术,有必要有一种方法来评估给定病例的资源密集程度。
评估开发和使用临床决策支持工具以告知选择性手术资源利用的情况。
设计、地点和参与者:在这项预后研究中,预测模型用于分析来自一家大型学术健康系统的回顾性电子健康记录数据,该系统由一家 3 级护理医院和 2 家社区医院组成,这些患者于 2017 年 1 月 1 日至 2020 年 3 月 1 日期间接受了计划中的选择性手术。提取并分析了病例类型、患者人口统计学特征、服务使用历史、合并症和药物的电子健康记录数据。数据分析于 2020 年 4 月至 6 月进行。
预测住院时间、重症监护病房住院时间、需要机械通气和需要转至熟练护理机构的情况。这些预测是使用随机森林算法生成的。预测概率被转化为风险分类,旨在评估资源利用风险。
从 3 家医院的电子健康记录中提取了 42199 名患者的数据进行分析。中位住院时间为 2.3 天(范围为 1.3-4.2 天),6416 名患者(15.2%)被收入重症监护病房,1624 名患者(3.8%)接受机械通气,2843 名患者(6.7%)转至熟练护理机构。预测性能较强,接受者操作特征曲线下面积为 0.76 至 0.93。高风险和中风险组的敏感性设定为 95%。低风险组的阴性预测值为 99%。我们将模型集成到一个每日刷新的 Tableau 仪表板中,以指导决策。
该临床决策支持工具目前正由外科领导团队用于通知病例安排。这项工作表明了学习型医疗保健环境在外科护理中的重要性,它使用定量建模来指导决策。