Johns Hopkins University School of Medicine, Baltimore, Maryland (S.W., B.T.G., A.A.A., A.G., R.B., M.L.R.).
Johns Hopkins Bloomberg School of Public Health, Baltimore, Maryland (J.W., M.W., J.F.B., J.M., K.B., S.L.Z.).
Ann Intern Med. 2021 Jun;174(6):777-785. doi: 10.7326/M20-6754. Epub 2021 Mar 2.
Predicting the clinical trajectory of individual patients hospitalized with coronavirus disease 2019 (COVID-19) is challenging but necessary to inform clinical care. The majority of COVID-19 prognostic tools use only data present upon admission and do not incorporate changes occurring after admission.
To develop the Severe COVID-19 Adaptive Risk Predictor (SCARP) (https://rsconnect.biostat.jhsph.edu/covid_trajectory/), a novel tool that can provide dynamic risk predictions for progression from moderate disease to severe illness or death in patients with COVID-19 at any time within the first 14 days of their hospitalization.
Retrospective observational cohort study.
Five hospitals in Maryland and Washington, D.C.
Patients who were hospitalized between 5 March and 4 December 2020 with severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) confirmed by nucleic acid test and symptomatic disease.
A clinical registry for patients hospitalized with COVID-19 was the primary data source; data included demographic characteristics, admission source, comorbid conditions, time-varying vital signs, laboratory measurements, and clinical severity. Random forest for survival, longitudinal, and multivariate (RF-SLAM) data analysis was applied to predict the 1-day and 7-day risks for progression to severe disease or death for any given day during the first 14 days of hospitalization.
Among 3163 patients admitted with moderate COVID-19, 228 (7%) became severely ill or died in the next 24 hours; an additional 355 (11%) became severely ill or died in the next 7 days. The area under the receiver-operating characteristic curve (AUC) for 1-day risk predictions for progression to severe disease or death was 0.89 (95% CI, 0.88 to 0.90) and 0.89 (CI, 0.87 to 0.91) during the first and second weeks of hospitalization, respectively. The AUC for 7-day risk predictions for progression to severe disease or death was 0.83 (CI, 0.83 to 0.84) and 0.87 (CI, 0.86 to 0.89) during the first and second weeks of hospitalization, respectively.
The SCARP tool was developed by using data from a single health system.
Using the predictive power of RF-SLAM and longitudinal data from more than 3000 patients hospitalized with COVID-19, an interactive tool was developed that rapidly and accurately provides the probability of an individual patient's progression to severe illness or death on the basis of readily available clinical information.
Hopkins inHealth and COVID-19 Administrative Supplement for the HHS Region 3 Treatment Center from the Office of the Assistant Secretary for Preparedness and Response.
预测因 2019 年冠状病毒病(COVID-19)住院的个体患者的临床病程具有挑战性,但对于为临床护理提供信息是必要的。大多数 COVID-19 预后工具仅使用入院时的现有数据,并且不纳入入院后发生的变化。
开发严重 COVID-19 适应性风险预测器(SCARP)(https://rsconnect.biostat.jhsph.edu/covid_trajectory/),这是一种新工具,可在 COVID-19 患者入院后 14 天内的任何时间,针对从中度疾病进展为严重疾病或死亡的风险,提供动态风险预测。
回顾性观察队列研究。
马里兰州和华盛顿特区的五家医院。
2020 年 3 月 5 日至 12 月 4 日期间因严重急性呼吸综合征冠状病毒 2(SARS-CoV-2)住院并通过核酸检测和有症状疾病确诊的患者。
COVID-19 住院患者的临床登记册是主要数据来源;数据包括人口统计学特征、入院来源、合并症、随时间变化的生命体征、实验室测量值和临床严重程度。随机森林用于生存、纵向和多变量(RF-SLAM)数据分析,以预测在入院后 14 天内的任何给定日期进展为严重疾病或死亡的 1 天和 7 天风险。
在 3163 名中度 COVID-19 入院患者中,228 名(7%)在接下来的 24 小时内病情恶化或死亡;另外 355 名(11%)在接下来的 7 天内病情恶化或死亡。1 天风险预测进展为严重疾病或死亡的受试者工作特征曲线(ROC)曲线下面积(AUC)为 0.89(95%CI,0.88 至 0.90),入院后第一周和第二周分别为 0.89(CI,0.87 至 0.91)。7 天风险预测进展为严重疾病或死亡的 AUC 为 0.83(CI,0.83 至 0.84)和 0.87(CI,0.86 至 0.89),分别在入院后第一周和第二周。
SCARP 工具是使用来自单一医疗系统的数据开发的。
使用来自 3000 多名 COVID-19 住院患者的 RF-SLAM 预测能力和纵向数据,开发了一个交互式工具,可以快速准确地根据现有临床信息提供个体患者病情恶化或死亡的概率。
霍普金斯大学健康公司(Hopkins inHealth)和 COVID-19 行政补充计划,供 HHS 地区 3 号治疗中心使用,资金来自卫生与公众服务部助理部长准备和应对办公室。