Shade Julie K, Doshi Ashish N, Sung Eric, Popescu Dan M, Minhas Anum S, Gilotra Nisha A, Aronis Konstantinos N, Hays Allison G, Trayanova Natalia A
Department of Biomedical Engineering, Johns Hopkins University, Baltimore, Maryland, USA.
Alliance for Cardiovascular Diagnostic and Treatment Innovation, Johns Hopkins University, Baltimore, Maryland, USA.
JACC Adv. 2022 Jun;1(2):100043. doi: 10.1016/j.jacadv.2022.100043. Epub 2022 May 8.
COVID-19 infection carries significant morbidity and mortality. Current risk prediction for complications in COVID-19 is limited, and existing approaches fail to account for the dynamic course of the disease.
The purpose of this study was to develop and validate the COVID-HEART predictor, a novel continuously updating risk-prediction technology to forecast adverse events in hospitalized patients with COVID-19.
Retrospective registry data from patients with severe acute respiratory syndrome coronavirus 2 infection admitted to 5 hospitals were used to train COVID-HEART to predict all-cause mortality/cardiac arrest (AM/CA) and imaging-confirmed thromboembolic events (TEs) (n = 2,550 and n = 1,854, respectively). To assess COVID-HEART's performance in the face of rapidly changing clinical treatment guidelines, an additional 1,100 and 796 patients, admitted after the completion of development data collection, were used for testing. Leave-hospital-out validation was performed.
Over 20 iterations of temporally divided testing, the mean area under the receiver operating characteristic curve were 0.917 (95% confidence interval [CI]: 0.916-0.919) and 0.757 (95% CI: 0.751-0.763) for prediction of AM/CA and TE, respectively. The interquartile ranges of median early warning times were 14 to 21 hours for AM/CA and 12 to 60 hours for TE. The mean area under the receiver operating characteristic curve for the left-out hospitals were 0.956 (95% CI: 0.936-0.976) and 0.781 (95% CI: 0.642-0.919) for prediction of AM/CA and TE, respectively.
The continuously updating, fully interpretable COVID-HEART predictor accurately predicts AM/CA and TE within multiple time windows in hospitalized COVID-19 patients. In its current implementation, the predictor can facilitate practical, meaningful changes in patient triage and resource allocation by providing real-time risk scores for these outcomes. The potential utility of the predictor extends to COVID-19 patients after hospitalization and beyond COVID-19.
新型冠状病毒肺炎(COVID-19)感染会导致严重的发病率和死亡率。目前对COVID-19并发症的风险预测有限,现有方法未能考虑到该疾病的动态病程。
本研究的目的是开发并验证COVID-HEART预测模型,这是一种新型的持续更新的风险预测技术,用于预测COVID-19住院患者的不良事件。
利用来自5家医院收治的严重急性呼吸综合征冠状病毒2感染患者的回顾性登记数据,训练COVID-HEART以预测全因死亡率/心脏骤停(AM/CA)和影像学确诊的血栓栓塞事件(TEs)(分别为n = 2550例和n = 1854例)。为了评估COVID-HEART在面对快速变化的临床治疗指南时的性能,在开发数据收集完成后收治的另外1100例和796例患者用于测试。进行了留院外验证。
在超过20次的时间分割测试中,预测AM/CA和TE的受试者操作特征曲线下的平均面积分别为0.917(95%置信区间[CI]:0.916 - 0.919)和0.757(95%CI:0.751 - 0.763)。AM/CA的中位数早期预警时间四分位间距为14至21小时,TE为12至60小时。留院医院预测AM/CA和TE的受试者操作特征曲线下的平均面积分别为0.956(95%CI:0.936 - 0.976)和0.781(95%CI:0.642 - 0.919)。
持续更新、完全可解释的COVID-HEART预测模型能够准确预测COVID-19住院患者在多个时间窗口内的AM/CA和TE。在当前的应用中,该预测模型可以通过为这些结局提供实时风险评分,促进患者分诊和资源分配方面切实、有意义的改变。该预测模型的潜在用途扩展到COVID-19住院后的患者以及COVID-19之外的情况。