School of Biomedical Engineering & Imaging Sciences, King's College London, Westminster Bridge Road, London SE17EH, UK.
MRC Unit for Lifelong Health and Ageing at UCL, University College London, London WC1E 7BH, UK.
Sci Adv. 2021 Mar 19;7(12). doi: 10.1126/sciadv.abd4177. Print 2021 Mar.
As no one symptom can predict disease severity or the need for dedicated medical support in coronavirus disease 2019 (COVID-19), we asked whether documenting symptom time series over the first few days informs outcome. Unsupervised time series clustering over symptom presentation was performed on data collected from a training dataset of completed cases enlisted early from the COVID Symptom Study Smartphone application, yielding six distinct symptom presentations. Clustering was validated on an independent replication dataset between 1 and 28 May 2020. Using the first 5 days of symptom logging, the ROC-AUC (receiver operating characteristic - area under the curve) of need for respiratory support was 78.8%, substantially outperforming personal characteristics alone (ROC-AUC 69.5%). Such an approach could be used to monitor at-risk patients and predict medical resource requirements days before they are required.
由于没有任何单一症状可以预测 2019 年冠状病毒病(COVID-19)的疾病严重程度或是否需要专门的医疗支持,我们想知道记录发病初期的症状时间序列是否能反映结局。对从 COVID Symptom Study 智能手机应用程序早期招募的已完成病例的训练数据集收集的数据进行了症状表现的无监督时间序列聚类,得出了六种不同的症状表现。在 2020 年 5 月 1 日至 28 日的独立复制数据集中对聚类进行了验证。使用发病后前 5 天的症状记录,呼吸支持需求的 ROC-AUC(受试者工作特征-曲线下面积)为 78.8%,明显优于仅使用个人特征的 ROC-AUC(69.5%)。这种方法可用于监测高危患者,并在需要之前几天预测医疗资源需求。