Department of Respiratory and Critical Care Medicine, Beijing Institute of Respiratory Medicine, Beijing Chao-Yang Hospital, Capital Medical University, 8 Workers Stadium South Road, Chaoyang District, Beijing, China.
Medical Research Center, Beijing Institute of Respiratory Medicine and Beijing Chao-Yang Hospital, Capital Medical University, Beijing, China.
J Transl Med. 2024 Jul 4;22(1):626. doi: 10.1186/s12967-024-05342-0.
The persistence of coronavirus disease 2019 (COVID-19)-related hospitalization severely threatens medical systems worldwide and has increased the need for reliable detection of acute status and prediction of mortality. We applied a systems biology approach to discover acute-stage biomarkers that could predict mortality. A total 247 plasma samples were collected from 103 COVID-19 (52 surviving COVID-19 patients and 51 COVID-19 patients with mortality), 51 patients with other infectious diseases (IDCs) and 41 healthy controls (HCs). Paired plasma samples were obtained from survival COVID-19 patients within 1 day after hospital admission and 1-3 days before discharge. There were clear differences between COVID-19 patients and controls, as well as substantial differences between the acute and recovery phases of COVID-19. Samples from patients in the acute phase showed suppressed immunity and decreased steroid hormone biosynthesis, as well as elevated inflammation and proteasome activation. These findings were validated by enzyme-linked immunosorbent assays and metabolomic analyses in a larger cohort. Moreover, excessive proteasome activity was a prominent signature in the acute phase among patients with mortality, indicating that it may be a key cause of poor prognosis. Based on these features, we constructed a machine learning panel, including four proteins [C-reactive protein (CRP), proteasome subunit alpha type (PSMA)1, PSMA7, and proteasome subunit beta type (PSMB)1)] and one metabolite (urocortisone), to predict mortality among COVID-19 patients (area under the receiver operating characteristic curve: 0.976) on the first day of hospitalization. Our systematic analysis provides a novel method for the early prediction of mortality in hospitalized COVID-19 patients.
新型冠状病毒病 2019(COVID-19)相关住院患者的持续存在严重威胁着全球的医疗体系,并增加了对急性状态的可靠检测和死亡率预测的需求。我们应用系统生物学方法来发现可能预测死亡率的急性阶段生物标志物。共收集了 103 名 COVID-19 患者(52 名存活 COVID-19 患者和 51 名 COVID-19 死亡患者)、51 名其他传染病(IDCs)患者和 41 名健康对照者(HCs)的 247 份血浆样本。从存活的 COVID-19 患者入院后 1 天内和出院前 1-3 天获得配对的血浆样本。COVID-19 患者与对照组之间存在明显差异,COVID-19 患者的急性期和恢复期之间也存在明显差异。急性期患者的样本显示免疫抑制和类固醇激素生物合成减少,炎症和蛋白酶体激活增加。这些发现通过酶联免疫吸附试验和代谢组学分析在更大的队列中得到了验证。此外,在死亡率较高的患者急性期,过度的蛋白酶体活性是一个突出特征,表明这可能是预后不良的关键原因。基于这些特征,我们构建了一个机器学习面板,包括四个蛋白质[C 反应蛋白(CRP)、蛋白酶体亚单位 alpha 型(PSMA)1、PSMA7 和蛋白酶体亚单位 beta 型(PSMB)1]和一个代谢物(尿皮质酮),以预测 COVID-19 患者住院后第一天的死亡率(接受者操作特征曲线下面积:0.976)。我们的系统分析为预测住院 COVID-19 患者的死亡率提供了一种新方法。