A predictive score for progression of COVID-19 in hospitalized persons: a cohort study

Abstract Accurate prediction of the risk of progression of coronavirus disease (COVID-19) is needed at the time of hospitalization. Logistic regression analyses are used to interrogate clinical and laboratory co-variates from every hospital admission from an area of 2 million people with sporadic ca...

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Autores principales: Jingbo Xu, Weida Wang, Honghui Ye, Wenzheng Pang, Pengfei Pang, Meiwen Tang, Feng Xie, Zhitao Li, Bixiang Li, Anqi Liang, Juan Zhuang, Jing Yang, Chunyu Zhang, Jiangnan Ren, Lin Tian, Zhonghe Li, Jinyu Xia, Robert P. Gale, Hong Shan, Yang Liang
Formato: article
Lenguaje:EN
Publicado: Nature Portfolio 2021
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Acceso en línea:https://doaj.org/article/43320e58c92a49ecb89ec27d60afd815
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Sumario:Abstract Accurate prediction of the risk of progression of coronavirus disease (COVID-19) is needed at the time of hospitalization. Logistic regression analyses are used to interrogate clinical and laboratory co-variates from every hospital admission from an area of 2 million people with sporadic cases. From a total of 98 subjects, 3 were severe COVID-19 on admission. From the remaining subjects, 24 developed severe/critical symptoms. The predictive model includes four co-variates: age (>60 years; odds ratio [OR] = 12 [2.3, 62]); blood oxygen saturation (<97%; OR = 10.4 [2.04, 53]); C-reactive protein (>5.75 mg/L; OR = 9.3 [1.5, 58]); and prothrombin time (>12.3 s; OR = 6.7 [1.1, 41]). Cutoff value is two factors, and the sensitivity and specificity are 96% and 78% respectively. The area under the receiver-operator characteristic curve is 0.937. This model is suitable in predicting which unselected newly hospitalized persons are at-risk to develop severe/critical COVID-19.