Login / Signup

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

Jingbo XuWei-da WangHonghui YeWenzheng PangPengfei PangMeiwen TangFeng XieZhitao LiBixiang LiAnqi LiangJuan ZhuangJing YangChunyu ZhangJiangnan RenLin TianZhonghe LiJinyu XiaRobert P GaleHong ShanYang Liang
Published in: NPJ primary care respiratory medicine (2021)
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.
Keyphrases
  • coronavirus disease
  • sars cov
  • respiratory syndrome coronavirus
  • early onset
  • emergency department
  • healthcare
  • late onset
  • high resolution
  • depressive symptoms
  • acute care