Prediction for Progression Risk in Patients With COVID-19 Pneumonia: The CALL Score

Dong Ji(Chinese PLA General Hospital), Dawei Zhang(Chinese PLA General Hospital), Jing Xu(Fuyang Second People's Hospital), Chen Zhu(Chinese PLA General Hospital), Tieniu Yang(Anhui Medical University), Peng Zhao(Chinese PLA General Hospital), Guofeng Chen(Chinese PLA General Hospital), Gregory Cheng(Humanity & Health), Yu Wang(Humanity & Health), Jingfeng Bi(Chinese PLA General Hospital), Lin Tan(Fuyang Second People's Hospital), George Lau(Chinese PLA General Hospital), Enqiang Qin(Chinese PLA General Hospital)
Clinical Infectious Diseases
April 8, 2020
Cited by 721Open Access
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Abstract

BACKGROUND: We aimed to clarify high-risk factors for coronavirus disease 2019 (COVID-19) with multivariate analysis and establish a predictive model of disease progression to help clinicians better choose a therapeutic strategy. METHODS: All consecutive patients with COVID-19 admitted to Fuyang Second People's Hospital or the Fifth Medical Center of Chinese PLA General Hospital between 20 January and 22 February 2020 were enrolled and their clinical data were retrospectively collected. Multivariate Cox regression was used to identify risk factors associated with progression, which were then were incorporated into a nomogram to establish a novel prediction scoring model. ROC was used to assess the performance of the model. RESULTS: Overall, 208 patients were divided into a stable group (n = 168, 80.8%) and a progressive group (n = 40,19.2%) based on whether their conditions worsened during hospitalization. Univariate and multivariate analyses showed that comorbidity, older age, lower lymphocyte count, and higher lactate dehydrogenase at presentation were independent high-risk factors for COVID-19 progression. Incorporating these 4 factors, the nomogram achieved good concordance indexes of .86 (95% confidence interval [CI], .81-.91) and well-fitted calibration curves. A novel scoring model, named as CALL, was established; its area under the ROC was .91 (95% CI, .86-.94). Using a cutoff of 6 points, the positive and negative predictive values were 50.7% (38.9-62.4%) and 98.5% (94.7-99.8%), respectively. CONCLUSIONS: Using the CALL score model, clinicians can improve the therapeutic effect and reduce the mortality of COVID-19 with more accurate and efficient use of medical resources.


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