Clinical risk scores for the early prediction of severe outcomes in patients hospitalized for COVID-19

Author:

Ageno Walter,Cogliati Chiara,Perego Martina,Girelli Domenico,Crisafulli Ernesto,Pizzolo Francesca,Olivieri Oliviero,Cattaneo Marco,Benetti Alberto,Corradini Elena,Bertù Lorenza,Pietrangelo Antonello,Caiano Lucia Maria,Magni Federica,Tombolini Elisabetta,Aloise Chiara,Casanova Francesca Maria,Peroni Benedetta,Ricci Andrea,Scarlini Stefania,Silvestri Ivan,Morandi Matteo,Pezzato Sara,Stefani Francesca,Trevisan Virginia,

Abstract

AbstractCoronavirus disease of 2019 (COVID-19) is associated with severe acute respiratory failure. Early identification of high-risk COVID-19 patients is crucial. We aimed to derive and validate a simple score for the prediction of severe outcomes. A retrospective cohort study of patients hospitalized for COVID-19 was carried out by the Italian Society of Internal Medicine. Epidemiological, clinical, laboratory, and treatment variables were collected at hospital admission at five hospitals. Three algorithm selection models were used to construct a predictive risk score: backward Selection, Least Absolute Shrinkage and Selection Operator (LASSO), and Random Forest. Severe outcome was defined as the composite of need for non-invasive ventilation, need for orotracheal intubation, or death. A total of 610 patients were included in the analysis, 313 had a severe outcome. The subset for the derivation analysis included 335 patients, the subset for the validation analysis 275 patients. The LASSO selection identified 6 variables (age, history of coronary heart disease, CRP, AST, D-dimer, and neutrophil/lymphocyte ratio) and resulted in the best performing score with an area under the curve of 0.79 in the derivation cohort and 0.80 in the validation cohort. Using a cut-off of 7 out of 13 points, sensitivity was 0.93, specificity 0.34, positive predictive value 0.59, and negative predictive value 0.82. The proposed score can identify patients at low risk for severe outcome who can be safely managed in a low-intensity setting after hospital admission for COVID-19.

Funder

Università degli Studi dell'Insubria

Publisher

Springer Science and Business Media LLC

Subject

Emergency Medicine,Internal Medicine

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