A machine-learning parsimonious multivariable predictive model of mortality risk in patients with Covid-19

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作者
Rita Murri
Jacopo Lenkowicz
Carlotta Masciocchi
Chiara Iacomini
Massimo Fantoni
Andrea Damiani
Antonio Marchetti
Paolo Domenico Angelo Sergi
Giovanni Arcuri
Alfredo Cesario
Stefano Patarnello
Massimo Antonelli
Rocco Bellantone
Roberto Bernabei
Stefania Boccia
Paolo Calabresi
Andrea Cambieri
Roberto Cauda
Cesare Colosimo
Filippo Crea
Ruggero De Maria
Valerio De Stefano
Francesco Franceschi
Antonio Gasbarrini
Ornella Parolini
Luca Richeldi
Maurizio Sanguinetti
Andrea Urbani
Maurizio Zega
Giovanni Scambia
Vincenzo Valentini
机构
[1] Fondazione Policlinico Universitario A. Gemelli IRCCS,Sezione di Malattie Infettive
[2] Università Cattolica del Sacro Cuore,undefined
[3] Fondazione Policlinico Universitario A. Gemelli IRCCS,undefined
[4] Università Cattolica Sacro Cuore,undefined
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The COVID-19 pandemic is impressively challenging the healthcare system. Several prognostic models have been validated but few of them are implemented in daily practice. The objective of the study was to validate a machine-learning risk prediction model using easy-to-obtain parameters to help to identify patients with COVID-19 who are at higher risk of death. The training cohort included all patients admitted to Fondazione Policlinico Gemelli with COVID-19 from March 5, 2020, to November 5, 2020. Afterward, the model was tested on all patients admitted to the same hospital with COVID-19 from November 6, 2020, to February 5, 2021. The primary outcome was in-hospital case-fatality risk. The out-of-sample performance of the model was estimated from the training set in terms of Area under the Receiving Operator Curve (AUROC) and classification matrix statistics by averaging the results of fivefold cross validation repeated 3-times and comparing the results with those obtained on the test set. An explanation analysis of the model, based on the SHapley Additive exPlanations (SHAP), is also presented. To assess the subsequent time evolution, the change in paO2/FiO2 (P/F) at 48 h after the baseline measurement was plotted against its baseline value. Among the 921 patients included in the training cohort, 120 died (13%). Variables selected for the model were age, platelet count, SpO2, blood urea nitrogen (BUN), hemoglobin, C-reactive protein, neutrophil count, and sodium. The results of the fivefold cross-validation repeated 3-times gave AUROC of 0.87, and statistics of the classification matrix to the Youden index as follows: sensitivity 0.840, specificity 0.774, negative predictive value 0.971. Then, the model was tested on a new population (n = 1463) in which the case-fatality rate was 22.6%. The test model showed AUROC 0.818, sensitivity 0.813, specificity 0.650, negative predictive value 0.922. Considering the first quartile of the predicted risk score (low-risk score group), the case-fatality rate was 1.6%, 17.8% in the second and third quartile (high-risk score group) and 53.5% in the fourth quartile (very high-risk score group). The three risk score groups showed good discrimination for the P/F value at admission, and a positive correlation was found for the low-risk class to P/F at 48 h after admission (adjusted R-squared = 0.48). We developed a predictive model of death for people with SARS-CoV-2 infection by including only easy-to-obtain variables (abnormal blood count, BUN, C-reactive protein, sodium and lower SpO2). It demonstrated good accuracy and high power of discrimination. The simplicity of the model makes the risk prediction applicable for patients in the Emergency Department, or during hospitalization. Although it is reasonable to assume that the model is also applicable in not-hospitalized persons, only appropriate studies can assess the accuracy of the model also for persons at home.
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