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Machine learning for prediction of in-hospital mortality in coronavirus disease 2019 patients: results from an Italian multicenter study

Authors :
Marika Vezzoli
Riccardo Maria Inciardi
Chiara Oriecuia
Sara Paris
Natalia Herrera Murillo
Piergiuseppe Agostoni
Pietro Ameri
Antonio Bellasi
Rita Camporotondo
Claudia Canale
Valentina Carubelli
Stefano Carugo
Francesco Catagnano
Giambattista Danzi
Laura Dalla Vecchia
Stefano Giovinazzo
Massimiliano Gnecchi
Marco Guazzi
Anita Iorio
Maria Teresa La Rovere
Sergio Leonardi
Gloria Maccagni
Massimo Mapelli
Davide Margonato
Marco Merlo
Luca Monzo
Andrea Mortara
Vincenzo Nuzzi
Matteo Pagnesi
Massimo Piepoli
Italo Porto
Andrea Pozzi
Giovanni Provenzale
Filippo Sarullo
Michele Senni
Gianfranco Sinagra
Daniela Tomasoni
Marianna Adamo
Maurizio Volterrani
Roberto Maroldi
Marco Metra
Carlo Mario Lombardi
Claudia Specchia
Vezzoli, Marika
Inciardi, Riccardo Maria
Oriecuia, Chiara
Paris, Sara
Murillo, Natalia Herrera
Agostoni, Piergiuseppe
Ameri, Pietro
Bellasi, Antonio
Camporotondo, Rita
Canale, Claudia
Carubelli, Valentina
Carugo, Stefano
Catagnano, Francesco
Danzi, Giambattista
Dalla Vecchia, Laura
Giovinazzo, Stefano
Gnecchi, Massimiliano
Guazzi, Marco
Iorio, Anita
La Rovere, Maria Teresa
Leonardi, Sergio
Maccagni, Gloria
Mapelli, Massimo
Margonato, Davide
Merlo, Marco
Monzo, Luca
Mortara, Andrea
Nuzzi, Vincenzo
Pagnesi, Matteo
Piepoli, Massimo
Porto, Italo
Pozzi, Andrea
Provenzale, Giovanni
Sarullo, Filippo
Senni, Michele
Sinagra, Gianfranco
Tomasoni, Daniela
Adamo, Marianna
Volterrani, Maurizio
Maroldi, Roberto
Metra, Marco
Lombardi, Carlo Mario
Specchia, Claudia
Source :
Journal of cardiovascular medicine (Hagerstown, Md.). 23(7)
Publication Year :
2022

Abstract

Several risk factors have been identified to predict worse outcomes in patients affected by SARS-CoV-2 infection. Machine learning algorithms represent a novel approach to identifying a prediction model with a good discriminatory capacity to be easily used in clinical practice. The aim of this study was to obtain a risk score for in-hospital mortality in patients with coronavirus disease infection (COVID-19) based on a limited number of features collected at hospital admission.We studied an Italian cohort of consecutive adult Caucasian patients with laboratory-confirmed COVID-19 who were hospitalized in 13 cardiology units during Spring 2020. The Lasso procedure was used to select the most relevant covariates. The dataset was randomly divided into a training set containing 80% of the data, used for estimating the model, and a test set with the remaining 20%. A Random Forest modeled in-hospital mortality with the selected set of covariates: its accuracy was measured by means of the ROC curve, obtaining AUC, sensitivity, specificity and related 95% confidence interval (CI). This model was then compared with the one obtained by the Gradient Boosting Machine (GBM) and with logistic regression. Finally, to understand if each model has the same performance in the training and test set, the two AUCs were compared using the DeLong's test. Among 701 patients enrolled (mean age 67.2 ± 13.2 years, 69.5% male individuals), 165 (23.5%) died during a median hospitalization of 15 (IQR, 9-24) days. Variables selected by the Lasso procedure were: age, oxygen saturation, PaO2/FiO2, creatinine clearance and elevated troponin. Compared with those who survived, deceased patients were older, had a lower blood oxygenation, lower creatinine clearance levels and higher prevalence of elevated troponin (all P 0.001). The best performance out of the samples was provided by Random Forest with an AUC of 0.78 (95% CI: 0.68-0.88) and a sensitivity of 0.88 (95% CI: 0.58-1.00). Moreover, Random Forest was the unique model that provided similar performance in sample and out of sample (DeLong test P = 0.78).In a large COVID-19 population, we showed that a customizable machine learning-based score derived from clinical variables is feasible and effective for the prediction of in-hospital mortality.

Details

ISSN :
15582035
Volume :
23
Issue :
7
Database :
OpenAIRE
Journal :
Journal of cardiovascular medicine (Hagerstown, Md.)
Accession number :
edsair.doi.dedup.....3e883f18456f663b45260701a847f194