It is important to determine the risk for admission to the intensive care unit (ICU) in patients with COVID-19 presenting at the emergency department. Using artificial neural networks, we propose a new Data Ensemble Refinement Greedy Algorithm (DERGA) based on 15 easily accessible hematological indices. A database of 1596 patients with COVID-19 was used; it was divided into 1257 training datasets (80 % of the database) for training the algorithms and 339 testing datasets (20 % of the database) to check the reliability of the algorithms. The optimal combination of hematological indicators that gives the best prediction consists of only four hematological indicators as follows: neutrophil-to-lymphocyte ratio (NLR), lactate dehydrogenase, ferritin, and albumin. The best prediction corresponds to a particularly high accuracy of 97.12 %. In conclusion, our novel approach provides a robust model based only on basic hematological parameters for predicting the risk for ICU admission and optimize COVID-19 patient management in the clinical practice.
Giacomo Grasselli, Alberto Zanella, Eleonora Carlesso, Gaetano Florio, Arif Canakoglu, Giacomo Bellani, Nicola Bottino, Luca Cabrini, Gian Paolo Castelli, E Catena, Maurizio Cecconi, Danilo Cereda, Davide Chiumello, Andrea Forastieri, Giuseppe Foti, Marco Gemma, Riccardo Giudici, Lorenzo Grazioli, Andrea Lombardo, Ferdinando Luca Lorini, Fabiana Madotto, Alberto Mantovani,
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