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http://hdl.handle.net/20.500.12386/35852
Title: | Host genetics and COVID-19 severity: increasing the accuracy of latest severity scores by Boolean quantum features | Authors: | Martelloni, Gabriele TURCHI, Alessio Fallerini, Chiara Degl’innocenti, Andrea Baldassarri, Margherita Olmi, Simona Furini, Simone Renieri, Alessandra Mari, Francesca Daga, Sergio Meloni, Ilaria Bruttini, Mirella Croci, Susanna Lista, Mirjam Maffeo, Debora Pasquinelli, Elena BRUNELLI, Giulia Zguro, Kristina Serio, Viola Bianca Antolini, Enrica Basso, Simona Letizia Minetto, Samantha Rollo, Giulia Rozza, Martina Rina, Angela Tita, Rossella Mencarelli, Maria Antonietta Rizzo, Caterina Lo Pinto, Anna Maria Ariani, Francesca Montagnani, Francesca Tumbarello, Mario Rancan, Ilaria Fabbiani, Massimiliano Bianchi, Francesco Picchiotti, Nicola Bargagli, Elena Bergantini, Laura D’alessandro, Miriana Cameli, Paolo Bennett, David Anedda, Federico Marcantonio, Simona Scolletta, Sabino Franchi, Federico Mazzei, Maria Antonietta Guerrini, Susanna Conticini, Edoardo Cantarini, Luca Frediani, Bruno Tacconi, Danilo Raffaelli, Chiara Spertilli Emiliozzi, Arianna Feri, Marco Donati, Alice Scala, Raffaele Guidelli, Luca Spargi, Genni Corridi, Marta Nencioni, Cesira Croci, Leonardo Caldarelli, Gian Piero Romani, Davide Piacentini, Paolo Bandini, Maria Desanctis, Elena Cappelli, Silvia Canaccini, Anna Verzuri, Agnese Anemoli, Valentina Pisani, Manola Ognibene, Agostino Lorubbio, Maria Pancrazzi, Alessandro Vaghi, Massimo Monforte, Antonella D’Arminio Miraglia, Federica Gaia Mondelli, Mario U. Mantovani, Stefania Bruno, Raffaele Vecchia, Marco Maffezzoni, Marcello Martinelli, Enrico Girardis, Massimo Busani, Stefano Venturelli, Sophie Cossarizza, Andrea Antinori, Andrea Vergori, Alessandra Rusconi, Stefano Siano, Matteo Gabrieli, Arianna Riva, Agostino Francisci, Daniela Schiaroli, Elisabetta Pallotto, Carlo Parisi, Saverio Giuseppe Basso, Monica Panese, Sandro Baratti, Stefano |
Issue Date: | 2023 | Journal: | FRONTIERS IN GENETICS | Number: | 15 | Abstract: | The impact of common and rare variants in COVID-19 host genetics has been widely studied. In particular, in Fallerini et al. (Human genetics, 2022, 141, 147–173), common and rare variants were used to define an interpretable machine learning model for predicting COVID-19 severity. First, variants were converted into sets of Boolean features, depending on the absence or the presence of variants in each gene. An ensemble of LASSO logistic regression models was used to identify the most informative Boolean features with respect to the genetic bases of severity. After that, the Boolean features, selected by these logistic models, were combined into an Integrated PolyGenic Score (IPGS), which offers a very simple description of the contribution of host genetics in COVID-19 severity. IPGS leads to an accuracy of 55%–60% on different cohorts, and, after a logistic regression with both IPGS and age as inputs, it leads to an accuracy of 75%. The goal of this paper is to improve the previous results, using not only the most informative Boolean features with respect to the genetic bases of severity but also the information on host organs involved in the disease. In this study, we generalize the IPGS adding a statistical weight for each organ, through the transformation of Boolean features into “Boolean quantum features,” inspired by quantum mechanics. The organ coefficients were set via the application of the genetic algorithm PyGAD, and, after that, we defined two new integrated polygenic scores ((Formula presented.) and (Formula presented.)). By applying a logistic regression with both IPGS, ((Formula presented.) (or indifferently (Formula presented.)) and age as inputs, we reached an accuracy of 84%–86%, thus improving the results previously shown in Fallerini et al. (Human genetics, 2022, 141, 147–173) by a factor of 10%. | URI: | http://hdl.handle.net/20.500.12386/35852 | URL: | https://api.elsevier.com/content/abstract/scopus_id/85195035514 https://www.frontiersin.org/journals/genetics/articles/10.3389/fgene.2024.1362469/full |
ISSN: | 1664-8021 | DOI: | 10.3389/fgene.2024.1362469 | Fulltext: | open |
Appears in Collections: | 1.01 Articoli in rivista |
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2024,+Martelloni.pdf | PDF editoriale | 2.53 MB | Adobe PDF | View/Open |
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