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Decision trees for early prediction of inadequate immune response to coronavirus infections: a pilot study on COVID-19

Articolo
Data di Pubblicazione:
2023
Citazione:
Decision trees for early prediction of inadequate immune response to coronavirus infections: a pilot study on COVID-19 / Pisano, F; Cannas, B; Fanni, A; Pasella, M; Canetto, B; Giglio, Sr; Mocci, S; Chessa, L; Perra, A; Littera, R. - In: FRONTIERS IN MEDICINE. - ISSN 2296-858X. - 10:(2023). [10.3389/fmed.2023.1230733]
Abstract:
Introduction: Few artificial intelligence models exist to predict severe forms of COVID-19. Most rely on post-infection laboratory data, hindering early treatment for high-risk individuals. Methods: This study developed a machine learning model to predict inherent risk of severe symptoms after contracting SARS-CoV-2. Using a Decision Tree trained on 153 Alpha variant patients, demographic, clinical and immunogenetic markers were considered. Model performance was assessed on Alpha and Delta variant datasets. Key risk factors included age, gender, absence of KIR2DS2 gene (alone or with HLA-C C1 group alleles), presence of 14-bp polymorphism in HLA-G gene, presence of KIR2DS5 gene, and presence of KIR telomeric region A/A. Results: The model achieved 83.01% accuracy for Alpha variant and 78.57% for Delta variant, with True Positive Rates of 80.82 and 77.78%, and True Negative Rates of 85.00% and 79.17%, respectively. The model showed high sensitivity in identifying individuals at risk. Discussion: The present study demonstrates the potential of AI algorithms, combined with demographic, epidemiologic, and immunogenetic data, in identifying individuals at high risk of severe COVID-19 and facilitating early treatment. Further studies are required for routine clinical integration.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
artificial intelligence; COVID-19; decision trees; disease severity; immunogenetic background; SARS-CoV-2
Elenco autori:
Pisano, F; Cannas, B; Fanni, A; Pasella, M; Canetto, B; Giglio, Sr; Mocci, S; Chessa, L; Perra, A; Littera, R
Autori di Ateneo:
GIGLIO SABRINA RITA
Link alla scheda completa:
https://iris.unisr.it/handle/20.500.11768/196249
Pubblicato in:
FRONTIERS IN MEDICINE
Journal
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https://www.frontiersin.org/articles/10.3389/fmed.2023.1230733/full
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