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Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients

We present a genome polymorphisms/machine learning approach for severe COVID-19 prognosis. Ninety-six Brazilian severe COVID-19 patients and controls were genotyped for 296 innate immunity loci. Our model used a feature selection algorithm, namely recursive feature elimination coupled with a support...

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Autores principales: Pastor, André Filipe, Docena, Cássia, Rezende, Antônio Mauro, Oliveira, Flávio Rosendo da Silva, Sena, Marília de Albuquerque, de Morais, Clarice Neuenschwander Lins, Bresani-Salvi, Cristiane Campello, Vasconcelos, Luydson Richardson Silva, Valença, Kennya Danielle Campelo, Mariz, Carolline de Araújo, Brito, Carlos, Fonseca, Cláudio Duarte, Braga, Cynthia, Reis, Christian Robson de Souza, Marques, Ernesto Torres de Azevedo, Acioli-Santos, Bartolomeu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10059592/
https://www.ncbi.nlm.nih.gov/pubmed/36992353
http://dx.doi.org/10.3390/v15030645
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author Pastor, André Filipe
Docena, Cássia
Rezende, Antônio Mauro
Oliveira, Flávio Rosendo da Silva
Sena, Marília de Albuquerque
de Morais, Clarice Neuenschwander Lins
Bresani-Salvi, Cristiane Campello
Vasconcelos, Luydson Richardson Silva
Valença, Kennya Danielle Campelo
Mariz, Carolline de Araújo
Brito, Carlos
Fonseca, Cláudio Duarte
Braga, Cynthia
Reis, Christian Robson de Souza
Marques, Ernesto Torres de Azevedo
Acioli-Santos, Bartolomeu
author_facet Pastor, André Filipe
Docena, Cássia
Rezende, Antônio Mauro
Oliveira, Flávio Rosendo da Silva
Sena, Marília de Albuquerque
de Morais, Clarice Neuenschwander Lins
Bresani-Salvi, Cristiane Campello
Vasconcelos, Luydson Richardson Silva
Valença, Kennya Danielle Campelo
Mariz, Carolline de Araújo
Brito, Carlos
Fonseca, Cláudio Duarte
Braga, Cynthia
Reis, Christian Robson de Souza
Marques, Ernesto Torres de Azevedo
Acioli-Santos, Bartolomeu
author_sort Pastor, André Filipe
collection PubMed
description We present a genome polymorphisms/machine learning approach for severe COVID-19 prognosis. Ninety-six Brazilian severe COVID-19 patients and controls were genotyped for 296 innate immunity loci. Our model used a feature selection algorithm, namely recursive feature elimination coupled with a support vector machine, to find the optimal loci classification subset, followed by a support vector machine with the linear kernel (SVM-LK) to classify patients into the severe COVID-19 group. The best features that were selected by the SVM-RFE method included 12 SNPs in 12 genes: PD-L1, PD-L2, IL10RA, JAK2, STAT1, IFIT1, IFIH1, DC-SIGNR, IFNB1, IRAK4, IRF1, and IL10. During the COVID-19 prognosis step by SVM-LK, the metrics were: 85% accuracy, 80% sensitivity, and 90% specificity. In comparison, univariate analysis under the 12 selected SNPs showed some highlights for individual variant alleles that represented risk (PD-L1 and IFIT1) or protection (JAK2 and IFIH1). Variant genotypes carrying risk effects were represented by PD-L2 and IFIT1 genes. The proposed complex classification method can be used to identify individuals who are at a high risk of developing severe COVID-19 outcomes even in uninfected conditions, which is a disruptive concept in COVID-19 prognosis. Our results suggest that the genetic context is an important factor in the development of severe COVID-19.
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spelling pubmed-100595922023-03-30 Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients Pastor, André Filipe Docena, Cássia Rezende, Antônio Mauro Oliveira, Flávio Rosendo da Silva Sena, Marília de Albuquerque de Morais, Clarice Neuenschwander Lins Bresani-Salvi, Cristiane Campello Vasconcelos, Luydson Richardson Silva Valença, Kennya Danielle Campelo Mariz, Carolline de Araújo Brito, Carlos Fonseca, Cláudio Duarte Braga, Cynthia Reis, Christian Robson de Souza Marques, Ernesto Torres de Azevedo Acioli-Santos, Bartolomeu Viruses Article We present a genome polymorphisms/machine learning approach for severe COVID-19 prognosis. Ninety-six Brazilian severe COVID-19 patients and controls were genotyped for 296 innate immunity loci. Our model used a feature selection algorithm, namely recursive feature elimination coupled with a support vector machine, to find the optimal loci classification subset, followed by a support vector machine with the linear kernel (SVM-LK) to classify patients into the severe COVID-19 group. The best features that were selected by the SVM-RFE method included 12 SNPs in 12 genes: PD-L1, PD-L2, IL10RA, JAK2, STAT1, IFIT1, IFIH1, DC-SIGNR, IFNB1, IRAK4, IRF1, and IL10. During the COVID-19 prognosis step by SVM-LK, the metrics were: 85% accuracy, 80% sensitivity, and 90% specificity. In comparison, univariate analysis under the 12 selected SNPs showed some highlights for individual variant alleles that represented risk (PD-L1 and IFIT1) or protection (JAK2 and IFIH1). Variant genotypes carrying risk effects were represented by PD-L2 and IFIT1 genes. The proposed complex classification method can be used to identify individuals who are at a high risk of developing severe COVID-19 outcomes even in uninfected conditions, which is a disruptive concept in COVID-19 prognosis. Our results suggest that the genetic context is an important factor in the development of severe COVID-19. MDPI 2023-02-28 /pmc/articles/PMC10059592/ /pubmed/36992353 http://dx.doi.org/10.3390/v15030645 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Pastor, André Filipe
Docena, Cássia
Rezende, Antônio Mauro
Oliveira, Flávio Rosendo da Silva
Sena, Marília de Albuquerque
de Morais, Clarice Neuenschwander Lins
Bresani-Salvi, Cristiane Campello
Vasconcelos, Luydson Richardson Silva
Valença, Kennya Danielle Campelo
Mariz, Carolline de Araújo
Brito, Carlos
Fonseca, Cláudio Duarte
Braga, Cynthia
Reis, Christian Robson de Souza
Marques, Ernesto Torres de Azevedo
Acioli-Santos, Bartolomeu
Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients
title Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients
title_full Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients
title_fullStr Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients
title_full_unstemmed Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients
title_short Human Genome Polymorphisms and Computational Intelligence Approach Revealed a Complex Genomic Signature for COVID-19 Severity in Brazilian Patients
title_sort human genome polymorphisms and computational intelligence approach revealed a complex genomic signature for covid-19 severity in brazilian patients
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10059592/
https://www.ncbi.nlm.nih.gov/pubmed/36992353
http://dx.doi.org/10.3390/v15030645
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