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Predictive genetic panel for adult asthma using machine learning methods.
Gomes, Luciano Gama da Silva; Cruz, Álvaro Augusto Souza da; de Santana, Maria Borges Rabêlo; Pinheiro, Gabriela Pimentel; Santana, Cinthia Vila Nova; Santos, Carolina Barbosa Souza; Boorgula, Meher Preethi; Campbell, Monica; Machado, Adelmir de Souza; Veiga, Rafael Valente; Barnes, Kathleen C; Costa, Ryan Dos Santos; Figueiredo, Camila Alexandrina.
Afiliação
  • Gomes LGDS; Instituto de Ciências da Saúde, Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • Cruz ÁASD; Programa de Controle da Asma na Bahia (ProAR), Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • de Santana MBR; Instituto de Ciências da Saúde, Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • Pinheiro GP; Programa de Controle da Asma na Bahia (ProAR), Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • Santana CVN; Programa de Controle da Asma na Bahia (ProAR), Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • Santos CBS; Programa de Controle da Asma na Bahia (ProAR), Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • Boorgula MP; Department of Medicine, University of Colorado Denver, Aurora, Colo.
  • Campbell M; Department of Medicine, University of Colorado Denver, Aurora, Colo.
  • Machado AS; Instituto de Ciências da Saúde, Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • Veiga RV; Programa de Controle da Asma na Bahia (ProAR), Universidade Federal da Bahia, Salvador, Bahia, Brazil.
  • Barnes KC; Laboratory of Lymphocyte Signalling and Development, The Babraham Institute, Cambridge, United Kingdom.
  • Costa RDS; Department of Medicine, University of Colorado Denver, Aurora, Colo.
  • Figueiredo CA; Instituto de Ciências da Saúde, Universidade Federal da Bahia, Salvador, Bahia, Brazil.
J Allergy Clin Immunol Glob ; 3(3): 100282, 2024 Aug.
Article em En | MEDLINE | ID: mdl-38952894
ABSTRACT

Background:

Asthma is a chronic inflammatory disease of the airways that is heterogeneous and multifactorial, making its accurate characterization a complex process. Therefore, identifying the genetic variations associated with asthma and discovering the molecular interactions between the omics that confer risk of developing this disease will help us to unravel the biological pathways involved in its pathogenesis.

Objective:

We sought to develop a predictive genetic panel for asthma using machine learning methods.

Methods:

We tested 3 variable selection

methods:

Boruta's algorithm, the top 200 genome-wide association study markers according to their respective P values, and an elastic net regression. Ten different algorithms were chosen for the classification tests. A predictive panel was built on the basis of joint scores between the classification algorithms.

Results:

Two variable selection methods, Boruta and genome-wide association studies, were statistically similar in terms of the average accuracies generated, whereas elastic net had the worst overall performance. The predictive genetic panel was completed with 155 single-nucleotide variants, with 91.18% accuracy, 92.75% sensitivity, and 89.55% specificity using the support vector machine algorithm. The markers used range from known single-nucleotide variants to those not previously described in the literature. Our study shows potential in creating genetic prediction panels with tailored penalties per marker, aiding in the identification of optimal machine learning methods for intricate results.

Conclusions:

This method is able to classify asthma and nonasthma effectively, proving its potential utility in clinical prediction and diagnosis.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article