OBJECTIVES: This study aimed to develop a genotypic method to predict HIV-1 coreceptor usage by employing the nucleotide sequence of the env gene in a tree-augmented naive Bayes (TAN) classifier, and to evaluate its accuracy in prediction compared with other available tools. METHODS: A wrapper data-mining strategy interleaved with a TAN algorithm was employed to evaluate the predictor value of every single-nucleotide position throughout the HIV-1 env gene. Based on these results, different nucleotide positions were selected to develop a TAN classifier, which was employed to predict the coreceptor tropism of all the full-length env gene sequences with information on coreceptor tropism currently available at the Los Alamos HIV Sequence Database. RESULTS: Employing 26 nucleotide positions in the TAN classifier, an accuracy of 95.6%, a specificity (identification of CCR5-tropic viruses) of 99.4% and a sensitivity (identification of CXCR4/dual-tropic viruses) of 80.5% were achieved for the in silico cross-validation. Compared with the phenotypic determination of coreceptor usage, the TAN algorithm achieved more accurate predictions than WebPSSM and Geno2pheno [coreceptor] (P<0.05). CONCLUSIONS: The use of the methodology presented in this work constitutes a robust strategy to identify genetic patterns throughout the HIV-1 env gene differently present in CCR5-tropic and CXCR4/dual-tropic viruses. Moreover, the TAN classifier can be used as a genotypic tool to predict the coreceptor usage of HIV-1 isolates reaching more accurate predictions than with other widely used genotypic tools. The use of this algorithm could improve the correct prescribing of CCR5 antagonist drugs to HIV-1-infected patients.
OBJECTIVES: This study aimed to develop a genotypic method to predict HIV-1 coreceptor usage by employing the nucleotide sequence of the env gene in a tree-augmented naive Bayes (TAN) classifier, and to evaluate its accuracy in prediction compared with other available tools. METHODS: A wrapper data-mining strategy interleaved with a TAN algorithm was employed to evaluate the predictor value of every single-nucleotide position throughout the HIV-1env gene. Based on these results, different nucleotide positions were selected to develop a TAN classifier, which was employed to predict the coreceptor tropism of all the full-length env gene sequences with information on coreceptor tropism currently available at the Los Alamos HIV Sequence Database. RESULTS: Employing 26 nucleotide positions in the TAN classifier, an accuracy of 95.6%, a specificity (identification of CCR5-tropic viruses) of 99.4% and a sensitivity (identification of CXCR4/dual-tropic viruses) of 80.5% were achieved for the in silico cross-validation. Compared with the phenotypic determination of coreceptor usage, the TAN algorithm achieved more accurate predictions than WebPSSM and Geno2pheno [coreceptor] (P<0.05). CONCLUSIONS: The use of the methodology presented in this work constitutes a robust strategy to identify genetic patterns throughout the HIV-1env gene differently present in CCR5-tropic and CXCR4/dual-tropic viruses. Moreover, the TAN classifier can be used as a genotypic tool to predict the coreceptor usage of HIV-1 isolates reaching more accurate predictions than with other widely used genotypic tools. The use of this algorithm could improve the correct prescribing of CCR5 antagonist drugs to HIV-1-infectedpatients.
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Authors: Kieran Cashin; Lachlan R Gray; Katherine L Harvey; Danielle Perez-Bercoff; Guinevere Q Lee; Jasminka Sterjovski; Michael Roche; James F Demarest; Fraser Drummond; P Richard Harrigan; Melissa J Churchill; Paul R Gorry Journal: Sci Rep Date: 2015-02-25 Impact factor: 4.379
Authors: Elena Pacheco-Martínez; Evangelina Figueroa-Medina; Carlos Villarreal; Germinal Cocho; José L Medina-Franco; Oscar Méndez-Lucio; Leonor Huerta Journal: Virol J Date: 2016-02-16 Impact factor: 4.099
Authors: Francisco Díez-Fuertes; Humberto Erick De La Torre-Tarazona; Esther Calonge; Maria Pernas; María Del Mar Alonso-Socas; Laura Capa; Javier García-Pérez; Anavaj Sakuntabhai; José Alcamí Journal: Sci Rep Date: 2019-10-03 Impact factor: 4.379