Literature DB >> 12499299

Predicting HIV drug resistance with neural networks.

Sorin Drăghici1, R Brian Potter.   

Abstract

MOTIVATION: Drug resistance is a very important factor influencing the failure of current HIV therapies. The ability to predict the drug resistance of HIV protease mutants may be useful in developing more effective and longer lasting treatment regimens.
METHODS: The HIV resistance is predicted to two current protease inhibitors, Indinavir and Saquinavir. The problem was approached from two perspectives. First, a predictor was constructed based on the structural features of the HIV protease-drug inhibitor complex. A particular structure was represented by its list of contacts between the inhibitor and the protease. Next, a classifier was constructed based on the sequence data of various drug resistant mutants. In both cases, self-organizing maps were first used to extract the important features and cluster the patterns in an unsupervised manner. This was followed by subsequent labelling based on the known patterns in the training set.
RESULTS: The prediction performance of the classifiers was measured by cross-validation. The classifier using the structure information correctly classified previously unseen mutants with an accuracy of between 60 and 70%. Several architectures were tested on the more abundant sequence data. The best single classifier provided an accuracy of 68% and a coverage of 69%. Multiple networks were then combined into various majority voting schemes. The best combination yielded an average of 85% coverage and 78% accuracy on previously unseen data. This is more than two times better than the 33% accuracy expected from a random classifier.

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Year:  2003        PMID: 12499299     DOI: 10.1093/bioinformatics/19.1.98

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  31 in total

Review 1.  Methods of integrating data to uncover genotype-phenotype interactions.

Authors:  Marylyn D Ritchie; Emily R Holzinger; Ruowang Li; Sarah A Pendergrass; Dokyoon Kim
Journal:  Nat Rev Genet       Date:  2015-01-13       Impact factor: 53.242

2.  Involvement of novel human immunodeficiency virus type 1 reverse transcriptase mutations in the regulation of resistance to nucleoside inhibitors.

Authors:  Valentina Svicher; Tobias Sing; Maria Mercedes Santoro; Federica Forbici; Fátima Rodríguez-Barrios; Ada Bertoli; Niko Beerenwinkel; Maria Concetta Bellocchi; Federigo Gago; Antonella d'Arminio Monforte; Andrea Antinori; Thomas Lengauer; Francesca Ceccherini-Silberstein; Carlo Federico Perno
Journal:  J Virol       Date:  2006-07       Impact factor: 5.103

3.  Application of Radial Basis Function Network Tool for Correlation of CD4+ Count with Plasma Viral Load in HIV-Seropositive Individuals.

Authors:  Arnaw Kishore; Sumana M Neelambike
Journal:  J Clin Diagn Res       Date:  2016-04-01

4.  Use of the l1 norm for selection of sparse parameter sets that accurately predict drug response phenotype from viral genetic sequences.

Authors:  Rabinowitz Matthew; Milena Banjevic; A S Chan; Lance Myers; Roland Wolkowicz; Jessica Haberer; Joshua Singer
Journal:  AMIA Annu Symp Proc       Date:  2005

5.  Hybrid-genetic algorithm based descriptor optimization and QSAR models for predicting the biological activity of Tipranavir analogs for HIV protease inhibition.

Authors:  A Srinivas Reddy; Sunil Kumar; Rajni Garg
Journal:  J Mol Graph Model       Date:  2010-03-24       Impact factor: 2.518

6.  Computational mutation scanning and drug resistance mechanisms of HIV-1 protease inhibitors.

Authors:  Ge-Fei Hao; Guang-Fu Yang; Chang-Guo Zhan
Journal:  J Phys Chem B       Date:  2010-07-29       Impact factor: 2.991

7.  A Rough Set-Based Model of HIV-1 Reverse Transcriptase Resistome.

Authors:  Marcin Kierczak; Krzysztof Ginalski; Michał Dramiński; Jacek Koronacki; Witold Rudnicki; Jan Komorowski
Journal:  Bioinform Biol Insights       Date:  2009-10-05

8.  Mapping protease inhibitor resistance to human immunodeficiency virus type 1 sequence polymorphisms within patients.

Authors:  Art F Y Poon; Sergei L Kosakovsky Pond; Douglas D Richman; Simon D W Frost
Journal:  J Virol       Date:  2007-10-03       Impact factor: 5.103

Review 9.  Peptide bioinformatics: peptide classification using peptide machines.

Authors:  Zheng Rong Yang
Journal:  Methods Mol Biol       Date:  2008

10.  Machine learning integration for predicting the effect of single amino acid substitutions on protein stability.

Authors:  Ayşegül Ozen; Mehmet Gönen; Ethem Alpaydan; Türkan Haliloğlu
Journal:  BMC Struct Biol       Date:  2009-10-19
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