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Bayesian network analysis of resistance pathways against HIV-1 protease inhibitors

Authors :
Brian Wynhoven
David Katzenstein
Vincent Soriano
Sunee Sirivichayakul
J.M. Shapiro
Robert W. Shafer
Joke Snoeck
Rosangela Rodrigues
K. Van Laethem
Ricardo Jorge Camacho
María Belén Bouzas
J Weber
Koya Ariyoshi
Yves Moreau
Koen Deforche
Deenan Pillay
Luís Fernando de Macedo Brígido
Wataru Sugiura
Zehava Grossman
Amilcar Tanuri
Marcio Soares
Praphan Phanuphak
P. R. Harrigan
Rami Kantor
P. Cahn
Tomi Silander
John R. Clarke
H. Rudich
Lynn Morris
Ana P. Carvalho
Patricia A. Cane
Anne-Mieke Vandamme
África Holguín
Source :
Infection, genetics and evolution : journal of molecular epidemiology and evolutionary genetics in infectious diseases. 7(3)
Publication Year :
2006

Abstract

Interpretation of Human Immunodeficiency Virus 1 (HIV-1) genotypic drug resistance is still a major challenge in the follow-up of antiviral therapy in infected patients. Because of the high degree of HIV-1 natural variation, complex interactions and stochastic behaviour of evolution, the role of resistance mutations is in many cases not well understood. Using Bayesian network learning of HIV-1 sequence data from diverse subtypes (A, B, C, F and G), we could determine the specific role of many resistance mutations against the protease inhibitors (PIs) nelfinavir (NFV), indinavir (IDV), and saquinavir (SQV). Such networks visualize relationships between treatment, selection of resistance mutations and presence of polymorphisms in a graphical way. The analysis identified 30N, 88S, and 90M for nelfinavir, 90M for saquinavir, and 82A/T and 46I/L for indinavir as most probable major resistance mutations. Moreover we found striking similarities for the role of many mutations against all of these drugs. For example, for all three inhibitors, we found that the novel mutation 89I was minor and associated with mutations at positions 90 and 71. Bayesian network learning provides an autonomous method to gain insight in the role of resistance mutations and the influence of HIV-1 natural variation. We successfully applied the method to three protease inhibitors. The analysis shows differences with current knowledge especially concerning resistance development in several non-B subtypes.

Details

ISSN :
15671348
Volume :
7
Issue :
3
Database :
OpenAIRE
Journal :
Infection, genetics and evolution : journal of molecular epidemiology and evolutionary genetics in infectious diseases
Accession number :
edsair.doi.dedup.....8521425f224cfc8c317d51188166e330