Literature DB >> 18390885

Clinically validated mutation scores for HIV-1 resistance to fosamprenavir/ritonavir.

B Masquelier1, K L Assoumou, D Descamps, L Bocket, J Cottalorda, A Ruffault, A G Marcelin, L Morand-Joubert, C Tamalet, C Charpentier, G Peytavin, Z Antoun, F Brun-Vézinet, D Costagliola.   

Abstract

BACKGROUND: We developed clinically relevant genotypic scores for resistance to fosamprenavir/ritonavir in HIV-1 protease inhibitor (PI)-experienced patients.
METHODS: PI-experienced patients with virological failure receiving fosamprenavir/ritonavir as the sole PI for at least 3 months and with detectable fosamprenavir plasma levels were included. The impact of baseline protease mutations on virological response (VR, i.e. decrease in plasma HIV-1 RNA between baseline and month 3) was analysed using the Mann-Whitney test. Mutations with prevalence >10% and P value <0.10 were retained. The Jonckheere-Terpstra test was used to select the combination of mutations most strongly associated with VR. The association between score and VR was assessed by multivariate backward regression.
RESULTS: In the 73 patients included, the median baseline HIV-1 RNA was 4.6 log(10) copies/mL (range: 2.7-6.9) and the mean decrease at month 3 was -1.07 +/- 1.40 log(10) copies/mL. Ninety per cent of the patients were infected by HIV-1 subtype B variants. Two fosamprenavir/ritonavir mutation scores were constructed: score A (L10F/I/V + L33F + M36I + I54L/M/V/A/T/S + I62V + V82A/F/C/G + I84V + L90M) was based only on mutations associated with a worse VR, whereas score B (L10FIV + L33F + M36I + I54L/M/V/A/T/S + A71V - V77I - N88S + L90M) also took into account favourable mutations. Both scores were independent predictors of VR, however, co-administration of tenofovir was associated with a worse VR and the presence of the N88S protease mutation and co-administration of enfuvirtide with a better VR.
CONCLUSIONS: These clinically validated mutation scores should be of interest for the clinical management of PI-experienced patients. The fosamprenavir/ritonavir score A was introduced in the 2006 ANRS algorithm along with isolated mutations I50V and V32I + I47V.

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Year:  2008        PMID: 18390885     DOI: 10.1093/jac/dkn127

Source DB:  PubMed          Journal:  J Antimicrob Chemother        ISSN: 0305-7453            Impact factor:   5.790


  10 in total

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Review 2.  HIV-1 drug resistance mutations: an updated framework for the second decade of HAART.

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3.  Factors associated with virological response to etravirine in nonnucleoside reverse transcriptase inhibitor-experienced HIV-1-infected patients.

Authors:  Anne-Genevieve Marcelin; Philippe Flandre; Diane Descamps; Laurence Morand-Joubert; Charlotte Charpentier; Jacques Izopet; Mary-Anne Trabaud; Henia Saoudin; Constance Delaugerre; Catherine Tamalet; Jacqueline Cottalorda; Magali Bouvier-Alias; Dominique Bettinger; Georges Dos Santos; Annick Ruffault; Chakib Alloui; Cecile Henquell; Sylvie Rogez; Francis Barin; Anne Signori-Schmuck; Sophie Vallet; Bernard Masquelier; Vincent Calvez
Journal:  Antimicrob Agents Chemother       Date:  2009-11-09       Impact factor: 5.191

4.  Genotypic resistance analysis of the virological response to fosamprenavir-ritonavir in protease inhibitor-experienced patients in CONTEXT and TRIAD clinical trials.

Authors:  Anne-Geneviève Marcelin; Philippe Flandre; Jean-Michel Molina; Christine Katlama; Patrick Yeni; Francois Raffi; Zeina Antoun; Mounir Ait-Khaled; Vincent Calvez
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10.  Scoring methods for building genotypic scores: an application to didanosine resistance in a large derivation set.

Authors:  Allal Houssaini; Lambert Assoumou; Veronica Miller; Vincent Calvez; Anne-Geneviève Marcelin; Philippe Flandre
Journal:  PLoS One       Date:  2013-03-21       Impact factor: 3.240

  10 in total

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