BMC Medical Research Methodology (Oct 2008)

Alternative methods to analyse the impact of HIV mutations on virological response to antiviral therapy

  • Neau Didier,
  • Breilh Dominique,
  • Pellegrin Isabelle,
  • Commenges Daniel,
  • Wittkop Linda,
  • Lacoste Denis,
  • Pellegrin Jean-Luc,
  • Chêne Geneviève,
  • Dabis François,
  • Thiébaut Rodolphe

DOI
https://doi.org/10.1186/1471-2288-8-68
Journal volume & issue
Vol. 8, no. 1
p. 68

Abstract

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Abstract Background Principal component analysis (PCA) and partial least square (PLS) regression may be useful to summarize the HIV genotypic information. Without pre-selection each mutation presented in at least one patient is considered with a different weight. We compared these two strategies with the construction of a usual genotypic score. Methods We used data from the ANRS-CO3 Aquitaine Cohort Zephir sub-study. We used a subset of 87 patients with a complete baseline genotype and plasma HIV-1 RNA available at baseline and at week 12. PCA and PLS components were determined with all mutations that had prevalences >0. For the genotypic score, mutations were selected in two steps: 1) p-value Results Virological failure was observed in 46 (53%) patients at week 12. Principal components and PLS components showed a good performance for the prediction of virological response in HIV infected patients. The cross-validated AUCs for the PCA, PLS and genotypic score were 0.880, 0.868 and 0.863, respectively. The strength of the effect of each mutation could be considered through PCA and PLS components. In contrast, each selected mutation contributes with the same weight for the calculation of the genotypic score. Furthermore, PCA and PLS regression helped to describe mutation clusters (e.g. 10, 46, 90). Conclusion In this dataset, PCA and PLS showed a good performance but their predictive ability was not clinically superior to that of the genotypic score.