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High-Accuracy Identification of Incident HIV-1 Infections Using a Sequence Clustering Based Diversity Measure

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  • Xia-Yu Xia
  • Meng Ge
  • Jenny H Hsi
  • Xiang He
  • Yu-Hua Ruan
  • Zhi-Xin Wang
  • Yi-Ming Shao
  • Xian-Ming Pan

Abstract

Accurate estimates of HIV-1 incidence are essential for monitoring epidemic trends and evaluating intervention efforts. However, the long asymptomatic stage of HIV-1 infection makes it difficult to effectively distinguish incident infections from chronic ones. Current incidence assays based on serology or viral sequence diversity are both still lacking in accuracy. In the present work, a sequence clustering based diversity (SCBD) assay was devised by utilizing the fact that viral sequences derived from each transmitted/founder (T/F) strain tend to cluster together at early stage, and that only the intra-cluster diversity is correlated with the time since HIV-1 infection. The dot-matrix pairwise alignment was used to eliminate the disproportional impact of insertion/deletions (indels) and recombination events, and so was the proportion of clusterable sequences (Pc) as an index to identify late chronic infections with declined viral genetic diversity. Tested on a dataset containing 398 incident and 163 chronic infection cases collected from the Los Alamos HIV database (last modified 2/8/2012), our SCBD method achieved 99.5% sensitivity and 98.8% specificity, with an overall accuracy of 99.3%. Further analysis and evaluation also suggested its performance was not affected by host factors such as the viral subtypes and transmission routes. The SCBD method demonstrated the potential of sequencing based techniques to become useful for identifying incident infections. Its use may be most advantageous for settings with low to moderate incidence relative to available resources. The online service is available at http://www.bioinfo.tsinghua.edu.cn:8080/SCBD/index.jsp.

Suggested Citation

  • Xia-Yu Xia & Meng Ge & Jenny H Hsi & Xiang He & Yu-Hua Ruan & Zhi-Xin Wang & Yi-Ming Shao & Xian-Ming Pan, 2014. "High-Accuracy Identification of Incident HIV-1 Infections Using a Sequence Clustering Based Diversity Measure," PLOS ONE, Public Library of Science, vol. 9(6), pages 1-9, June.
  • Handle: RePEc:plo:pone00:0100081
    DOI: 10.1371/journal.pone.0100081
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