A model-based information sharing protocol for profile Hidden Markov Models used for HIV-1 recombination detection

2014 | journal article. A publication with affiliation to the University of Göttingen.

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​A model-based information sharing protocol for profile Hidden Markov Models used for HIV-1 recombination detection​
Bulla, I.; Schultz, A.-K.; Chesneau, C.; Mark, T. & Serea, F.​ (2014) 
BMC Bioinformatics15 art. 205​.​ DOI: https://doi.org/10.1186/1471-2105-15-205 

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Authors
Bulla, Ingo; Schultz, Anne-Kathrin; Chesneau, Christophe; Mark, Tanya; Serea, Florin
Abstract
Background: In many applications, a family of nucleotide or protein sequences classified into several subfamilies has to be modeled. Profile Hidden Markov Models (pHMMs) are widely used for this task, modeling each subfamily separately by one pHMM. However, a major drawback of this approach is the difficulty of dealing with subfamilies composed of very few sequences. One of the most crucial bioinformatical tasks affected by the problem of small-size subfamilies is the subtyping of human immunodeficiency virus type 1 (HIV-1) sequences, i.e., HIV-1 subtypes for which only a small number of sequences is known. Results: To deal with small samples for particular subfamilies of HIV-1, we introduce a novel model-based information sharing protocol. It estimates the emission probabilities of the pHMM modeling a particular subfamily not only based on the nucleotide frequencies of the respective subfamily but also incorporating the nucleotide frequencies of all available subfamilies. To this end, the underlying probabilistic model mimics the pattern of commonality and variation between the subtypes with regards to the biological characteristics of HI viruses. In order to implement the proposed protocol, we make use of an existing HMM architecture and its associated inference engine. Conclusions: We apply the modified algorithm to classify HIV-1 sequence data in the form of partial HIV-1 sequences and semi-artificial recombinants. Thereby, we demonstrate that the performance of pHMMs can be significantly improved by the proposed technique. Moreover, we show that our algorithm performs significantly better than Simplot and Bootscanning.
Issue Date
2014
Status
published
Publisher
Biomed Central Ltd
Journal
BMC Bioinformatics 
ISSN
1471-2105

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