BMC Bioinformatics (May 2007)

Constrained hidden Markov models for population-based haplotyping

  • Toivonen Hannu,
  • Eronen Lauri,
  • Mielikäinen Taneli,
  • Landwehr Niels,
  • Mannila Heikki

DOI
https://doi.org/10.1186/1471-2105-8-S2-S9
Journal volume & issue
Vol. 8, no. Suppl 2
p. S9

Abstract

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Abstract Background Haplotype Reconstruction is the problem of resolving the hidden phase information in genotype data obtained from laboratory measurements. Solving this problem is an important intermediate step in gene association studies, which seek to uncover the genetic basis of complex diseases. We propose a novel approach for haplotype reconstruction based on constrained hidden Markov models. Models are constructed by incrementally refining and regularizing the structure of a simple generative model for genotype data under Hardy-Weinberg equilibrium. Results The proposed method is evaluated on real-world and simulated population data. Results show that it is competitive with other recently proposed methods in terms of reconstruction accuracy, while offering a particularly good trade-off between computational costs and quality of results for large datasets. Conclusion Relatively simple probabilistic approaches for haplotype reconstruction based on structured hidden Markov models are competitive with more complex, well-established techniques in this field.