Haplotype Phasing Using Semidefinite Programming

BIBE '05 Proceedings of the Fifth IEEE Symposium on Bioinformatics and Bioengineering(2005)

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摘要
Diploid organisms, such as humans, inherit one copy of each chromosome (haplotype) from each parent. The conflationof inherited haplotypes is called the genotype of the organism. In many disease association studies, the haplo-type data is more informative than the genotype data. Unfortunately, getting haplotype data experimentally is both expensive and difficult. The haplotype inference with pure parsimony (HPP) problem is the problem of finding a minimal set of haplotypes that resolve a given set of genotypes. We provide a Quadratic Integer Programming (QIP) formulation for the HPP problem, and describe an algorithm for the HPP problem based on a semi-definite programming (SDP) relaxation of that QIP program. We compare our approach with existing approaches. Further, we show that the proposed approach is capable of incorporating a variety of additional constraints, such as missing or erroneous genotype data, outliers etc.
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关键词
erroneous genotype data,hpp problem,minimal set,haplotype data,haplotype inference,semidefinite programming,qip program,haplo-type data,quadratic integer programming,haplotype phasing,genotype data,genetics,integer programming,quadratic programming
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