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A probabilistic approach for SNP discovery in high-throughput human resequencing data
Author(s) -
Rose Hoberman,
Joana Dias,
Bing Ge,
Eef Harmsen,
Michael B. Mayhew,
Dominique J. Verlaan,
Tony Kwan,
Ken Dewar,
Mathieu Blanchette,
Tomi Pastinen
Publication year - 2009
Publication title -
genome research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 9.556
H-Index - 297
eISSN - 1549-5469
pISSN - 1088-9051
DOI - 10.1101/gr.092072.109
Subject(s) - international hapmap project , biology , genetics , computational biology , 1000 genomes project , false discovery rate , snp genotyping , genotyping , dna sequencing , probabilistic logic , identification (biology) , genotype , single nucleotide polymorphism , computer science , artificial intelligence , gene , botany
New high-throughput sequencing technologies are generating large amounts of sequence data, allowing the development of targeted large-scale resequencing studies. For these studies, accurate identification of polymorphic sites is crucial. Heterozygous sites are particularly difficult to identify, especially in regions of low coverage. We present a new strategy for identifying heterozygous sites in a single individual by using a machine learning approach that generates a heterozygosity score for each chromosomal position. Our approach also facilitates the identification of regions with unequal representation of two alleles and other poorly sequenced regions. The availability of confidence scores allows for a principled combination of sequencing results from multiple samples. We evaluate our method on a gold standard data genotype set from HapMap. We are able to classify sites in this data set as heterozygous or homozygous with 98.5% accuracy. In de novo data our probabilistic heterozygote detection (“ProbHD”) is able to identify 93% of heterozygous sites at a 99.9% overall agreement for genotype calls and close to 90% agreement for heterozygote calls. Overall, our data indicate that high-throughput resequencing of human genomic regions requires careful attention to systematic biases in sample preparation as well as sequence contexts, and that their impact can be alleviated by machine learning-based sequence analyses allowing more accurate extraction of true DNA variants.

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