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Detecting false-positive signals in exome sequencing

โœ Scribed by Karin V. Fuentes Fajardo; David Adams; NISC Comparative Sequencing Program; Christopher E. Mason; Murat Sincan; Cynthia Tifft; Camilo Toro; Cornelius F Boerkoel; William Gahl; Thomas Markello


Publisher
John Wiley and Sons
Year
2012
Tongue
English
Weight
148 KB
Volume
33
Category
Article
ISSN
1059-7794

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โœฆ Synopsis


Disease gene discovery has been transformed by affordable sequencing of exomes and genomes. Identification of disease-causing mutations requires sifting through a large number of sequence variants. A subset of the variants are unlikely to be good candidates for disease causation based on one or more of the following criteria: (1) being located in genomic regions known to be highly polymorphic, (2) having characteristics suggesting assembly misalignment, and/or (3) being labeled as variants based on misleading reference genome information. We analyzed exome sequence data from 118 individuals in 29 families seen in the NIH Undiagnosed Diseases Program (UDP) to create lists of variants and genes with these characteristics. Specifically, we identified several groups of genes that are candidates for provisional exclusion during exome analysis: 23,389 positions with excess heterozygosity suggestive of alignment errors and 1,009 positions in which the hg18 human genome reference sequence appeared to contain a minor allele. Exclusion of such variants, which we provide in supplemental lists, will likely enhance identification of disease-causing mutations using exome sequence data.


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