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Discovery and statistical genotyping of copy-number variation from whole-exome sequencing depth

Authors :
Sarah E. Bergen
Michael Conlon O'Donovan
Shaun Purcell
Steven A. McCarroll
Jennifer L. Moran
Patrick F. Sullivan
Christina M. Hultman
Pamela Sklar
George Kirov
Menachem Fromer
Kimberly Chambert
Robert E. Handsaker
Michael John Owen
Eric Banks
Douglas M. Ruderfer
Source :
American journal of human genetics. 91(4)
Publication Year :
2012

Abstract

Sequencing of gene-coding regions (the exome) is increasingly used for studying human disease, for which copy-number variants (CNVs) are a critical genetic component. However, detecting copy number from exome sequencing is challenging because of the noncontiguous nature of the captured exons. This is compounded by the complex relationship between read depth and copy number; this results from biases in targeted genomic hybridization, sequence factors such as GC content, and batching of samples during collection and sequencing. We present a statistical tool (exome hidden Markov model [XHMM]) that uses principal-component analysis (PCA) to normalize exome read depth and a hidden Markov model (HMM) to discover exon-resolution CNV and genotype variation across samples. We evaluate performance on 90 schizophrenia trios and 1,017 case-control samples. XHMM detects a median of two rare (

Details

ISSN :
15376605
Volume :
91
Issue :
4
Database :
OpenAIRE
Journal :
American journal of human genetics
Accession number :
edsair.doi.dedup.....d9aef7ac03b632c84a86618c615c62b8