作者
Menachem Fromer, Jennifer L Moran, Kimberly Chambert, Eric Banks, Sarah E Bergen, Douglas M Ruderfer, Robert E Handsaker, Steven A McCarroll, Michael C O’Donovan, Michael J Owen, George Kirov, Patrick F Sullivan, Christina M Hultman, Pamela Sklar, Shaun M Purcell
发表日期
2012/10/5
期刊
The American Journal of Human Genetics
卷号
91
期号
4
页码范围
597-607
出版商
Cell Press
简介
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 …
引用总数
201320142015201620172018201920202021202220232024304258626257686968454725
学术搜索中的文章
M Fromer, JL Moran, K Chambert, E Banks, SE Bergen… - The American Journal of Human Genetics, 2012