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Atlas-CNV: a validated approach to call single-exon CNVs in the eMERGESeq gene panel

Authors :
Donna M. Muzny
Theodore Chiang
Emily E. Groopman
Yaping Yang
Ali G. Gharavi
Shu Wen
Jianhong Hu
Mariza de Andrade
Eric Venner
Magalie S. Leduc
Alexander Fedotov
Yunyun Jiang
Fritz J. Sedlazeck
Linyan Meng
Weimin Bi
John J. Connolly
Gail P. Jarvik
David S. Crosslin
Ian B. Stanaway
Hakon Hakonarson
Simon D. M. White
Tsung-Jung Wu
Xiuping Liu
Christine M. Eng
David Carrell
Eric Boerwinkle
David R. Murdock
William J Salerno
Daniel J. Schaid
Richard A. Gibbs
Source :
Genetics in Medicine
Publication Year :
2019
Publisher :
Nature Publishing Group US, 2019.

Abstract

Purpose:To provide a validated method to confidently identify exon-containing copy number variants (CNVs), with a low false discovery rate (FDR), in targeted sequencing data from a clinical laboratory with particular focus on single-exon CNVs.Methods:DNA sequence coverage data are normalized within each sample and subsequently exonic CNVs are identified in a batch of samples (midpool), when the target log2 ratio of the sample to the batch median exceeds defined thresholds. The quality of exonic CNV calls is assessed by C-scores (Z-like scores) using thresholds derived from gold standard samples and simulation studies. We integrate an ExonQC threshold to lower FDR and compare performance with alternate software (VisCap).Results:Thirteen CNVs were used as a truth set to validate Atlas-CNV and compared with VisCap. We demonstrated FDR reduction in validation, simulation and 10,926 eMERGESeq samples without sensitivity loss. Sixty-four multi-exon and 29 single-exon CNVs with high C-scores were assessed by MLPA.Conclusions:Atlas-CNV is validated as a method to identify exonic CNVs in targeted sequencing data generated in the clinical laboratory. The ExonQC and C-score assignment can reduce FDR (identification of targets with high variance) and improve calling accuracy of single-exon CNVs respectively. We proposed guidelines and criteria to identify high confidence single-exon CNVs.

Details

Language :
English
ISSN :
15300366 and 10983600
Volume :
21
Issue :
9
Database :
OpenAIRE
Journal :
Genetics in Medicine
Accession number :
edsair.doi.dedup.....28832f475be74bdfff0010ef749a1cba