Detection of clinically relevant copy number variants with whole-exome sequencing
Publication year
2013Source
Human Mutation, 34, 10, (2013), pp. 1439-48ISSN
Publication type
Article / Letter to editor

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Organization
Human Genetics
Dermatology
Journal title
Human Mutation
Volume
vol. 34
Issue
iss. 10
Page start
p. 1439
Page end
p. 48
Subject
NCMLS 6: Genetics and epigenetic pathways of disease IGMD 3: Genomic disorders and inherited multi-system disordersAbstract
Copy number variation (CNV) is a common source of genetic variation that has been implicated in many genomic disorders. This has resulted in the widespread application of genomic microarrays as a first-tier diagnostic tool for CNV detection. More recently, whole-exome sequencing (WES) has been proven successful for the detection of clinically relevant point mutations and small insertion-deletions exome wide. We evaluate the utility of short-read WES (SOLiD 5500xl) to detect clinically relevant CNVs in DNA from 10 patients with intellectual disability and compare these results to data from two independent high-resolution microarrays. Eleven of the 12 clinically relevant CNVs were detected via read-depth analysis of WES data; a heterozygous single-exon deletion remained undetected by all algorithms evaluated. Although the detection power of WES for small CNVs currently does not match that of high-resolution microarray platforms, we show that the majority (88%) of rare coding CNVs containing three or more exons are successfully identified by WES. These results show that the CNV detection resolution of WES is comparable to that of medium-resolution genomic microarrays commonly used as clinical assays. The combined detection of point mutations, indels, and CNVs makes WES a very attractive first-tier diagnostic test for genetically heterogeneous disorders.
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- Academic publications [232155]
- Electronic publications [115359]
- Faculty of Medical Sciences [89071]
- Open Access publications [82669]
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