Validation of copy number variation analysis for next-generation sequencing diagnostics

被引:0
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作者
Jamie M Ellingford
Christopher Campbell
Stephanie Barton
Sanjeev Bhaskar
Saurabh Gupta
Rachel L Taylor
Panagiotis I Sergouniotis
Bradley Horn
Janine A Lamb
Michel Michaelides
Andrew R Webster
William G Newman
Binay Panda
Simon C Ramsden
Graeme CM Black
机构
[1] Manchester Centre for Genomic Medicine,Division of Evolution and Genomic Sciences
[2] Central Manchester University Hospitals NHS Foundation Trust,Division of Population Health
[3] Manchester Academic Health Sciences Centre,Department of Genetics
[4] St Mary’s Hospital,undefined
[5] Neuroscience and Mental Health Domain,undefined
[6] School of Health Sciences,undefined
[7] Faculty of Biology,undefined
[8] Medicines and Health,undefined
[9] University of Manchester,undefined
[10] Manchester Academic Health Science Centre,undefined
[11] Ganit Labs,undefined
[12] Bio-IT Centre,undefined
[13] Institute of Bioinformatics and Applied Biotechnology,undefined
[14] Health Services Research and Primary Care,undefined
[15] School of Health Sciences,undefined
[16] Faculty of Medicine,undefined
[17] Biology and Health,undefined
[18] University of Manchester,undefined
[19] Manchester Academic Health Science Centre,undefined
[20] Moorfields Eye Hospital NHS Foundation Trust,undefined
[21] UCL Institute of Ophthalmology,undefined
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摘要
Although a common cause of disease, copy number variants (CNVs) have not routinely been identified from next-generation sequencing (NGS) data in a clinical context. This study aimed to examine the sensitivity and specificity of a widely used software package, ExomeDepth, to identify CNVs from targeted NGS data sets. We benchmarked the accuracy of CNV detection using ExomeDepth v1.1.6 applied to targeted NGS data sets by comparison to CNV events detected through whole-genome sequencing for 25 individuals and determined the sensitivity and specificity of ExomeDepth applied to these targeted NGS data sets to be 100% and 99.8%, respectively. To define quality assurance metrics for CNV surveillance through ExomeDepth, we undertook simulation of single-exon (n=1000) and multiple-exon heterozygous deletion events (n=1749), determining a sensitivity of 97% (n=2749). We identified that the extent of sequencing coverage, the inter- and intra-sample variability in the depth of sequencing coverage and the composition of analysis regions are all important determinants of successful CNV surveillance through ExomeDepth. We then applied these quality assurance metrics during CNV surveillance for 140 individuals across 12 distinct clinical areas, encompassing over 500 potential rare disease diagnoses. All 140 individuals lacked molecular diagnoses after routine clinical NGS testing, and by application of ExomeDepth, we identified 17 CNVs contributing to the cause of a Mendelian disorder. Our findings support the integration of CNV detection using ExomeDepth v1.1.6 with routine targeted NGS diagnostic services for Mendelian disorders. Implementation of this strategy increases diagnostic yields and enhances clinical care.
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页码:719 / 724
页数:5
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