4.6 Article

Copy-number variants in clinical genome sequencing: deployment and interpretation for rare and undiagnosed disease

Journal

GENETICS IN MEDICINE
Volume 21, Issue 5, Pages 1121-1130

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1038/s41436-018-0295-y

Keywords

whole genome sequencing (WGS); copy number variation (CNV); rare and undiagnosed disease; structural variation (SV); microarray

Funding

  1. Illumina iHope Program

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Purpose: Current diagnostic testing for genetic disorders involves serial use of specialized assays spanning multiple technologies. In principle, genome sequencing (GS) can detect all genomic pathogenic variant types on a single platform. Here we evaluate copy-number variant (CNV) calling as part of a clinically accredited GS test. Methods: We performed analytical validation of CNV calling on 17 reference samples, compared the sensitivity of GS-based variants with those from a clinical microarray, and set a bound on precision using orthogonal technologies. We developed a protocol for family-based analysis of GS-based CNV calls, and deployed this across a clinical cohort of 79 rare and undiagnosed cases. Results: We found that CNV calls from GS are at least as sensitive as those from microarrays, while only creating a modest increase in the number of variants interpreted (similar to 10 CNVs per case). We identified clinically significant CNVs in 15% of the first 79 cases analyzed, all of which were confirmed by an orthogonal approach. The pipeline also enabled discovery of a uniparental disomy (UPD) and a 50% mosaic trisomy 14. Directed analysis of select CNVs enabled breakpoint level resolution of genomic rearrangements and phasing of de novo CNVs. Conclusion: Robust identification of CNVs by GS is possible within a clinical testing environment.

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