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Exome copy number variant detection, analysis, and classification in a large cohort of families with undiagnosed rare genetic disease.

Authors :
Lemire, Gabrielle
Sanchis-Juan, Alba
Russell, Kathryn
Baxter, Samantha
Chao, Katherine R.
Singer-Berk, Moriel
Groopman, Emily
Wong, Isaac
England, Eleina
Goodrich, Julia
Pais, Lynn
Austin-Tse, Christina
DiTroia, Stephanie
O'Heir, Emily
Ganesh, Vijay S.
Wojcik, Monica H.
Evangelista, Emily
Snow, Hana
Osei-Owusu, Ikeoluwa
Fu, Jack
Source :
American Journal of Human Genetics. May2024, Vol. 111 Issue 5, p863-876. 14p.
Publication Year :
2024

Abstract

Copy number variants (CNVs) are significant contributors to the pathogenicity of rare genetic diseases and, with new innovative methods, can now reliably be identified from exome sequencing. Challenges still remain in accurate classification of CNV pathogenicity. CNV calling using GATK-gCNV was performed on exomes from a cohort of 6,633 families (15,759 individuals) with heterogeneous phenotypes and variable prior genetic testing collected at the Broad Institute Center for Mendelian Genomics of the Genomics Research to Elucidate the Genetics of Rare Diseases consortium and analyzed using the seqr platform. The addition of CNV detection to exome analysis identified causal CNVs for 171 families (2.6%). The estimated sizes of CNVs ranged from 293 bp to 80 Mb. The causal CNVs consisted of 140 deletions, 15 duplications, 3 suspected complex structural variants (SVs), 3 insertions, and 10 complex SVs, the latter two groups being identified by orthogonal confirmation methods. To classify CNV variant pathogenicity, we used the 2020 American College of Medical Genetics and Genomics/ClinGen CNV interpretation standards and developed additional criteria to evaluate allelic and functional data as well as variants on the X chromosome to further advance the framework. We interpreted 151 CNVs as likely pathogenic/pathogenic and 20 CNVs as high-interest variants of uncertain significance. Calling CNVs from existing exome data increases the diagnostic yield for individuals undiagnosed after standard testing approaches, providing a higher-resolution alternative to arrays at a fraction of the cost of genome sequencing. Our improvements to the classification approach advances the systematic framework to assess the pathogenicity of CNVs. Lemire et al. applied copy number variant (CNV) detection on exome sequencing from a cohort of 6,633 families with undiagnosed rare genetic disorders. With the resolution provided by exome sequencing, they identified a causative CNV in 2.6% of families and assessed CNV pathogenicity by applying an advanced classification approach. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00029297
Volume :
111
Issue :
5
Database :
Academic Search Index
Journal :
American Journal of Human Genetics
Publication Type :
Academic Journal
Accession number :
177032742
Full Text :
https://doi.org/10.1016/j.ajhg.2024.03.008