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Detection and characterization of copy-number variants from exome sequencing in the DDD study

Authors :
Petr Danecek
Eugene J. Gardner
Tomas W. Fitzgerald
Giuseppe Gallone
Joanna Kaplanis
Ruth Y. Eberhardt
Caroline F. Wright
Helen V. Firth
Matthew E. Hurles
Source :
Genetics in Medicine Open, Vol 2, Iss , Pp 101818- (2024)
Publication Year :
2024
Publisher :
Elsevier, 2024.

Abstract

Purpose: Structural variants such as multiexon deletions and duplications are an important cause of disease but are often overlooked in standard exome/genome sequencing analysis. We aimed to evaluate the detection of copy-number variants (CNVs) from exome sequencing (ES) in comparison with genome-wide low-resolution and exon-resolution chromosomal microarrays (CMAs) and to characterize the properties of de novo CNVs in a large clinical cohort. Methods: We performed CNV detection using ES of 9859 parent-offspring trios in the Deciphering Developmental Disorders (DDD) study and compared them with CNVs detected from exon-resolution array comparative genomic hybridization in 5197 probands from the DDD study. Results: Integrating calls from multiple ES-based CNV algorithms using random forest machine learning generated a higher quality data set than using individual algorithms. Both ES- and array comparative genomic hybridization–based approaches had the same sensitivity of 89% and detected the same number of unique pathogenic CNVs not called by the other approach. Of DDD probands prescreened with low-resolution CMAs, 2.6% had a pathogenic CNV detected by higher-resolution assays. De novo CNVs were strongly enriched in known DD-associated genes and exhibited no bias in parental age or sex. Conclusion: ES-based CNV calling has higher sensitivity than low-resolution CMAs currently in clinical use and comparable sensitivity to exon-resolution CMA. With sufficient investment in bioinformatic analysis, exome-based CNV detection could replace low-resolution CMA for detecting pathogenic CNVs.

Details

Language :
English
ISSN :
29497744
Volume :
2
Issue :
101818-
Database :
Directory of Open Access Journals
Journal :
Genetics in Medicine Open
Publication Type :
Academic Journal
Accession number :
edsdoj.8e0772a2bdbe41f584339b04b2c8e9ed
Document Type :
article
Full Text :
https://doi.org/10.1016/j.gimo.2024.101818