Different strategies for the detection of copy number variations from exome sequencing data

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Authors

VALLOVÁ Vladimíra HANDZUŠOVÁ Kristína WAYHELOVÁ Markéta BROŽ Petr MIKULÁŠOVÁ Aneta SMETANA Jan GAILLYOVÁ Renata KUGLÍK Petr

Year of publication 2023
Type Conference abstract
MU Faculty or unit

Faculty of Science

Citation
Description The development of special algorithms has recently brought copy-number variation (CNV) detection by exome sequencing (ES) much more to the forefront. There is no one-size-fits-all approach for reliable detection of CNVs from ES data. On the contrary, many different approaches combining capture kits and bioinformatics approaches are being tested for their detection. Total of fifteen samples with twenty rare CNVs (14,5 kb – 8 Mb) - using high-resolution chromosomal microarray analysis (CMA) as a standard - were selected for comparison of two different capture designs and five different read-depth based CNV calling strategies: Human Core Exome (HCE) from Twist Biosciences (CNVRobot (CNVR), in-house pipeline (IHP)) and SureSelect All Exon v7 (SSEL) from Agilent Technologies (Circular Binary Segmentation (CBS), Hidden Markov Model (HMM), ExomeDepth). Of the twenty rare CNVs tested, three strategies (CNVR and IHP for HCE and ExomeDepth for SSEL) were able to identify all of them. The CBS- and HMM-based strategies (SSEL) missed three and two CNVs, respectively. Differences were observed between the size of CNVs obtained by CMA and by the different ES CNV calling strategies. These differences arise from the different CMA probes and ES targets distributions along with the variable bioinformatics pipeline settings in the case of ES. In addition, ES CNV calling was able to detect intra-exonic rearrangements (in ZC4H2, GRIN2A, BRCA1, RNF125 genes), confirmed by qPCR. In summary, ES is a suitable approach for CNV detection. However, its reliability strongly depends on sequencing quality and data uniformity. In general, the combination of different CNV calling strategies can improve the reliability of CNV detection from ES data. Supported by Ministry of Health of the Czech Republic, grant nr. NU20-07-00145 and by Ministry of Health, Czech Republic - conceptual development of research organization (FNBr, 65269705). All rights reserved.
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