Literature DB >> 33621668

Intronic Breakpoint Signatures Enhance Detection and Characterization of Clinically Relevant Germline Structural Variants.

Jeroen van den Akker1, Lawrence Hon2, Anjana Ondov2, Ziga Mahkovec2, Robert O'Connor2, Raymond C Chan2, Justin Lock2, Anjali D Zimmer2, Asha Rostamianfar2, Jeremy Ginsberg2, Annette Leon2, Scott Topper2.   

Abstract

The relevance of large copy number variants (CNVs) to hereditary disorders has been long recognized, and population sequencing efforts have chronicled many common structural variants (SVs). However, limited data are available on the clinical contribution of rare germline SVs. Here, a detailed characterization of SVs identified using targeted next-generation sequencing was performed. Across 50 genes associated with hereditary cancer and cardiovascular disorders, a minimum of 828 unique SVs were reported, including 584 fully characterized SVs. Almost 40% of CNVs were <5 kb, with one in three deletions impacting a single exon. Additionally, 36 mid-range deletions/duplications (50 to 250 bp), 21 mobile element insertions, 6 inversions, and 27 complex rearrangements were detected. This data set was used to model SV detection in a bioinformatics pipeline solely relying on read depth, which revealed that genome sequencing (30×) allows detection of 71%, a 500× panel only targeting coding regions 53%, and exome sequencing (100×) <20% of characterized SVs. SVs accounted for 14.1% of all unique pathogenic variants, supporting the importance of SVs in hereditary disorders. Robust SV detection requires an ensemble of variant-calling algorithms that utilize sequencing of intronic regions. These algorithms should use distinct data features representative of each class of mutational mechanism, including recombination between two sequences sharing high similarity, covariants inserted between CNV breakpoints, and complex rearrangements containing inverted sequences.
Copyright © 2021 Association for Molecular Pathology and American Society for Investigative Pathology. Published by Elsevier Inc. All rights reserved.

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Year:  2021        PMID: 33621668     DOI: 10.1016/j.jmoldx.2021.01.015

Source DB:  PubMed          Journal:  J Mol Diagn        ISSN: 1525-1578            Impact factor:   5.568


  3 in total

1.  Phenotype-Based Genetic Analysis Reveals Missing Heritability of ABCA4-Related Retinopathy: Deep Intronic Variants and Copy Number Variations.

Authors:  Lu Tian; Chunjie Chen; Yuning Song; Xiaohui Zhang; Ke Xu; Yue Xie; Zi-Bing Jin; Yang Li
Journal:  Invest Ophthalmol Vis Sci       Date:  2022-06-01       Impact factor: 4.925

2.  Detecting copy number variation in next generation sequencing data from diagnostic gene panels.

Authors:  Ashish Kumar Singh; Maren Fridtjofsen Olsen; Liss Anne Solberg Lavik; Trine Vold; Finn Drabløs; Wenche Sjursen
Journal:  BMC Med Genomics       Date:  2021-08-31       Impact factor: 3.063

3.  Germline breast cancer susceptibility genes, tumor characteristics, and survival.

Authors:  Jingmei Li; Mikael Hartman; Peh Joo Ho; Alexis J Khng; Hui Wen Loh; Weang-Kee Ho; Cheng Har Yip; Nur Aishah Mohd-Taib; Veronique Kiak Mien Tan; Benita Kiat-Tee Tan; Su-Ming Tan; Ern Yu Tan; Swee Ho Lim; Suniza Jamaris; Yirong Sim; Fuh Yong Wong; Joanne Ngeow; Elaine Hsuen Lim; Mei Chee Tai; Eldarina Azfar Wijaya; Soo Chin Lee; Ching Wan Chan; Shaik Ahmad Buhari; Patrick M Y Chan; Juliana J C Chen; Jaime Chin Mui Seah; Wai Peng Lee; Chi Wei Mok; Geok Hoon Lim; Evan Woo; Sung-Won Kim; Jong Won Lee; Min Hyuk Lee; Sue K Park; Alison M Dunning; Douglas F Easton; Marjanka K Schmidt; Soo-Hwang Teo
Journal:  Genome Med       Date:  2021-12-02       Impact factor: 11.117

  3 in total

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