| Literature DB >> 35753701 |
Varuni Sarwal1,2, Sebastian Niehus3,4, Ram Ayyala1, Minyoung Kim5, Aditya Sarkar6, Sei Chang1, Angela Lu1, Neha Rajkumar7, Nicholas Darfci-Maher1, Russell Littman1, Karishma Chhugani8, Arda Soylev9, Zoia Comarova10, Emily Wesel1, Jacqueline Castellanos1, Rahul Chikka1, Margaret G Distler1, Eleazar Eskin1,11,12, Jonathan Flint13, Serghei Mangul8.
Abstract
Advances in whole-genome sequencing (WGS) promise to enable the accurate and comprehensive structural variant (SV) discovery. Dissecting SVs from WGS data presents a substantial number of challenges and a plethora of SV detection methods have been developed. Currently, evidence that investigators can use to select appropriate SV detection tools is lacking. In this article, we have evaluated the performance of SV detection tools on mouse and human WGS data using a comprehensive polymerase chain reaction-confirmed gold standard set of SVs and the genome-in-a-bottle variant set, respectively. In contrast to the previous benchmarking studies, our gold standard dataset included a complete set of SVs allowing us to report both precision and sensitivity rates of the SV detection methods. Our study investigates the ability of the methods to detect deletions, thus providing an optimistic estimate of SV detection performance as the SV detection methods that fail to detect deletions are likely to miss more complex SVs. We found that SV detection tools varied widely in their performance, with several methods providing a good balance between sensitivity and precision. Additionally, we have determined the SV callers best suited for low- and ultralow-pass sequencing data as well as for different deletion length categories.Entities:
Keywords: Bioinformatics; Structural Variant; Variant calling
Mesh:
Year: 2022 PMID: 35753701 PMCID: PMC9294411 DOI: 10.1093/bib/bbac221
Source DB: PubMed Journal: Brief Bioinform ISSN: 1467-5463 Impact factor: 13.994