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FusorSV: An algorithm for optimally combining data from multiple structural variation detection methods

Title
FusorSV: An algorithm for optimally combining data from multiple structural variation detection methods
Authors
Becker T.Lee W.-P.Leone J.Zhu Q.Zhang C.Liu S.Sargent J.Shanker K.Mil-homens A.Cerveira E.Ryan M.Cha J.Navarro F.C.P.Galeev T.Gerstein M.Mills R.E.Shin D.-G.Lee C.Malhotra A.
Ewha Authors
Charles Lee
SCOPUS Author ID
Charles Leescopusscopus
Issue Date
2018
Journal Title
Genome Biology
ISSN
1474-7596JCR Link
Citation
Genome Biology vol. 19, no. 1
Keywords
Copy number variationGenome rearrangementsNext generation sequencingStructural variation
Publisher
BioMed Central Ltd.
Indexed
SCOPUS WOS scopus
Document Type
Article
Abstract
Comprehensive and accurate identification of structural variations (SVs) from next generation sequencing data remains a major challenge. We develop FusorSV, which uses a data mining approach to assess performance and merge callsets from an ensemble of SV-calling algorithms. It includes a fusion model built using analysis of 27 deep-coverage human genomes from the 1000 Genomes Project. We identify 843 novel SV calls that were not reported by the 1000 Genomes Project for these 27 samples. Experimental validation of a subset of these calls yields a validation rate of 86.7%. FusorSV is available at https://github.com/TheJacksonLaboratory/SVE. © 2018 The Author(s).
DOI
10.1186/s13059-018-1404-6
Appears in Collections:
자연과학대학 > 생명과학전공 > Journal papers
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