RAPTR-SV: a hybrid method for the detection of structural variants

نویسندگان

  • Derek M. Bickhart
  • Jana L. Hutchison
  • Lingyang Xu
  • Robert D. Schnabel
  • Jeremy F. Taylor
  • James M. Reecy
  • Steven G. Schroeder
  • Curtis P. Van Tassell
  • Tad S. Sonstegard
  • George E. Liu
چکیده

MOTIVATION Identification of structural variants (SVs) in sequence data results in a large number of false positive calls using existing software, which overburdens subsequent validation. RESULTS Simulations using RAPTR-SV and other, similar algorithms for SV detection revealed that RAPTR-SV had superior sensitivity and precision, as it recovered 66.4% of simulated tandem duplications with a precision of 99.2%. When compared with calls made by Delly and LUMPY on available datasets from the 1000 genomes project, RAPTR-SV showed superior sensitivity for tandem duplications, as it identified 2-fold more duplications than Delly, while making ∼85% fewer duplication predictions. AVAILABILITY AND IMPLEMENTATION RAPTR-SV is written in Java and uses new features in the collections framework in the latest release of the Java version 8 language specifications. A compiled version of the software, instructions for usage and test results files are available on the GitHub repository page: https://github.com/njdbickhart/RAPTR-SV. CONTACT [email protected].

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عنوان ژورنال:
  • Bioinformatics

دوره 31 13  شماره 

صفحات  -

تاریخ انتشار 2015