4.5 Article

ExpansionHunter Denovo: a computational method for locating known and novel repeat expansions in short-read sequencing data

期刊

GENOME BIOLOGY
卷 21, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s13059-020-02017-z

关键词

Repeat expansions; Short tandem repeats; Whole-genome sequencing data; Genome-wide analysis; Friedreich ataxia; Myotonic dystrophy type 1; Huntington disease; Fragile X syndrome

资金

  1. BC Children's Hospital Research Institute Graduate Student Scholarship
  2. University of British Columbia's Advanced Research Computing
  3. Canadian Open Neuroscience Platform Research Scholar Award
  4. Australian National Health and Medical Research Council (NHMRC) [GNT1054618]
  5. NHMRC Senior Research Fellowship [GNT1102971]
  6. Victorian State Government Operational Infrastructure Support
  7. Australian Government NHMRC IRIISS
  8. European Research Council (ERC) under the European Union's Horizon 2020 research and innovation programme [772376 -EScORIAL]
  9. University of Toronto's McLaughlin Centre Accelerator Grant
  10. Nancy E.T. Fahrner Award
  11. Restracomp Award from The Hospital for Sick Children
  12. Canadian Institutes for Health Research Banting Postdoctoral Fellowship

向作者/读者索取更多资源

Repeat expansions are responsible for over 40 monogenic disorders, and undoubtedly more pathogenic repeat expansions remain to be discovered. Existing methods for detecting repeat expansions in short-read sequencing data require predefined repeat catalogs. Recent discoveries emphasize the need for methods that do not require pre-specified candidate repeats. To address this need, we introduce ExpansionHunter Denovo, an efficient catalog-free method for genome-wide repeat expansion detection. Analysis of real and simulated data shows that our method can identify large expansions of 41 out of 44 pathogenic repeats, including nine recently reported non-reference repeat expansions not discoverable via existing methods.

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