BMC Bioinformatics (Nov 2021)

Long-read sequencing settings for efficient structural variation detection based on comprehensive evaluation

  • Tao Jiang,
  • Shiqi Liu,
  • Shuqi Cao,
  • Yadong Liu,
  • Zhe Cui,
  • Yadong Wang,
  • Hongzhe Guo

DOI
https://doi.org/10.1186/s12859-021-04422-y
Journal volume & issue
Vol. 22, no. 1
pp. 1 – 17

Abstract

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Abstract Background With the rapid development of long-read sequencing technologies, it is possible to reveal the full spectrum of genetic structural variation (SV). However, the expensive cost, finite read length and high sequencing error for long-read data greatly limit the widespread adoption of SV calling. Therefore, it is urgent to establish guidance concerning sequencing coverage, read length, and error rate to maintain high SV yields and to achieve the lowest cost simultaneously. Results In this study, we generated a full range of simulated error-prone long-read datasets containing various sequencing settings and comprehensively evaluated the performance of SV calling with state-of-the-art long-read SV detection methods. The benchmark results demonstrate that almost all SV callers perform better when the long-read data reach 20× coverage, 20 kbp average read length, and approximately 10–7.5% or below 1% error rates. Furthermore, high sequencing coverage is the most influential factor in promoting SV calling, while it also directly determines the expensive costs. Conclusions Based on the comprehensive evaluation results, we provide important guidelines for selecting long-read sequencing settings for efficient SV calling. We believe these recommended settings of long-read sequencing will have extraordinary guiding significance in cutting-edge genomic studies and clinical practices.

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