AUTHOR=Zhang Zhendong , Liu Yue , Li Xin , Liu Yadong , Wang Yadong , Jiang Tao
TITLE=HapKled: a haplotype-aware structural variant calling approach for Oxford nanopore sequencing data
JOURNAL=Frontiers in Genetics
VOLUME=15
YEAR=2024
URL=https://www.frontiersin.org/journals/genetics/articles/10.3389/fgene.2024.1435087
DOI=10.3389/fgene.2024.1435087
ISSN=1664-8021
ABSTRACT=
Introduction: Structural Variants (SVs) are a type of variation that can significantly influence phenotypes and cause diseases. Thus, the accurate detection of SVs is a vital part of modern genetic analysis. The advent of long-read sequencing technology ushers in a new era of more accurate and comprehensive SV calling, and many tools have been developed to call SVs using long-read data. Haplotype-tagging is a procedure that can tag haplotype information on reads and can thus potentially improve the SV detection; nevertheless, few methods make use of this information. In this article, we introduce HapKled, a new SV detection tool that can accurately detect SVs from Oxford Nanopore Technologies (ONT) long-read alignment data.
Methods: HapKled utilizes haplotype information underlying alignment data by conducting haplotype-tagging using Whatshap on the reads to improve the detection performance, with three unique calling mechanics including altering clustering conditions according to haplotype information of signatures, determination of similar SVs based on haplotype information, and slack filtering conditions based on haplotype quality.
Results: In our evaluations, HapKled outperformed state-of-the-art tools and can deliver better SV detection results on both simulated and real sequencing data. The code and experiments of HapKled can be obtained from https://github.com/CoREse/HapKled.
Discussion: With the superb SV detection performance that HapKled can deliver, HapKled could be useful in bioinformatics research, clinical diagnosis, and medical research and development.