Author
Listed:
- Qimeng Yang
(Northwest A&F University)
- Jianfeng Sun
(University of Oxford)
- Xinyu Wang
(Northwest A&F University)
- Jiong Wang
(Northwest A&F University)
- Quanzhong Liu
(Northwest A&F University)
- Jinlong Ru
(Helmholtz Centre Munich - German Research Centre for Environmental Health)
- Xin Zhang
(Northwest A&F University)
- Sizhe Wang
(Northwest A&F University)
- Ran Hao
(Northwest A&F University)
- Peipei Bian
(Northwest A&F University)
- Xuelei Dai
(Northwest A&F University
Yazhouwan National Laboratory)
- Mian Gong
(Northwest A&F University
Chinese Academy of Agricultural Sciences (CAAS))
- Zhuangbiao Zhang
(Northwest A&F University)
- Ao Wang
(Northwest A&F University)
- Fengting Bai
(Northwest A&F University)
- Ran Li
(Northwest A&F University)
- Yudong Cai
(Northwest A&F University)
- Yu Jiang
(Northwest A&F University)
Abstract
Structural variations (SVs) are diverse forms of genetic alterations and drive a wide range of human diseases. Accurately genotyping SVs, particularly occurring at repetitive genomic regions, from short-read sequencing data remains challenging. Here, we introduce SVLearn, a machine-learning approach for genotyping bi-allelic SVs. It exploits a dual-reference strategy to engineer a curated set of genomic, alignment, and genotyping features based on a reference genome in concert with an allele-based alternative genome. Using 38,613 human-derived SVs, we show that SVLearn significantly outperforms four state-of-the-art tools, with precision improvements of up to 15.61% for insertions and 13.75% for deletions in repetitive regions. On two additional sets of 121,435 cattle SVs and 113,042 sheep SVs, SVLearn demonstrates a strong generalizability to cross-species genotype SVs with a weighted genotype concordance score of up to 90%. Notably, SVLearn enables accurate genotyping of SVs at low sequencing coverage, which is comparable to the accuracy at 30× coverage. Our studies suggest that SVLearn can accelerate the understanding of associations between the genome-scale, high-quality genotyped SVs and diseases across multiple species.
Suggested Citation
Qimeng Yang & Jianfeng Sun & Xinyu Wang & Jiong Wang & Quanzhong Liu & Jinlong Ru & Xin Zhang & Sizhe Wang & Ran Hao & Peipei Bian & Xuelei Dai & Mian Gong & Zhuangbiao Zhang & Ao Wang & Fengting Bai , 2025.
"SVLearn: a dual-reference machine learning approach enables accurate cross-species genotyping of structural variants,"
Nature Communications, Nature, vol. 16(1), pages 1-14, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-57756-z
DOI: 10.1038/s41467-025-57756-z
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