Open Access
SVLearn: a dual-reference machine learning approach enables accurate cross-species genotyping of structural variants
Qimeng Yang
1
,
Jianfeng Sun
2
,
Xinyu Wang
1
,
Jiong Wang
1
,
Quanzhong Liu
3
,
Jinlong Ru
4
,
Xin Zhang
3
,
Sizhe Wang
3
,
Hao Ran
3
,
Peipei Bian
1
,
Xuelei Dai
1, 5
,
Mian Gong
1, 6
,
Zhuangbiao Zhang
1
,
Ao Wang
1
,
Fengting Bai
1
,
Ran Li
1
,
Yudong Cai
1
,
Yu Jiang
1
1
3
5
Yazhouwan National Laboratory, Hainan, China
|
Publication type: Journal Article
Publication date: 2025-03-11
scimago Q1
wos Q1
SJR: 4.761
CiteScore: 23.4
Impact factor: 15.7
ISSN: 20411723
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. Accurately genotyping structural variations (SVs) from short-read sequencing data is challenging. Here, the authors introduce SVLearn for precise genotyping of bi-allelic SVs, demonstrating robust cross-species generalizability across multiple coverage levels.
Found
Nothing found, try to update filter.
Found
Nothing found, try to update filter.
Are you a researcher?
Create a profile to get free access to personal recommendations for colleagues and new articles.
Metrics
8
Total citations:
8
Citations from 0:
0
Cite this
GOST |
RIS |
BibTex
Cite this
GOST
Copy
Yang Q. et al. SVLearn: a dual-reference machine learning approach enables accurate cross-species genotyping of structural variants // Nature Communications. 2025. Vol. 16. No. 1. 2406
GOST all authors (up to 50)
Copy
Yang Q., Sun J., Wang X., Wang J., Liu Q., Ru J., Zhang X., Wang S., Hao Ran, Bian P., Dai X., Gong M., Zhang Z., Wang A., Bai F., Li R., Cai Y., Jiang Yu. SVLearn: a dual-reference machine learning approach enables accurate cross-species genotyping of structural variants // Nature Communications. 2025. Vol. 16. No. 1. 2406
Cite this
RIS
Copy
TY - JOUR
DO - 10.1038/s41467-025-57756-z
UR - https://www.nature.com/articles/s41467-025-57756-z
TI - SVLearn: a dual-reference machine learning approach enables accurate cross-species genotyping of structural variants
T2 - Nature Communications
AU - Yang, Qimeng
AU - Sun, Jianfeng
AU - Wang, Xinyu
AU - Wang, Jiong
AU - Liu, Quanzhong
AU - Ru, Jinlong
AU - Zhang, Xin
AU - Wang, Sizhe
AU - Hao Ran
AU - Bian, Peipei
AU - Dai, Xuelei
AU - Gong, Mian
AU - Zhang, Zhuangbiao
AU - Wang, Ao
AU - Bai, Fengting
AU - Li, Ran
AU - Cai, Yudong
AU - Jiang, Yu
PY - 2025
DA - 2025/03/11
PB - Springer Nature
IS - 1
VL - 16
SN - 2041-1723
ER -
Cite this
BibTex (up to 50 authors)
Copy
@article{2025_Yang,
author = {Qimeng Yang and Jianfeng Sun and Xinyu Wang and Jiong Wang and Quanzhong Liu and Jinlong Ru and Xin Zhang and Sizhe Wang and Hao Ran and Peipei Bian and Xuelei Dai and Mian Gong and Zhuangbiao Zhang and Ao Wang and Fengting Bai and Ran Li and Yudong Cai and Yu Jiang},
title = {SVLearn: a dual-reference machine learning approach enables accurate cross-species genotyping of structural variants},
journal = {Nature Communications},
year = {2025},
volume = {16},
publisher = {Springer Nature},
month = {mar},
url = {https://www.nature.com/articles/s41467-025-57756-z},
number = {1},
pages = {2406},
doi = {10.1038/s41467-025-57756-z}
}