De novo and somatic structural variant discovery with SVision-pro

Songbo Wang,Jiadong Lin, Peng Jia,Tun Xu, Xiujuan Li, Yuezhuangnan Liu, Dan Xu, Stephen J. Bush, Deyu Meng,Kai Ye

Nature Biotechnology(2024)

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摘要
Long-read-based de novo and somatic structural variant (SV) discovery remains challenging, necessitating genomic comparison between samples. We developed SVision-pro, a neural-network-based instance segmentation framework that represents genome-to-genome-level sequencing differences visually and discovers SV comparatively between genomes without any prerequisite for inference models. SVision-pro outperforms state-of-the-art approaches, in particular, the resolving of complex SVs is improved, with low Mendelian error rates, high sensitivity of low-frequency SVs and reduced false-positive rates compared with SV merging approaches.
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