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SVision: a deep learning approach to resolve complex structural variants.


ABSTRACT: Complex structural variants (CSVs) encompass multiple breakpoints and are often missed or misinterpreted. We developed SVision, a deep-learning-based multi-object-recognition framework, to automatically detect and haracterize CSVs from long-read sequencing data. SVision outperforms current callers at identifying the internal structure of complex events and has revealed 80 high-quality CSVs with 25 distinct structures from an individual genome. SVision directly detects CSVs without matching known structures, allowing sensitive detection of both common and previously uncharacterized complex rearrangements.

SUBMITTER: Lin J 

PROVIDER: S-EPMC9985066 | biostudies-literature | 2022 Oct

REPOSITORIES: biostudies-literature

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SVision: a deep learning approach to resolve complex structural variants.

Lin Jiadong J   Wang Songbo S   Audano Peter A PA   Meng Deyu D   Flores Jacob I JI   Kosters Walter W   Yang Xiaofei X   Jia Peng P   Marschall Tobias T   Beck Christine R CR   Ye Kai K  

Nature methods 20220916 10


Complex structural variants (CSVs) encompass multiple breakpoints and are often missed or misinterpreted. We developed SVision, a deep-learning-based multi-object-recognition framework, to automatically detect and haracterize CSVs from long-read sequencing data. SVision outperforms current callers at identifying the internal structure of complex events and has revealed 80 high-quality CSVs with 25 distinct structures from an individual genome. SVision directly detects CSVs without matching known  ...[more]

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