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A benchmark of structural variation detection by long reads through a realistic simulated model.


ABSTRACT: Accurate simulations of structural variation distributions and sequencing data are crucial for the development and benchmarking of new tools. We develop Sim-it, a straightforward tool for the simulation of both structural variation and long-read data. These simulations from Sim-it reveal the strengths and weaknesses for current available structural variation callers and long-read sequencing platforms. With these findings, we develop a new method (combiSV) that can combine the results from structural variation callers into a superior call set with increased recall and precision, which is also observed for the latest structural variation benchmark set developed by the GIAB Consortium.

SUBMITTER: Dierckxsens N 

PROVIDER: S-EPMC8672642 | biostudies-literature | 2021 Dec

REPOSITORIES: biostudies-literature

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A benchmark of structural variation detection by long reads through a realistic simulated model.

Dierckxsens Nicolas N   Li Tong T   Vermeesch Joris R JR   Xie Zhi Z  

Genome biology 20211215 1


Accurate simulations of structural variation distributions and sequencing data are crucial for the development and benchmarking of new tools. We develop Sim-it, a straightforward tool for the simulation of both structural variation and long-read data. These simulations from Sim-it reveal the strengths and weaknesses for current available structural variation callers and long-read sequencing platforms. With these findings, we develop a new method (combiSV) that can combine the results from struct  ...[more]

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