Customized de novo mutation detection for any variant calling pipeline: SynthDNM

针对任何变异检测流程的定制化新生突变检测:SynthDNM

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Abstract

MOTIVATION: As sequencing technologies and analysis pipelines evolve, de novo mutation (DNM) calling tools must be adapted. Therefore, a flexible approach is needed that can accurately identify DNMs from genome or exome sequences from a variety of datasets and variant calling pipelines. RESULTS: Here, we describe SynthDNM, a random-forest based classifier that can be readily adapted to new sequencing or variant-calling pipelines by applying a flexible approach to constructing simulated training examples from real data. The optimized SynthDNM classifiers predict de novo SNPs and indels with robust accuracy across multiple methods of variant calling. AVAILABILITYAND IMPLEMENTATION: SynthDNM is freely available on Github (https://github.com/james-guevara/synthdnm). SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

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