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DeepSom: a CNN-based approach to somatic variant calling in WGS samples without a matched normal

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Abstract Motivation Somatic mutations are usually called by analyzing the DNA sequence of a tumor sample in conjunction with a matched normal. However, a matched normal is not always available,… Click to show full abstract

Abstract Motivation Somatic mutations are usually called by analyzing the DNA sequence of a tumor sample in conjunction with a matched normal. However, a matched normal is not always available, for instance, in retrospective analysis or diagnostic settings. For such cases, tumor-only somatic variant calling tools need to be designed. Previously proposed approaches demonstrate inferior performance on whole-genome sequencing (WGS) samples. Results We present the convolutional neural network-based approach called DeepSom for detecting somatic single nucleotide polymorphism and short insertion and deletion variants in tumor WGS samples without a matched normal. We validate DeepSom by reporting its performance on five different cancer datasets. We also demonstrate that on WGS samples DeepSom outperforms previously proposed methods for tumor-only somatic variant calling. Availability and implementation DeepSom is available as a GitHub repository at https://github.com/heiniglab/DeepSom. Supplementary information Supplementary data are available at Bioinformatics online.

Keywords: somatic variant; wgs samples; deepsom; matched normal; variant calling

Journal Title: Bioinformatics
Year Published: 2023

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