Main menu

ClairS-TO: a deep-learning method for long-read tumour-only somatic small variant calling

ClairS-TO is a deep learning-based tool for detecting somatic variants in tumour-only samples using long-read sequencing data. It combines dual neural networks with advanced filtering strategies to accurately distinguish somatic mutations from germline variants and sequencing noise — achieving state-of-the-art performance without requiring a matched normal sample.

Key points:

  • Tumour-only somatic variant detection is challenging because it lacks a matched normal sample, making it difficult to distinguish somatic mutations from germline variants and sequencing noise

  • Chen and Zheng et al. designed ClairS-TO specifically for long-read tumour-only variant calling, addressing the limitations of short-read-based tools

  • It uses an ensemble of two neural networks trained on opposing tasks to boost classification accuracy

  • ClairS-TO was trained on synthetic datasets derived from Genome in a Bottle HG002 and HG001 from EPI2ME labs and real tumour data from six cancer cell lines

  • It outperformed DeepSomatic and short-read callers (Mutect2, Octopus, Pisces) across Oxford Nanopore, PacBio, and Illumina datasets

  • Demonstrated robust performance across sequencing coverages, variant allele fractions, tumour purities, and complex genomic regions

Sample type: cancer cell lines and synthetic datasets

Authors: Lei Chen, Zhenxian Zheng, Junhao Su, Xian Yu, Angel On Ki Wong, Jingcheng Zhang, Yan-Lam Lee, Ruibang Luo

入門

MinION Starter Packを購入 ナノポア製品の販売 シークエンスサービスプロバイダー グローバルディストリビューター

お問い合わせ

Intellectual property Cookie policy Corporate reporting Privacy policy Terms, conditions and policies Accessibility

Oxford Nanoporeについて

Contact us 経営陣 メディアリソース & お問い合わせ先 投資家向け Oxford Nanopore社で働く BSI 27001 accreditationBSI 90001 accreditationBSI mark of trust
Japanese flag