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Clair3-trio: high-performance Nanopore long-read variant calling in family trios with trio-to-trio deep neural networks

Junhao Su, Zhenxian Zheng, Syed Shakeel Ahmed, Tak‐Wah Lam, Ruibang Luo

2022Briefings in Bioinformatics36 citationsDOIOpen Access PDF

Abstract

Accurate identification of genetic variants from family child-mother-father trio sequencing data is important in genomics. However, state-of-the-art approaches treat variant calling from trios as three independent tasks, which limits their calling accuracy for Nanopore long-read sequencing data. For better trio variant calling, we introduce Clair3-Trio, the first variant caller tailored for family trio data from Nanopore long-reads. Clair3-Trio employs a Trio-to-Trio deep neural network model, which allows it to input the trio sequencing information and output all of the trio's predicted variants within a single model to improve variant calling. We also present MCVLoss, a novel loss function tailor-made for variant calling in trios, leveraging the explicit encoding of the Mendelian inheritance. Clair3-Trio showed comprehensive improvement in experiments. It predicted far fewer Mendelian inheritance violation variations than current state-of-the-art methods. We also demonstrated that our Trio-to-Trio model is more accurate than competing architectures. Clair3-Trio is accessible as a free, open-source project at https://github.com/HKU-BAL/Clair3-Trio.

Topics & Concepts

Nanopore sequencingComputer scienceMendelian inheritanceInheritance (genetic algorithm)State (computer science)Artificial neural networkArtificial intelligenceGenomicsGeneticsGenomeAlgorithmBiologyGeneGenomics and Phylogenetic StudiesChromosomal and Genetic VariationsMachine Learning in Bioinformatics
Clair3-trio: high-performance Nanopore long-read variant calling in family trios with trio-to-trio deep neural networks | Litcius