Litcius/Paper detail

Improving variant calling using population data and deep learning

Nae-Chyun Chen, Alexey Kolesnikov, Sidharth Goel, Taedong Yun, Pi-Chuan Chang, Andrew Carroll

2023BMC Bioinformatics25 citationsDOIOpen Access PDF

Abstract

Large-scale population variant data is often used to filter and aid interpretation of variant calls in a single sample. These approaches do not incorporate population information directly into the process of variant calling, and are often limited to filtering which trades recall for precision. In this study, we develop population-aware DeepVariant models with a new channel encoding allele frequencies from the 1000 Genomes Project. This model reduces variant calling errors, improving both precision and recall in single samples, and reduces rare homozygous and pathogenic clinvar calls cohort-wide. We assess the use of population-specific or diverse reference panels, finding the greatest accuracy with diverse panels, suggesting that large, diverse panels are preferable to individual populations, even when the population matches sample ancestry. Finally, we show that this benefit generalizes to samples with different ancestry from the training data even when the ancestry is also excluded from the reference panel.

Topics & Concepts

Population1000 Genomes ProjectSample (material)Computer scienceEncoding (memory)Precision and recallRecallArtificial intelligenceData miningMachine learningBiologyGeneticsSingle-nucleotide polymorphismDemographyPsychologyGenotypeCognitive psychologyChemistryGeneSociologyChromatographyEvolution and Genetic DynamicsGenomics and Phylogenetic StudiesGenetic diversity and population structure