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Deep structured learning for variant prioritization in Mendelian diseases

Matt C. Danzi, Maike F. Dohrn, Sarah Fazal, Danique Beijer, Adriana Rebelo, Vívian Pedigone Cintra, Stephan Züchner

2023Nature Communications43 citationsDOIOpen Access PDF

Abstract

Effective computer-aided or automated variant evaluations for monogenic diseases will expedite clinical diagnostic and research efforts of known and novel disease-causing genes. Here we introduce MAVERICK: a Mendelian Approach to Variant Effect pRedICtion built in Keras. MAVERICK is an ensemble of transformer-based neural networks that can classify a wide range of protein-altering single nucleotide variants (SNVs) and indels and assesses whether a variant would be pathogenic in the context of dominant or recessive inheritance. We demonstrate that MAVERICK outperforms all other major programs that assess pathogenicity in a Mendelian context. In a cohort of 644 previously solved patients with Mendelian diseases, MAVERICK ranks the causative pathogenic variant within the top five variants in over 95% of cases. Seventy-six percent of cases were solved by the top-ranked variant. MAVERICK ranks the causative pathogenic variant in hitherto novel disease genes within the first five candidate variants in 70% of cases. MAVERICK has already facilitated the identification of a novel disease gene causing a degenerative motor neuron disease. These results represent a significant step towards automated identification of causal variants in patients with Mendelian diseases.

Topics & Concepts

Mendelian inheritanceContext (archaeology)GeneticsDiseaseIdentification (biology)OMIM : Online Mendelian Inheritance in ManGeneSingle-nucleotide polymorphismBiologyIndelComputational biologyBioinformaticsPhenotypeMedicinePathologyGenotypePaleontologyBotanyGenomics and Rare DiseasesCRISPR and Genetic EngineeringGenomics and Phylogenetic Studies