Litcius/Paper detail

Deep embedding and alignment of protein sequences

Felipe Llinares-López, Quentin Berthet, Mathieu Blondel, Olivier Teboul, Jean‐Philippe Vert

2022Nature Methods59 citationsDOIOpen Access PDF

Abstract

Protein sequence alignment is a key component of most bioinformatics pipelines to study the structures and functions of proteins. Aligning highly divergent sequences remains, however, a difficult task that current algorithms often fail to perform accurately, leaving many proteins or open reading frames poorly annotated. Here we leverage recent advances in deep learning for language modeling and differentiable programming to propose DEDAL (deep embedding and differentiable alignment), a flexible model to align protein sequences and detect homologs. DEDAL is a machine learning-based model that learns to align sequences by observing large datasets of raw protein sequences and of correct alignments. Once trained, we show that DEDAL improves by up to two- or threefold the alignment correctness over existing methods on remote homologs and better discriminates remote homologs from evolutionarily unrelated sequences, paving the way to improvements on many downstream tasks relying on sequence alignment in structural and functional genomics. DEDAL is a deep learning-based protein sequence alignment method that improves the quality of predicted alignment for remote homologs and better discriminates remote homologs from evolutionarily unrelated sequences.

Topics & Concepts

Computer scienceSequence alignmentCorrectnessArtificial intelligenceDeep learningLeverage (statistics)Computational biologyMultiple sequence alignmentEmbeddingStructural alignmentProtein sequencingSmith–Waterman algorithmGenomicsMachine learningBiologyPeptide sequenceGenomeGeneticsAlgorithmGeneGenomics and Phylogenetic StudiesMachine Learning in BioinformaticsRNA and protein synthesis mechanisms