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Comprehensive Functional Annotation of Metagenomes and Microbial Genomes Using a Deep Learning-Based Method

Mary Maranga, Paweł Szczerbiak, Valentyn Bezshapkin, Vladimir Gligorijević, Chris Chandler, Richard Bonneau, Ramnik J. Xavier, Tommi Vatanen, Tomasz Kościółek

2023mSystems48 citationsDOIOpen Access PDF

Abstract

The past decade has seen advancement in high-throughput sequencing technologies resulting in rapid accumulation of genomic data from microbial communities. While this growth in sequence data and gene discovery is impressive, the majority of microbial gene functions remain uncharacterized. The coverage of functional information coming from either experimental sources or inferences is low. To solve these challenges, we have developed a new workflow to computationally assemble microbial genomes and annotate the genes using a deep learning-based model DeepFRI. This improved microbial gene annotation coverage to 1.9 million metagenome-assembled genes, representing 99% of the assembled genes, which is a significant improvement compared to 12% Gene Ontology term annotation coverage by commonly used orthology-based approaches. Importantly, the workflow supports pangenome reconstruction in a reference-free manner, allowing us to analyze the functional potential of individual bacterial species. We therefore propose this alternative approach combining deep-learning functional predictions with the commonly used orthology-based annotations as one that could help us uncover novel functions observed in metagenomic microbiome studies.

Topics & Concepts

MetagenomicsAnnotationComputational biologyGenomeComputer scienceArtificial intelligenceDeep learningBiologyGeneticsGeneGenomics and Phylogenetic StudiesMachine Learning in BioinformaticsBioinformatics and Genomic Networks
Comprehensive Functional Annotation of Metagenomes and Microbial Genomes Using a Deep Learning-Based Method | Litcius