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Deep embeddings to comprehend and visualize microbiome protein space

Krzysztof Odrzywołek, Zuzanna Karwowska, Jan Majta, Aleksander Byrski, Kaja Milanowska, Tomasz Kościółek

2022Scientific Reports20 citationsDOIOpen Access PDF

Abstract

Understanding the function of microbial proteins is essential to reveal the clinical potential of the microbiome. The application of high-throughput sequencing technologies allows for fast and increasingly cheaper acquisition of data from microbial communities. However, many of the inferred protein sequences are novel and not catalogued, hence the possibility of predicting their function through conventional homology-based approaches is limited, which indicates the need for further research on alignment-free methods. Here, we leverage a deep-learning-based representation of proteins to assess its utility in alignment-free analysis of microbial proteins. We trained a language model on the Unified Human Gastrointestinal Protein catalogue and validated the resulting protein representation on the bacterial part of the SwissProt database. Finally, we present a use case on proteins involved in SCFA metabolism. Results indicate that the deep learning model manages to accurately represent features related to protein structure and function, allowing for alignment-free protein analyses. Technologies that contextualize metagenomic data are a promising direction to deeply understand the microbiome.

Topics & Concepts

MetagenomicsProtein functionComputational biologyMicrobiomeLeverage (statistics)Computer scienceFunction (biology)Gut microbiomeRepresentation (politics)Protein function predictionHuman proteinsArtificial intelligenceData scienceBioinformaticsMachine learningBiologyEvolutionary biologyGeneticsGenePolitical scienceLawPoliticsGenomics and Phylogenetic StudiesMachine Learning in BioinformaticsProbiotics and Fermented Foods
Deep embeddings to comprehend and visualize microbiome protein space | Litcius