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Adversarial and variational autoencoders improve metagenomic binning

Pau Piera Líndez, Joachim Johansen, Svetlana Kutuzova, Arnór I. Sigurdsson, Jakob Nybo Nissen, Simon Rasmussen

2023Communications Biology32 citationsDOIOpen Access PDF

Abstract

Assembly of reads from metagenomic samples is a hard problem, often resulting in highly fragmented genome assemblies. Metagenomic binning allows us to reconstruct genomes by re-grouping the sequences by their organism of origin, thus representing a crucial processing step when exploring the biological diversity of metagenomic samples. Here we present Adversarial Autoencoders for Metagenomics Binning (AAMB), an ensemble deep learning approach that integrates sequence co-abundances and tetranucleotide frequencies into a common denoised space that enables precise clustering of sequences into microbial genomes. When benchmarked, AAMB presented similar or better results compared with the state-of-the-art reference-free binner VAMB, reconstructing ~7% more near-complete (NC) genomes across simulated and real data. In addition, genomes reconstructed using AAMB had higher completeness and greater taxonomic diversity compared with VAMB. Finally, we implemented a pipeline Integrating VAMB and AAMB that enabled improved binning, recovering 20% and 29% more simulated and real NC genomes, respectively, compared to VAMB, with moderate additional runtime.

Topics & Concepts

MetagenomicsAdversarial systemArtificial intelligenceComputer sciencePattern recognition (psychology)Machine learningBiologyGeneBiochemistryGenomics and Phylogenetic StudiesGut microbiota and healthMetabolomics and Mass Spectrometry Studies
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