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A review of neural networks for metagenomic binning

Jair Herazo-Álvarez, Marco Mora, Sara Cuadros-Orellana, Karina Vilches-Ponce, Ruber Hernández-García

2025Briefings in Bioinformatics9 citationsDOIOpen Access PDF

Abstract

One of the main goals of metagenomic studies is to describe the taxonomic diversity of microbial communities. A crucial step in metagenomic analysis is metagenomic binning, which involves the (supervised) classification or (unsupervised) clustering of metagenomic sequences. Various machine learning models have been applied to address this task. In this review, the contributions of artificial neural networks (ANN) in the context of metagenomic binning are detailed, addressing both supervised, unsupervised, and semi-supervised approaches. 34 ANN-based binning tools are systematically compared, detailing their architectures, input features, datasets, advantages, disadvantages, and other relevant aspects. The findings reveal that deep learning approaches, such as convolutional neural networks and autoencoders, achieve higher accuracy and scalability than traditional methods. Gaps in benchmarking practices are highlighted, and future directions are proposed, including standardized datasets and optimization of architectures, for third-generation sequencing. This review provides support to researchers in identifying trends and selecting suitable tools for the metagenomic binning problem.

Topics & Concepts

MetagenomicsComputer scienceArtificial intelligenceBenchmarkingContext (archaeology)Machine learningConvolutional neural networkScalabilityArtificial neural networkCluster analysisUnsupervised learningDeep learningTask (project management)Data miningBiologyEngineeringPaleontologySystems engineeringMarketingGeneDatabaseBiochemistryBusinessGenomics and Phylogenetic StudiesGene expression and cancer classificationMachine Learning in Bioinformatics
A review of neural networks for metagenomic binning | Litcius