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A survey on computational strategies for genome-resolved gut metagenomics

Longhao Jia, Yingjian Wu, Yanqi Dong, Jingchao Chen, Wei‐Hua Chen, Xing‐Ming Zhao

2023Briefings in Bioinformatics17 citationsDOIOpen Access PDF

Abstract

Recovering high-quality metagenome-assembled genomes (HQ-MAGs) is critical for exploring microbial compositions and microbe-phenotype associations. However, multiple sequencing platforms and computational tools for this purpose may confuse researchers and thus call for extensive evaluation. Here, we systematically evaluated a total of 40 combinations of popular computational tools and sequencing platforms (i.e. strategies), involving eight assemblers, eight metagenomic binners and four sequencing technologies, including short-, long-read and metaHiC sequencing. We identified the best tools for the individual tasks (e.g. the assembly and binning) and combinations (e.g. generating more HQ-MAGs) depending on the availability of the sequencing data. We found that the combination of the hybrid assemblies and metaHiC-based binning performed best, followed by the hybrid and long-read assemblies. More importantly, both long-read and metaHiC sequencings link more mobile elements and antibiotic resistance genes to bacterial hosts and improve the quality of public human gut reference genomes with 32% (34/105) HQ-MAGs that were either of better quality than those in the Unified Human Gastrointestinal Genome catalog version 2 or novel.

Topics & Concepts

MetagenomicsGenomeComputational biologyDNA sequencingBiologySequence assemblyComputer scienceGeneticsGeneTranscriptomeGene expressionGenomics and Phylogenetic StudiesGut microbiota and healthProbiotics and Fermented Foods
A survey on computational strategies for genome-resolved gut metagenomics | Litcius