Nature Communications (Sep 2024)

Taxometer: Improving taxonomic classification of metagenomics contigs

  • Svetlana Kutuzova,
  • Mads Nielsen,
  • Pau Piera,
  • Jakob Nybo Nissen,
  • Simon Rasmussen

DOI
https://doi.org/10.1038/s41467-024-52771-y
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 9

Abstract

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Abstract For taxonomy based classification of metagenomics assembled contigs, current methods use sequence similarity to identify their most likely taxonomy. However, in the related field of metagenomic binning, contigs are routinely clustered using information from both the contig sequences and their abundance. We introduce Taxometer, a neural network based method that improves the annotations and estimates the quality of any taxonomic classifier using contig abundance profiles and tetra-nucleotide frequencies. We apply Taxometer to five short-read CAMI2 datasets and find that it increases the average share of correct species-level contig annotations of the MMSeqs2 tool from 66.6% to 86.2%. Additionally, it reduce the share of wrong species-level annotations in the CAMI2 Rhizosphere dataset by an average of two-fold for Metabuli, Centrifuge, and Kraken2. Futhermore, we use Taxometer for benchmarking taxonomic classifiers on two complex long-read metagenomics data sets where ground truth is not known. Taxometer is available as open-source software and can enhance any taxonomic annotation of metagenomic contigs.