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binny: an automated binning algorithm to recover high-quality genomes from complex metagenomic datasets.

Oskar HicklPedro QueirósPaul WilmesPatrick MayAnna Heintz-Buschart
Published in: Briefings in bioinformatics (2022)
The reconstruction of genomes is a critical step in genome-resolved metagenomics and for multi-omic data integration from microbial communities. Here, we present binny, a binning tool that produces high-quality metagenome-assembled genomes (MAG) from both contiguous and highly fragmented genomes. Based on established metrics, binny outperforms or is highly competitive with commonly used and state-of-the-art binning methods and finds unique genomes that could not be detected by other methods. binny uses k-mer-composition and coverage by metagenomic reads for iterative, nonlinear dimension reduction of genomic signatures as well as subsequent automated contig clustering with cluster assessment using lineage-specific marker gene sets. When compared with seven widely used binning algorithms, binny provides substantial amounts of uniquely identified MAGs and almost always recovers the most near-complete ($\gt 95\%$ pure, $\gt 90\%$ complete) and high-quality ($\gt 90\%$ pure, $\gt 70\%$ complete) genomes from simulated datasets from the Critical Assessment of Metagenome Interpretation initiative, as well as substantially more high-quality draft genomes, as defined by the Minimum Information about a Metagenome-Assembled Genome standard, from a real-world benchmark comprised of metagenomes from various environments than any other tested method.
Keyphrases
  • machine learning
  • genome wide
  • deep learning
  • magnetic resonance imaging
  • single cell
  • copy number
  • healthcare
  • social media
  • computed tomography
  • dna methylation
  • quality improvement
  • big data
  • wastewater treatment