DOI

  • Konstantinos Mavromatis
  • Kerrie Barry
  • Harris Shapiro
  • Eugene Goltsman
  • Alice C. McHardy
  • Isidore Rigoutsos
  • Asaf Salamov
  • Frank Korzeniewski
  • Miriam Land
  • Alla Lapidus
  • Igor Grigoriev
  • Paul Richardson
  • Philip Hugenholtz
  • Nikos C. Kyrpides

Metagenomics is a rapidly emerging field of research for studying microbial communities. To evaluate methods presently used to process metagenomic sequences, we constructed three simulated data sets of varying complexity by combining sequencing reads randomly selected from 113 isolate genomes. These data sets were designed to model real metagenomes in terms of complexity and phylogenetic composition. We assembled sampled reads using three commonly used genome assemblers (Phrap, Arachne and JAZZ), and predicted genes using two popular gene-finding pipelines (fgenesb and CRITICA/GLIMMER). The phylogenetic origins of the assembled contigs were predicted using one sequence similarity-based (blast hit distribution) and two sequence composition-based (PhyloPythia, oligonucleotide frequencies) binning methods. We explored the effects of the simulated community structure and method combinations on the fidelity of each processing step by comparison to the corresponding isolate genomes. The simulated data sets are available online to facilitate standardized benchmarking of tools for metagenomic analysis.Please visit methagora to view and post comments on this article.

Original languageEnglish
Pages (from-to)495-500
Number of pages6
JournalNature Methods
Volume4
Issue number6
DOIs
StatePublished - Jun 2007

    Scopus subject areas

  • Biotechnology
  • Biochemistry
  • Molecular Biology
  • Cell Biology

ID: 90036674