Comprehensive benchmarking and ensemble approaches for metagenomic classifiers

Alexa B. R. McIntyre(Cornell University), Rachid Ounit(University of California, Riverside), Ebrahim Afshinnekoo(New York Medical College), Robert J. Prill(IBM Research - Almaden), Elizabeth Hénaff(Cornell University), Noah Alexander(Cornell University), Samuel S. Minot, David Danko(Cornell University), Jonathan Foox(Cornell University), Sofia Ahsanuddin(Cornell University), Scott Tighe(University of Vermont), Nur A. Hasan(Research Institute for Advanced Computer Science), Poorani Subramanian(Cosmos Corporation (United States)), Kelly Moffat(Cosmos Corporation (United States)), Shawn Levy(HudsonAlpha Institute for Biotechnology), Stefano Lonardi(University of California, Riverside), Nick Greenfield, Rita R. Colwell(Johns Hopkins University), Gail Rosen(Drexel University), Christopher E. Mason(Prince Sattam Bin Abdulaziz University)
Genome biology
September 21, 2017
Cited by 381Open Access
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Abstract

BACKGROUND: One of the main challenges in metagenomics is the identification of microorganisms in clinical and environmental samples. While an extensive and heterogeneous set of computational tools is available to classify microorganisms using whole-genome shotgun sequencing data, comprehensive comparisons of these methods are limited. RESULTS: In this study, we use the largest-to-date set of laboratory-generated and simulated controls across 846 species to evaluate the performance of 11 metagenomic classifiers. Tools were characterized on the basis of their ability to identify taxa at the genus, species, and strain levels, quantify relative abundances of taxa, and classify individual reads to the species level. Strikingly, the number of species identified by the 11 tools can differ by over three orders of magnitude on the same datasets. Various strategies can ameliorate taxonomic misclassification, including abundance filtering, ensemble approaches, and tool intersection. Nevertheless, these strategies were often insufficient to completely eliminate false positives from environmental samples, which are especially important where they concern medically relevant species. Overall, pairing tools with different classification strategies (k-mer, alignment, marker) can combine their respective advantages. CONCLUSIONS: This study provides positive and negative controls, titrated standards, and a guide for selecting tools for metagenomic analyses by comparing ranges of precision, accuracy, and recall. We show that proper experimental design and analysis parameters can reduce false positives, provide greater resolution of species in complex metagenomic samples, and improve the interpretation of results.


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