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Crowdsourced benchmarking of taxonomic metagenome profilers: lessons learned from the sbv IMPROVER Microbiomics challenge.
Poussin, Carine; Khachatryan, Lusine; Sierro, Nicolas; Narsapuram, Vijay Kumar; Meyer, Fernando; Kaikala, Vinay; Chawla, Vandna; Muppirala, Usha; Kumar, Sunil; Belcastro, Vincenzo; Battey, James N D; Scotti, Elena; Boué, Stéphanie; McHardy, Alice C; Peitsch, Manuel C; Ivanov, Nikolai V; Hoeng, Julia.
  • Poussin C; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland. Carine.Poussin@pmi.com.
  • Khachatryan L; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland. Lusine.Khachatryan@pmi.com.
  • Sierro N; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland.
  • Narsapuram VK; Data Science and Informatics, Corteva Agrisciences, Ascendas IT Park, Madhapur, Hyderabad, 500081, India.
  • Meyer F; Department of Computational Biology of Infection Research, Helmholtz Centre for Infection Research (HZI), Braunschweig, Germany.
  • Kaikala V; Data Science and Informatics, Corteva Agrisciences, Ascendas IT Park, Madhapur, Hyderabad, 500081, India.
  • Chawla V; Data Science and Informatics, Corteva Agrisciences, Ascendas IT Park, Madhapur, Hyderabad, 500081, India.
  • Muppirala U; Data Science and Informatics, Corteva Agrisciences, Ascendas IT Park, Madhapur, Hyderabad, 500081, India.
  • Kumar S; Data Science and Informatics, Corteva Agrisciences, Ascendas IT Park, Madhapur, Hyderabad, 500081, India.
  • Belcastro V; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland.
  • Battey JND; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland.
  • Scotti E; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland.
  • Boué S; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland.
  • McHardy AC; Department of Computational Biology of Infection Research, Helmholtz Centre for Infection Research (HZI), Braunschweig, Germany.
  • Peitsch MC; Member of the Scoring Review Panel for the Microbiomics Challenge, Neuchâtel, Switzerland.
  • Ivanov NV; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland.
  • Hoeng J; PMI R&D, Philip Morris Products S.A., Quai Jeanrenaud 5, 2000, Neuchâtel, Switzerland.
BMC Genomics ; 23(1): 624, 2022 Aug 30.
Article en En | MEDLINE | ID: mdl-36042406
ABSTRACT

BACKGROUND:

Selection of optimal computational strategies for analyzing metagenomics data is a decisive step in determining the microbial composition of a sample, and this procedure is complex because of the numerous tools currently available. The aim of this research was to summarize the results of crowdsourced sbv IMPROVER Microbiomics Challenge designed to evaluate the performance of off-the-shelf metagenomics software as well as to investigate the robustness of these results by the extended post-challenge analysis. In total 21 off-the-shelf taxonomic metagenome profiling pipelines were benchmarked for their capacity to identify the microbiome composition at various taxon levels across 104 shotgun metagenomics datasets of bacterial genomes (representative of various microbiome samples) from public databases. Performance was determined by comparing predicted taxonomy profiles with the gold standard.

RESULTS:

Most taxonomic profilers performed homogeneously well at the phylum level but generated intermediate and heterogeneous scores at the genus and species levels, respectively. kmer-based pipelines using Kraken with and without Bracken or using CLARK-S performed best overall, but they exhibited lower precision than the two marker-gene-based methods MetaPhlAn and mOTU. Filtering out the 1% least abundance species-which were not reliably predicted-helped increase the performance of most profilers by increasing precision but at the cost of recall. However, the use of adaptive filtering thresholds determined from the sample's Shannon index increased the performance of most kmer-based profilers while mitigating the tradeoff between precision and recall.

CONCLUSIONS:

kmer-based metagenomic pipelines using Kraken/Bracken or CLARK-S performed most robustly across a large variety of microbiome datasets. Removing non-reliably predicted low-abundance species by using diversity-dependent adaptive filtering thresholds further enhanced the performance of these tools. This work demonstrates the applicability of computational pipelines for accurately determining taxonomic profiles in clinical and environmental contexts and exemplifies the power of crowdsourcing for unbiased evaluation.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Metagenoma / Colaboración de las Masas Tipo de estudio: Prognostic_studies Idioma: En Año: 2022 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Metagenoma / Colaboración de las Masas Tipo de estudio: Prognostic_studies Idioma: En Año: 2022 Tipo del documento: Article