Literature DB >> 32174200

Function is what counts: how microbial community complexity affects species, proteome and pathway coverage in metaproteomics.

Patrick Lohmann1, Stephanie Serena Schäpe1, Sven-Bastiaan Haange1, Kaitlyn Oliphant2, Emma Allen-Vercoe2, Nico Jehmlich1, Martin Von Bergen1,3.   

Abstract

Introduction: Metaproteomics is an established method to obtain a comprehensive taxonomic and functional view of microbial communities. After more than a decade, we are now able to describe the promise, reality, and perspectives of metaproteomics and provide useful information about the choice of method, applications, and potential improvement strategies.Areas covered: In this article, we will discuss current challenges of species and proteome coverage, and also highlight functional aspects of metaproteomics analysis of microbial communities with different levels of complexity. To do this, we re-analyzed data from microbial communities with low to high complexity (8, 72, 200 and >300 species). High species diversity leads to a reduced number of protein group identifications in a complex community, and thus the number of species resolved is underestimated. Ultimately, low abundance species remain undiscovered in complex communities. However, we observed that the main functional categories were better represented within complex microbiomes when compared to species coverage.Expert opinion: Our findings showed that even with low species coverage, metaproteomics has the potential to reveal habitat-specific functional features. Finally, we exploit this information to highlight future research avenues that are urgently needed to enhance our understanding of taxonomic composition and functions of complex microbiomes.

Keywords:  Big data; bioinformatics; environmental microbiology; mass spectrometry; metaproteomics; microbial communities

Mesh:

Substances:

Year:  2020        PMID: 32174200     DOI: 10.1080/14789450.2020.1738931

Source DB:  PubMed          Journal:  Expert Rev Proteomics        ISSN: 1478-9450            Impact factor:   3.940


  4 in total

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4.  Discovery of novel community-relevant small proteins in a simplified human intestinal microbiome.

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  4 in total

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