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Microbes as engines of ecosystem function: when does community structure enhance predictions of ecosystem processes?

Authors :
Emily B. Graham
Joseph E. Knelman
Andreas eSchindlbacher
Steven eSiciliano
Marc eBreulmann
Anthony eYannarell
J. Michael eBeman
Guy eAbell
Laurent ePhilippot
James eProsser
Arnaud eFoulquier
Jorge Curiel eYuste
Helen C. eGlanville
Davey eJones
Roey eAngel
Janne eSalminen
Ryan J Newton
Helmut eBürgmann
Lachlan J. Ingram
Ute eHamer
Henri MP Siljanen
Krista ePeltoniemi
Karin ePotthast
Lluís eBañeras
Martin eHartmann
Samiran eBanerjee
Ri-Qing eYu
Geraldine eNogaro
Andreas eRichter
Marianne eKoranda
Sarah eCastle
Marta eGoberna
Bongkeun eSong
Amitava eChatterjee
Olga Cristina Nunes
Ana Rita Lopes
Yiping eCao
Aurore eKaisermann
Sara eHallin
Michael S Strickland
Jordi eGarcia-Pausas
Josep eBarba
Hojeong eKang
Kazuo eIsobe
Sokratis ePapaspyrou
Roberta ePastorelli
Alessandra eLagomarsino
Eva eLindström
Nathan eBasiliko
Diana Reid Nemergut
Source :
Frontiers in Microbiology, Vol 7 (2016)
Publication Year :
2016
Publisher :
Frontiers Media S.A., 2016.

Abstract

Microorganisms are vital in mediating the earth’s biogeochemical cycles; yet, despite our rapidly increasing ability to explore complex environmental microbial communities, the relationship between microbial community structure and ecosystem processes remains poorly understood. Here, we address a fundamental and unanswered question in microbial ecology: ‘When do we need to understand microbial community structure to accurately predict function?’ We present a statistical analysis investigating the value of environmental data and microbial community structure independently and in combination for explaining rates of carbon and nitrogen cycling processes within 82 global datasets. Environmental variables were the strongest predictors of process rates but left 44% of variation unexplained on average, suggesting the potential for microbial data to increase model accuracy. Although only 29% of our datasets were significantly improved by adding information on microbial community structure, we observed improvement in models of processes mediated by narrow phylogenetic guilds via functional gene data, and conversely, improvement in models of facultative microbial processes via community diversity metrics. Our results also suggest that microbial diversity can strengthen predictions of respiration rates beyond microbial biomass parameters, as 53% of models were improved by incorporating both sets of predictors compared to 35% by microbial biomass alone. Our analysis represents the first comprehensive analysis of research examining links between microbial community structure and ecosystem function. Taken together, our results indicate that a greater understanding of microbial communities informed by ecological principles may enhance our ability to predict ecosystem process rates relative to assessments based on environmental variables and microbial physiology.

Details

Language :
English
ISSN :
1664302X
Volume :
7
Database :
Directory of Open Access Journals
Journal :
Frontiers in Microbiology
Publication Type :
Academic Journal
Accession number :
edsdoj.8ccc1905281545e19b1994be059ab4d1
Document Type :
article
Full Text :
https://doi.org/10.3389/fmicb.2016.00214