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Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry

High-nucleic-acid (HNA) and low-nucleic-acid (LNA) bacteria are two operational groups identified by flow cytometry (FCM) in aquatic systems. A number of reports have shown that HNA cell density correlates strongly with heterotrophic production, while LNA cell density does not. However, which taxa a...

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Autores principales: Rubbens, Peter, Schmidt, Marian L., Props, Ruben, Biddanda, Bopaiah A., Boon, Nico, Waegeman, Willem, Denef, Vincent J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6739098/
https://www.ncbi.nlm.nih.gov/pubmed/31506260
http://dx.doi.org/10.1128/mSystems.00093-19
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author Rubbens, Peter
Schmidt, Marian L.
Props, Ruben
Biddanda, Bopaiah A.
Boon, Nico
Waegeman, Willem
Denef, Vincent J.
author_facet Rubbens, Peter
Schmidt, Marian L.
Props, Ruben
Biddanda, Bopaiah A.
Boon, Nico
Waegeman, Willem
Denef, Vincent J.
author_sort Rubbens, Peter
collection PubMed
description High-nucleic-acid (HNA) and low-nucleic-acid (LNA) bacteria are two operational groups identified by flow cytometry (FCM) in aquatic systems. A number of reports have shown that HNA cell density correlates strongly with heterotrophic production, while LNA cell density does not. However, which taxa are specifically associated with these groups, and by extension, productivity has remained elusive. Here, we addressed this knowledge gap by using a machine learning-based variable selection approach that integrated FCM and 16S rRNA gene sequencing data collected from 14 freshwater lakes spanning a broad range in physicochemical conditions. There was a strong association between bacterial heterotrophic production and HNA absolute cell abundances (R(2) = 0.65), but not with the more abundant LNA cells. This solidifies findings, mainly from marine systems, that HNA and LNA bacteria could be considered separate functional groups, the former contributing a disproportionately large share of carbon cycling. Taxa selected by the models could predict HNA and LNA absolute cell abundances at all taxonomic levels. Selected operational taxonomic units (OTUs) ranged from low to high relative abundance and were mostly lake system specific (89.5% to 99.2%). A subset of selected OTUs was associated with both LNA and HNA groups (12.5% to 33.3%), suggesting either phenotypic plasticity or within-OTU genetic and physiological heterogeneity. These findings may lead to the identification of system-specific putative ecological indicators for heterotrophic productivity. Generally, our approach allows for the association of OTUs with specific functional groups in diverse ecosystems in order to improve our understanding of (microbial) biodiversity-ecosystem functioning relationships. IMPORTANCE A major goal in microbial ecology is to understand how microbial community structure influences ecosystem functioning. Various methods to directly associate bacterial taxa to functional groups in the environment are being developed. In this study, we applied machine learning methods to relate taxonomic data obtained from marker gene surveys to functional groups identified by flow cytometry. This allowed us to identify the taxa that are associated with heterotrophic productivity in freshwater lakes and indicated that the key contributors were highly system specific, regularly rare members of the community, and that some could possibly switch between being low and high contributors. Our approach provides a promising framework to identify taxa that contribute to ecosystem functioning and can be further developed to explore microbial contributions beyond heterotrophic production.
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spelling pubmed-67390982019-09-16 Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry Rubbens, Peter Schmidt, Marian L. Props, Ruben Biddanda, Bopaiah A. Boon, Nico Waegeman, Willem Denef, Vincent J. mSystems Research Article High-nucleic-acid (HNA) and low-nucleic-acid (LNA) bacteria are two operational groups identified by flow cytometry (FCM) in aquatic systems. A number of reports have shown that HNA cell density correlates strongly with heterotrophic production, while LNA cell density does not. However, which taxa are specifically associated with these groups, and by extension, productivity has remained elusive. Here, we addressed this knowledge gap by using a machine learning-based variable selection approach that integrated FCM and 16S rRNA gene sequencing data collected from 14 freshwater lakes spanning a broad range in physicochemical conditions. There was a strong association between bacterial heterotrophic production and HNA absolute cell abundances (R(2) = 0.65), but not with the more abundant LNA cells. This solidifies findings, mainly from marine systems, that HNA and LNA bacteria could be considered separate functional groups, the former contributing a disproportionately large share of carbon cycling. Taxa selected by the models could predict HNA and LNA absolute cell abundances at all taxonomic levels. Selected operational taxonomic units (OTUs) ranged from low to high relative abundance and were mostly lake system specific (89.5% to 99.2%). A subset of selected OTUs was associated with both LNA and HNA groups (12.5% to 33.3%), suggesting either phenotypic plasticity or within-OTU genetic and physiological heterogeneity. These findings may lead to the identification of system-specific putative ecological indicators for heterotrophic productivity. Generally, our approach allows for the association of OTUs with specific functional groups in diverse ecosystems in order to improve our understanding of (microbial) biodiversity-ecosystem functioning relationships. IMPORTANCE A major goal in microbial ecology is to understand how microbial community structure influences ecosystem functioning. Various methods to directly associate bacterial taxa to functional groups in the environment are being developed. In this study, we applied machine learning methods to relate taxonomic data obtained from marker gene surveys to functional groups identified by flow cytometry. This allowed us to identify the taxa that are associated with heterotrophic productivity in freshwater lakes and indicated that the key contributors were highly system specific, regularly rare members of the community, and that some could possibly switch between being low and high contributors. Our approach provides a promising framework to identify taxa that contribute to ecosystem functioning and can be further developed to explore microbial contributions beyond heterotrophic production. American Society for Microbiology 2019-09-10 /pmc/articles/PMC6739098/ /pubmed/31506260 http://dx.doi.org/10.1128/mSystems.00093-19 Text en Copyright © 2019 Rubbens et al. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Rubbens, Peter
Schmidt, Marian L.
Props, Ruben
Biddanda, Bopaiah A.
Boon, Nico
Waegeman, Willem
Denef, Vincent J.
Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry
title Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry
title_full Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry
title_fullStr Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry
title_full_unstemmed Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry
title_short Randomized Lasso Links Microbial Taxa with Aquatic Functional Groups Inferred from Flow Cytometry
title_sort randomized lasso links microbial taxa with aquatic functional groups inferred from flow cytometry
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6739098/
https://www.ncbi.nlm.nih.gov/pubmed/31506260
http://dx.doi.org/10.1128/mSystems.00093-19
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