Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structure
Microbial communities play important roles in health, industrial applications and earth's ecosystems. With current molecular techniques we can characterize these systems in unprecedented detail. However, such methods provide little mechanistic insight into how the genetic properties and the dyn...
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Frontiers Media S.A.
2015-03-01
|
Series: | Frontiers in Microbiology |
Subjects: | |
Online Access: | http://journal.frontiersin.org/Journal/10.3389/fmicb.2015.00213/full |
id |
doaj-6be17fa4f157459483ab4d2f9ad07811 |
---|---|
record_format |
Article |
spelling |
doaj-6be17fa4f157459483ab4d2f9ad078112020-11-24T21:02:29ZengFrontiers Media S.A.Frontiers in Microbiology1664-302X2015-03-01610.3389/fmicb.2015.00213127737Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structureMark eHanemaaijer0Mark eHanemaaijer1Wilfred F.M. Roling2Brett G. Olivier3Ruchir A. Khandelwal4Ruchir A. Khandelwal5Bas eTeusink6Frank J Bruggeman7VU University AmsterdamVU University AmsterdamVU University AmsterdamVU University AmsterdamVU University AmsterdamVU University AmsterdamVU University AmsterdamVU University AmsterdamMicrobial communities play important roles in health, industrial applications and earth's ecosystems. With current molecular techniques we can characterize these systems in unprecedented detail. However, such methods provide little mechanistic insight into how the genetic properties and the dynamic couplings between individual microorganisms give rise to their dynamic activities. Neither do they give insight into what we call `the community state', that is the fluxes and concentrations of nutrients within the community. This knowledge is a prerequisite for rational control and intervention in microbial communities. Therefore, the inference of the community structure from experimental data is a major current challenge. We will argue that this inference problem requires mathematical models that can integrate heterogeneous experimental data with existing knowledge. We propose that two types of models are needed. Firstly, mathematical models that integrate existing genomic, physiological, and physicochemical information with metagenomics data so as to maximize information content and predictive power. This can be achieved with the use of constraint-based genome-scale stoichiometric modeling of community metabolism which is ideally suited for this purpose. Next, we propose a simpler coarse-grained model, which is tailored to solve the inference problem from the experimental data. This model unambiguously relate to the more detailed genome-scale stoichiometric models which act as heterogeneous data integrators. The simpler inference models are, in our opinion, key to understanding microbial ecosystems, yet until now, have received remarkably little attention. This has led to the situation where the modeling of microbial communities, using only genome-scale models is currently more a computational, theoretical exercise than a method useful to the experimentalist.http://journal.frontiersin.org/Journal/10.3389/fmicb.2015.00213/fullMetabolismFlux balance analysismicrobial communitiesCommunity modellingmetagenomic data integrationgenome-scale stoichiometric modelling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mark eHanemaaijer Mark eHanemaaijer Wilfred F.M. Roling Brett G. Olivier Ruchir A. Khandelwal Ruchir A. Khandelwal Bas eTeusink Frank J Bruggeman |
spellingShingle |
Mark eHanemaaijer Mark eHanemaaijer Wilfred F.M. Roling Brett G. Olivier Ruchir A. Khandelwal Ruchir A. Khandelwal Bas eTeusink Frank J Bruggeman Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structure Frontiers in Microbiology Metabolism Flux balance analysis microbial communities Community modelling metagenomic data integration genome-scale stoichiometric modelling |
author_facet |
Mark eHanemaaijer Mark eHanemaaijer Wilfred F.M. Roling Brett G. Olivier Ruchir A. Khandelwal Ruchir A. Khandelwal Bas eTeusink Frank J Bruggeman |
author_sort |
Mark eHanemaaijer |
title |
Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structure |
title_short |
Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structure |
title_full |
Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structure |
title_fullStr |
Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structure |
title_full_unstemmed |
Systems modeling approaches for microbial community studies: From metagenomics to inference of the community structure |
title_sort |
systems modeling approaches for microbial community studies: from metagenomics to inference of the community structure |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Microbiology |
issn |
1664-302X |
publishDate |
2015-03-01 |
description |
Microbial communities play important roles in health, industrial applications and earth's ecosystems. With current molecular techniques we can characterize these systems in unprecedented detail. However, such methods provide little mechanistic insight into how the genetic properties and the dynamic couplings between individual microorganisms give rise to their dynamic activities. Neither do they give insight into what we call `the community state', that is the fluxes and concentrations of nutrients within the community. This knowledge is a prerequisite for rational control and intervention in microbial communities. Therefore, the inference of the community structure from experimental data is a major current challenge. We will argue that this inference problem requires mathematical models that can integrate heterogeneous experimental data with existing knowledge. We propose that two types of models are needed. Firstly, mathematical models that integrate existing genomic, physiological, and physicochemical information with metagenomics data so as to maximize information content and predictive power. This can be achieved with the use of constraint-based genome-scale stoichiometric modeling of community metabolism which is ideally suited for this purpose. Next, we propose a simpler coarse-grained model, which is tailored to solve the inference problem from the experimental data. This model unambiguously relate to the more detailed genome-scale stoichiometric models which act as heterogeneous data integrators. The simpler inference models are, in our opinion, key to understanding microbial ecosystems, yet until now, have received remarkably little attention. This has led to the situation where the modeling of microbial communities, using only genome-scale models is currently more a computational, theoretical exercise than a method useful to the experimentalist. |
topic |
Metabolism Flux balance analysis microbial communities Community modelling metagenomic data integration genome-scale stoichiometric modelling |
url |
http://journal.frontiersin.org/Journal/10.3389/fmicb.2015.00213/full |
work_keys_str_mv |
AT markehanemaaijer systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure AT markehanemaaijer systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure AT wilfredfmroling systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure AT brettgolivier systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure AT ruchirakhandelwal systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure AT ruchirakhandelwal systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure AT baseteusink systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure AT frankjbruggeman systemsmodelingapproachesformicrobialcommunitystudiesfrommetagenomicstoinferenceofthecommunitystructure |
_version_ |
1716775198067261440 |