Perspectives and Challenges in Microbial Communities Metabolic Modeling

Bacteria have evolved to efficiently interact each other, forming complex entities known as microbial communities. These “super-organisms” play a central role in maintaining the health of their eukaryotic hosts and in the cycling of elements like carbon and nitrogen. However, despite their crucial i...

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Main Authors: Emanuele Bosi, Giovanni Bacci, Alessio Mengoni, Marco Fondi
Format: Article
Language:English
Published: Frontiers Media S.A. 2017-06-01
Series:Frontiers in Genetics
Subjects:
Online Access:http://journal.frontiersin.org/article/10.3389/fgene.2017.00088/full
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spelling doaj-526c20f61b064d31ac0cbf60628cbd372020-11-24T20:51:53ZengFrontiers Media S.A.Frontiers in Genetics1664-80212017-06-01810.3389/fgene.2017.00088266073Perspectives and Challenges in Microbial Communities Metabolic ModelingEmanuele BosiGiovanni BacciAlessio MengoniMarco FondiBacteria have evolved to efficiently interact each other, forming complex entities known as microbial communities. These “super-organisms” play a central role in maintaining the health of their eukaryotic hosts and in the cycling of elements like carbon and nitrogen. However, despite their crucial importance, the mechanisms that influence the functioning of microbial communities and their relationship with environmental perturbations are obscure. The study of microbial communities was boosted by tremendous advances in sequencing technologies, and in particular by the possibility to determine genomic sequences of bacteria directly from environmental samples. Indeed, with the advent of metagenomics, it has become possible to investigate, on a previously unparalleled scale, the taxonomical composition and the functional genetic elements present in a specific community. Notwithstanding, the metagenomic approach per se suffers some limitations, among which the impossibility of modeling molecular-level (e.g., metabolic) interactions occurring between community members, as well as their effects on the overall stability of the entire system. The family of constraint-based methods, such as flux balance analysis, has been fruitfully used to translate genome sequences in predictive, genome-scale modeling platforms. Although these techniques have been initially developed for analyzing single, well-known model organisms, their recent improvements allowed engaging in multi-organism in silico analyses characterized by a considerable predictive capability. In the face of these advances, here we focus on providing an overview of the possibilities and challenges related to the modeling of metabolic interactions within a bacterial community, discussing the feasibility and the perspectives of this kind of analysis in the (near) future.http://journal.frontiersin.org/article/10.3389/fgene.2017.00088/fullmicrobial communitiesmetabolic modelingconstraint-based modelingmetabolic interactionsmicrobiomemcFBA
collection DOAJ
language English
format Article
sources DOAJ
author Emanuele Bosi
Giovanni Bacci
Alessio Mengoni
Marco Fondi
spellingShingle Emanuele Bosi
Giovanni Bacci
Alessio Mengoni
Marco Fondi
Perspectives and Challenges in Microbial Communities Metabolic Modeling
Frontiers in Genetics
microbial communities
metabolic modeling
constraint-based modeling
metabolic interactions
microbiome
mcFBA
author_facet Emanuele Bosi
Giovanni Bacci
Alessio Mengoni
Marco Fondi
author_sort Emanuele Bosi
title Perspectives and Challenges in Microbial Communities Metabolic Modeling
title_short Perspectives and Challenges in Microbial Communities Metabolic Modeling
title_full Perspectives and Challenges in Microbial Communities Metabolic Modeling
title_fullStr Perspectives and Challenges in Microbial Communities Metabolic Modeling
title_full_unstemmed Perspectives and Challenges in Microbial Communities Metabolic Modeling
title_sort perspectives and challenges in microbial communities metabolic modeling
publisher Frontiers Media S.A.
series Frontiers in Genetics
issn 1664-8021
publishDate 2017-06-01
description Bacteria have evolved to efficiently interact each other, forming complex entities known as microbial communities. These “super-organisms” play a central role in maintaining the health of their eukaryotic hosts and in the cycling of elements like carbon and nitrogen. However, despite their crucial importance, the mechanisms that influence the functioning of microbial communities and their relationship with environmental perturbations are obscure. The study of microbial communities was boosted by tremendous advances in sequencing technologies, and in particular by the possibility to determine genomic sequences of bacteria directly from environmental samples. Indeed, with the advent of metagenomics, it has become possible to investigate, on a previously unparalleled scale, the taxonomical composition and the functional genetic elements present in a specific community. Notwithstanding, the metagenomic approach per se suffers some limitations, among which the impossibility of modeling molecular-level (e.g., metabolic) interactions occurring between community members, as well as their effects on the overall stability of the entire system. The family of constraint-based methods, such as flux balance analysis, has been fruitfully used to translate genome sequences in predictive, genome-scale modeling platforms. Although these techniques have been initially developed for analyzing single, well-known model organisms, their recent improvements allowed engaging in multi-organism in silico analyses characterized by a considerable predictive capability. In the face of these advances, here we focus on providing an overview of the possibilities and challenges related to the modeling of metabolic interactions within a bacterial community, discussing the feasibility and the perspectives of this kind of analysis in the (near) future.
topic microbial communities
metabolic modeling
constraint-based modeling
metabolic interactions
microbiome
mcFBA
url http://journal.frontiersin.org/article/10.3389/fgene.2017.00088/full
work_keys_str_mv AT emanuelebosi perspectivesandchallengesinmicrobialcommunitiesmetabolicmodeling
AT giovannibacci perspectivesandchallengesinmicrobialcommunitiesmetabolicmodeling
AT alessiomengoni perspectivesandchallengesinmicrobialcommunitiesmetabolicmodeling
AT marcofondi perspectivesandchallengesinmicrobialcommunitiesmetabolicmodeling
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