» Articles » PMID: 31216273

Modeling Metabolic Networks of Individual Bacterial Agents in Heterogeneous and Dynamic Soil Habitats (IndiMeSH)

Overview
Specialty Biology
Date 2019 Jun 20
PMID 31216273
Citations 24
Authors
Affiliations
Soon will be listed here.
Abstract

Natural soil is characterized as a complex habitat with patchy hydrated islands and spatially variable nutrients that is in a constant state of change due to wetting-drying dynamics. Soil microbial activity is often concentrated in sparsely distributed hotspots that contribute disproportionally to macroscopic biogeochemical nutrient cycling and greenhouse gas emissions. The mechanistic representation of such dynamic hotspots requires new modeling approaches capable of representing the interplay between dynamic local conditions and the versatile microbial metabolic adaptations. We have developed IndiMeSH (Individual-based Metabolic network model for Soil Habitats) as a spatially explicit model for the physical and chemical microenvironments of soil, combined with an individual-based representation of bacterial motility and growth using adaptive metabolic networks. The model uses angular pore networks and a physically based description of the aqueous phase as a backbone for nutrient diffusion and bacterial dispersal combined with dynamic flux balance analysis to calculate growth rates depending on local nutrient conditions. To maximize computational efficiency, reduced scale metabolic networks are used for the simulation scenarios and evaluated strategically to the genome scale model. IndiMeSH was compared to a well-established population-based spatiotemporal metabolic network model (COMETS) and to experimental data of bacterial spatial organization in pore networks mimicking soil aggregates. IndiMeSH was then used to strategically study dynamic response of a bacterial community to abrupt environmental perturbations and the influence of habitat geometry and hydration conditions. Results illustrate that IndiMeSH is capable of representing trophic interactions among bacterial species, predicting the spatial organization and segregation of bacterial populations due to oxygen and carbon gradients, and provides insights into dynamic community responses as a consequence of environmental changes. The modular design of IndiMeSH and its implementation are adaptable, allowing it to represent a wide variety of experimental and in silico microbial systems.

Citing Articles

Coupling flux balance analysis with reactive transport modeling through machine learning for rapid and stable simulation of microbial metabolic switching.

Song H, Ahamed F, Lee J, Henry C, Edirisinghe J, Nelson W Sci Rep. 2025; 15(1):6042.

PMID: 39972043 PMC: 11840022. DOI: 10.1038/s41598-025-89997-9.


Engineering Microbial Consortia as Living Materials: Advances and Prospectives.

Wang S, Zhan Y, Jiang X, Lai Y ACS Synth Biol. 2024; 13(9):2653-2666.

PMID: 39174016 PMC: 11421429. DOI: 10.1021/acssynbio.4c00313.


Microbiome modeling: a beginner's guide.

Lange E, Kranert L, Kruger J, Benndorf D, Heyer R Front Microbiol. 2024; 15:1368377.

PMID: 38962127 PMC: 11220171. DOI: 10.3389/fmicb.2024.1368377.


Microscale advection governs microbial growth and oxygen consumption in macroporous aggregates.

Shen R, Borer B, Ciccarese D, Salek M, Babbin A mSphere. 2024; 9(4):e0018524.

PMID: 38530018 PMC: 11036798. DOI: 10.1128/msphere.00185-24.


Discretised Flux Balance Analysis for Reaction-Diffusion Simulation of Single-Cell Metabolism.

Chew Y, Spill F Bull Math Biol. 2024; 86(4):39.

PMID: 38448618 PMC: 11390822. DOI: 10.1007/s11538-024-01264-6.


References
1.
Long T, Or D . Dynamics of microbial growth and coexistence on variably saturated rough surfaces. Microb Ecol. 2009; 58(2):262-75. DOI: 10.1007/s00248-009-9510-3. View

2.
Harcombe W, Riehl W, Dukovski I, Granger B, Betts A, Lang A . Metabolic resource allocation in individual microbes determines ecosystem interactions and spatial dynamics. Cell Rep. 2014; 7(4):1104-15. PMC: 4097880. DOI: 10.1016/j.celrep.2014.03.070. View

3.
ODonnell A, Young I, Rushton S, Shirley M, Crawford J . Visualization, modelling and prediction in soil microbiology. Nat Rev Microbiol. 2007; 5(9):689-99. DOI: 10.1038/nrmicro1714. View

4.
Biggs M, Papin J . Novel multiscale modeling tool applied to Pseudomonas aeruginosa biofilm formation. PLoS One. 2013; 8(10):e78011. PMC: 3798466. DOI: 10.1371/journal.pone.0078011. View

5.
Cole J, Kohler L, Hedhli J, Luthey-Schulten Z . Spatially-resolved metabolic cooperativity within dense bacterial colonies. BMC Syst Biol. 2015; 9:15. PMC: 4376365. DOI: 10.1186/s12918-015-0155-1. View