Author
Listed:
- MIGUEL Ã NGEL MARTÃ N
(Department of Applied Mathematics, Technical University of Madrid, Madrid 28040, Spain)
- JOHN W. CRAWFORD
(��Adam Smith Business School, University of Glasgow, Glasgow G12 8QQ, Scotland)
- ANDREW NEAL
(��Department of Sustainable Agriculture Science, Rothamsted Research, Harpenden AL5 2JQ, UK)
- CARLOS GARCà A-GUTIÉRREZ
(Department of Applied Mathematics, Technical University of Madrid, Madrid 28040, Spain)
Abstract
Metagenomics provides a new window into the structure and function of the human gut microbiome. Results suggest that certain properties of the adult gut microbial community are conserved across host populations and show remarkable resilience. The non-random clustering of taxa in gut microbiomes is evidence for the existence of functional networks in communities that may be involved in underlying dynamical processes giving rise to these patterns. Models for understanding the underlying structure (including enterotypes) and derived properties are in demand by researchers. We propose a simple random function system to model adaption and self-organization of the microbiome taxonomic space when fostering the optimal functioning of the system. The construction of this model is based on key facts of microbiota functioning, reported in recent studies. We aim to demonstrate the existence of a probability distribution as a microbiome attractor resulting from an intermittent adaption process. Its mathematical structural properties explain the stability of gut microbiota and its resilience to perturbation after occasional stress. The model is consistent with microbiome clustering results and provides precise mathematical meaning to reported gradients among enterotypes. The model also explains how intermittent perturbations, such as long-term dietary patterns, may affect microbiome structure; these results are consistent with reported experimental results. The mathematical facts implied by the model reveal an underlying mechanism that may explain gut microbiome structure and related experimental findings. Within this framework, stability and resilience properties of human gut microbiota are explained as a consequence of the model.
Suggested Citation
Miguel à Ngel Martã N & John W. Crawford & Andrew Neal & Carlos Garcã A-Gutiã‰Rrez, 2021.
"Enterotype-Like Microbiome Stratification As Emergent Structure In Complex Adaptive Systems: A Mathematical Model,"
FRACTALS (fractals), World Scientific Publishing Co. Pte. Ltd., vol. 29(07), pages 1-8, November.
Handle:
RePEc:wsi:fracta:v:29:y:2021:i:07:n:s0218348x21502108
DOI: 10.1142/S0218348X21502108
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