TY - JOUR
T1 - Community metabolic modeling approaches to understanding the gut microbiome
T2 - Bridging biochemistry and ecology
AU - Mendes-Soares, Helena
AU - Chia, Nicholas
N1 - Funding Information:
This work was supported by the National Institutes of Health [Grant 1R01CA179243 to Nicholas Chia].
Publisher Copyright:
© 2017 Elsevier Inc.
PY - 2017/4/1
Y1 - 2017/4/1
N2 - Interest in the human microbiome is at an all time high. The number of human microbiome studies is growing exponentially, as are reported associations between microbial communities and disease. However, we have not been able to translate the ever-growing amount of microbiome sequence data into better health. To do this, we need a practical means of transforming a disease-associated microbiome into a health-associated microbiome. This will require a framework that can be used to generate predictions about community dynamics within the microbiome under different conditions, predictions that can be tested and validated. In this review, using the gut microbiome to illustrate, we describe two classes of model that are currently being used to generate predictions about microbial community dynamics: ecological models and metabolic models. We outline the strengths and weaknesses of each approach and discuss the insights into the gut microbiome that have emerged from modeling thus far. We then argue that the two approaches can be combined to yield a community metabolic model, which will supply the framework needed to move from high-throughput omics data to testable predictions about how prebiotic, probiotic, and nutritional interventions affect the microbiome. We are confident that with a suitable model, researchers and clinicians will be able to harness the stream of sequence data and begin designing strategies to make targeted alterations to the microbiome and improve health.
AB - Interest in the human microbiome is at an all time high. The number of human microbiome studies is growing exponentially, as are reported associations between microbial communities and disease. However, we have not been able to translate the ever-growing amount of microbiome sequence data into better health. To do this, we need a practical means of transforming a disease-associated microbiome into a health-associated microbiome. This will require a framework that can be used to generate predictions about community dynamics within the microbiome under different conditions, predictions that can be tested and validated. In this review, using the gut microbiome to illustrate, we describe two classes of model that are currently being used to generate predictions about microbial community dynamics: ecological models and metabolic models. We outline the strengths and weaknesses of each approach and discuss the insights into the gut microbiome that have emerged from modeling thus far. We then argue that the two approaches can be combined to yield a community metabolic model, which will supply the framework needed to move from high-throughput omics data to testable predictions about how prebiotic, probiotic, and nutritional interventions affect the microbiome. We are confident that with a suitable model, researchers and clinicians will be able to harness the stream of sequence data and begin designing strategies to make targeted alterations to the microbiome and improve health.
KW - Community metabolic models
KW - Ecological models
KW - Metabolic models
KW - Microbiome
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U2 - 10.1016/j.freeradbiomed.2016.12.017
DO - 10.1016/j.freeradbiomed.2016.12.017
M3 - Review article
C2 - 27989793
AN - SCOPUS:85008190839
SN - 0891-5849
VL - 105
SP - 102
EP - 109
JO - Free Radical Biology and Medicine
JF - Free Radical Biology and Medicine
ER -