Achieving optimal growth through product feedback inhibition in metabolism.
Recent evidence suggests that the metabolism of some organisms, such as Escherichia coli, is remarkably efficient, producing close to the maximum amount of biomass per unit of nutrient consumed. This observation raises the question of what regulatory mechanisms enable such efficiency. Here, we propo...
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Format: | Article |
Language: | English |
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Public Library of Science (PLoS)
2010-06-01
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Series: | PLoS Computational Biology |
Online Access: | http://europepmc.org/articles/PMC2880561?pdf=render |
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author | Sidhartha Goyal Jie Yuan Thomas Chen Joshua D Rabinowitz Ned S Wingreen |
author_facet | Sidhartha Goyal Jie Yuan Thomas Chen Joshua D Rabinowitz Ned S Wingreen |
author_sort | Sidhartha Goyal |
collection | DOAJ |
description | Recent evidence suggests that the metabolism of some organisms, such as Escherichia coli, is remarkably efficient, producing close to the maximum amount of biomass per unit of nutrient consumed. This observation raises the question of what regulatory mechanisms enable such efficiency. Here, we propose that simple product-feedback inhibition by itself is capable of leading to such optimality. We analyze several representative metabolic modules--starting from a linear pathway and advancing to a bidirectional pathway and metabolic cycle, and finally to integration of two different nutrient inputs. In each case, our mathematical analysis shows that product-feedback inhibition is not only homeostatic but also, with appropriate feedback connections, can minimize futile cycling and optimize fluxes. However, the effectiveness of simple product-feedback inhibition comes at the cost of high levels of some metabolite pools, potentially associated with toxicity and osmotic imbalance. These large metabolite pool sizes can be restricted if feedback inhibition is ultrasensitive. Indeed, the multi-layer regulation of metabolism by control of enzyme expression, enzyme covalent modification, and allostery is expected to result in such ultrasensitive feedbacks. To experimentally test whether the qualitative predictions from our analysis of feedback inhibition apply to metabolic modules beyond linear pathways, we examine the case of nitrogen assimilation in E. coli, which involves both nutrient integration and a metabolic cycle. We find that the feedback regulation scheme suggested by our mathematical analysis closely aligns with the actual regulation of the network and is sufficient to explain much of the dynamical behavior of relevant metabolite pool sizes in nutrient-switching experiments. |
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issn | 1553-734X 1553-7358 |
language | English |
last_indexed | 2024-12-19T19:37:41Z |
publishDate | 2010-06-01 |
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spelling | doaj.art-32c9420e656b47a6bd60c8d5cfd5e68c2022-12-21T20:08:23ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582010-06-0166e100080210.1371/journal.pcbi.1000802Achieving optimal growth through product feedback inhibition in metabolism.Sidhartha GoyalJie YuanThomas ChenJoshua D RabinowitzNed S WingreenRecent evidence suggests that the metabolism of some organisms, such as Escherichia coli, is remarkably efficient, producing close to the maximum amount of biomass per unit of nutrient consumed. This observation raises the question of what regulatory mechanisms enable such efficiency. Here, we propose that simple product-feedback inhibition by itself is capable of leading to such optimality. We analyze several representative metabolic modules--starting from a linear pathway and advancing to a bidirectional pathway and metabolic cycle, and finally to integration of two different nutrient inputs. In each case, our mathematical analysis shows that product-feedback inhibition is not only homeostatic but also, with appropriate feedback connections, can minimize futile cycling and optimize fluxes. However, the effectiveness of simple product-feedback inhibition comes at the cost of high levels of some metabolite pools, potentially associated with toxicity and osmotic imbalance. These large metabolite pool sizes can be restricted if feedback inhibition is ultrasensitive. Indeed, the multi-layer regulation of metabolism by control of enzyme expression, enzyme covalent modification, and allostery is expected to result in such ultrasensitive feedbacks. To experimentally test whether the qualitative predictions from our analysis of feedback inhibition apply to metabolic modules beyond linear pathways, we examine the case of nitrogen assimilation in E. coli, which involves both nutrient integration and a metabolic cycle. We find that the feedback regulation scheme suggested by our mathematical analysis closely aligns with the actual regulation of the network and is sufficient to explain much of the dynamical behavior of relevant metabolite pool sizes in nutrient-switching experiments.http://europepmc.org/articles/PMC2880561?pdf=render |
spellingShingle | Sidhartha Goyal Jie Yuan Thomas Chen Joshua D Rabinowitz Ned S Wingreen Achieving optimal growth through product feedback inhibition in metabolism. PLoS Computational Biology |
title | Achieving optimal growth through product feedback inhibition in metabolism. |
title_full | Achieving optimal growth through product feedback inhibition in metabolism. |
title_fullStr | Achieving optimal growth through product feedback inhibition in metabolism. |
title_full_unstemmed | Achieving optimal growth through product feedback inhibition in metabolism. |
title_short | Achieving optimal growth through product feedback inhibition in metabolism. |
title_sort | achieving optimal growth through product feedback inhibition in metabolism |
url | http://europepmc.org/articles/PMC2880561?pdf=render |
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