Scalable rule-based modelling of allosteric proteins and biochemical networks.

Much of the complexity of biochemical networks comes from the information-processing abilities of allosteric proteins, be they receptors, ion-channels, signalling molecules or transcription factors. An allosteric protein can be uniquely regulated by each combination of input molecules that it binds....

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Main Authors: Julien F Ollivier, Vahid Shahrezaei, Peter S Swain
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2010-11-01
Series:PLoS Computational Biology
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/21079669/pdf/?tool=EBI
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spelling doaj-6cb68f305e13429885e5414b4864b9c42021-04-21T15:30:37ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582010-11-01611e100097510.1371/journal.pcbi.1000975Scalable rule-based modelling of allosteric proteins and biochemical networks.Julien F OllivierVahid ShahrezaeiPeter S SwainMuch of the complexity of biochemical networks comes from the information-processing abilities of allosteric proteins, be they receptors, ion-channels, signalling molecules or transcription factors. An allosteric protein can be uniquely regulated by each combination of input molecules that it binds. This "regulatory complexity" causes a combinatorial increase in the number of parameters required to fit experimental data as the number of protein interactions increases. It therefore challenges the creation, updating, and re-use of biochemical models. Here, we propose a rule-based modelling framework that exploits the intrinsic modularity of protein structure to address regulatory complexity. Rather than treating proteins as "black boxes", we model their hierarchical structure and, as conformational changes, internal dynamics. By modelling the regulation of allosteric proteins through these conformational changes, we often decrease the number of parameters required to fit data, and so reduce over-fitting and improve the predictive power of a model. Our method is thermodynamically grounded, imposes detailed balance, and also includes molecular cross-talk and the background activity of enzymes. We use our Allosteric Network Compiler to examine how allostery can facilitate macromolecular assembly and how competitive ligands can change the observed cooperativity of an allosteric protein. We also develop a parsimonious model of G protein-coupled receptors that explains functional selectivity and can predict the rank order of potency of agonists acting through a receptor. Our methodology should provide a basis for scalable, modular and executable modelling of biochemical networks in systems and synthetic biology.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/21079669/pdf/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Julien F Ollivier
Vahid Shahrezaei
Peter S Swain
spellingShingle Julien F Ollivier
Vahid Shahrezaei
Peter S Swain
Scalable rule-based modelling of allosteric proteins and biochemical networks.
PLoS Computational Biology
author_facet Julien F Ollivier
Vahid Shahrezaei
Peter S Swain
author_sort Julien F Ollivier
title Scalable rule-based modelling of allosteric proteins and biochemical networks.
title_short Scalable rule-based modelling of allosteric proteins and biochemical networks.
title_full Scalable rule-based modelling of allosteric proteins and biochemical networks.
title_fullStr Scalable rule-based modelling of allosteric proteins and biochemical networks.
title_full_unstemmed Scalable rule-based modelling of allosteric proteins and biochemical networks.
title_sort scalable rule-based modelling of allosteric proteins and biochemical networks.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2010-11-01
description Much of the complexity of biochemical networks comes from the information-processing abilities of allosteric proteins, be they receptors, ion-channels, signalling molecules or transcription factors. An allosteric protein can be uniquely regulated by each combination of input molecules that it binds. This "regulatory complexity" causes a combinatorial increase in the number of parameters required to fit experimental data as the number of protein interactions increases. It therefore challenges the creation, updating, and re-use of biochemical models. Here, we propose a rule-based modelling framework that exploits the intrinsic modularity of protein structure to address regulatory complexity. Rather than treating proteins as "black boxes", we model their hierarchical structure and, as conformational changes, internal dynamics. By modelling the regulation of allosteric proteins through these conformational changes, we often decrease the number of parameters required to fit data, and so reduce over-fitting and improve the predictive power of a model. Our method is thermodynamically grounded, imposes detailed balance, and also includes molecular cross-talk and the background activity of enzymes. We use our Allosteric Network Compiler to examine how allostery can facilitate macromolecular assembly and how competitive ligands can change the observed cooperativity of an allosteric protein. We also develop a parsimonious model of G protein-coupled receptors that explains functional selectivity and can predict the rank order of potency of agonists acting through a receptor. Our methodology should provide a basis for scalable, modular and executable modelling of biochemical networks in systems and synthetic biology.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/21079669/pdf/?tool=EBI
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