Combinatorial complexity and compositional drift in protein interaction networks.

The assembly of molecular machines and transient signaling complexes does not typically occur under circumstances in which the appropriate proteins are isolated from all others present in the cell. Rather, assembly must proceed in the context of large-scale protein-protein interaction (PPI) networks...

Full description

Bibliographic Details
Main Authors: Eric J Deeds, Jean Krivine, Jérôme Feret, Vincent Danos, Walter Fontana
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3297590?pdf=render
id doaj-ab6f385a820f4bdf85928d21c63bdfbf
record_format Article
spelling doaj-ab6f385a820f4bdf85928d21c63bdfbf2020-11-24T22:12:40ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-0173e3203210.1371/journal.pone.0032032Combinatorial complexity and compositional drift in protein interaction networks.Eric J DeedsJean KrivineJérôme FeretVincent DanosWalter FontanaThe assembly of molecular machines and transient signaling complexes does not typically occur under circumstances in which the appropriate proteins are isolated from all others present in the cell. Rather, assembly must proceed in the context of large-scale protein-protein interaction (PPI) networks that are characterized both by conflict and combinatorial complexity. Conflict refers to the fact that protein interfaces can often bind many different partners in a mutually exclusive way, while combinatorial complexity refers to the explosion in the number of distinct complexes that can be formed by a network of binding possibilities. Using computational models, we explore the consequences of these characteristics for the global dynamics of a PPI network based on highly curated yeast two-hybrid data. The limited molecular context represented in this data-type translates formally into an assumption of independent binding sites for each protein. The challenge of avoiding the explicit enumeration of the astronomically many possibilities for complex formation is met by a rule-based approach to kinetic modeling. Despite imposing global biophysical constraints, we find that initially identical simulations rapidly diverge in the space of molecular possibilities, eventually sampling disjoint sets of large complexes. We refer to this phenomenon as "compositional drift". Since interaction data in PPI networks lack detailed information about geometric and biological constraints, our study does not represent a quantitative description of cellular dynamics. Rather, our work brings to light a fundamental problem (the control of compositional drift) that must be solved by mechanisms of assembly in the context of large networks. In cases where drift is not (or cannot be) completely controlled by the cell, this phenomenon could constitute a novel source of phenotypic heterogeneity in cell populations.http://europepmc.org/articles/PMC3297590?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Eric J Deeds
Jean Krivine
Jérôme Feret
Vincent Danos
Walter Fontana
spellingShingle Eric J Deeds
Jean Krivine
Jérôme Feret
Vincent Danos
Walter Fontana
Combinatorial complexity and compositional drift in protein interaction networks.
PLoS ONE
author_facet Eric J Deeds
Jean Krivine
Jérôme Feret
Vincent Danos
Walter Fontana
author_sort Eric J Deeds
title Combinatorial complexity and compositional drift in protein interaction networks.
title_short Combinatorial complexity and compositional drift in protein interaction networks.
title_full Combinatorial complexity and compositional drift in protein interaction networks.
title_fullStr Combinatorial complexity and compositional drift in protein interaction networks.
title_full_unstemmed Combinatorial complexity and compositional drift in protein interaction networks.
title_sort combinatorial complexity and compositional drift in protein interaction networks.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description The assembly of molecular machines and transient signaling complexes does not typically occur under circumstances in which the appropriate proteins are isolated from all others present in the cell. Rather, assembly must proceed in the context of large-scale protein-protein interaction (PPI) networks that are characterized both by conflict and combinatorial complexity. Conflict refers to the fact that protein interfaces can often bind many different partners in a mutually exclusive way, while combinatorial complexity refers to the explosion in the number of distinct complexes that can be formed by a network of binding possibilities. Using computational models, we explore the consequences of these characteristics for the global dynamics of a PPI network based on highly curated yeast two-hybrid data. The limited molecular context represented in this data-type translates formally into an assumption of independent binding sites for each protein. The challenge of avoiding the explicit enumeration of the astronomically many possibilities for complex formation is met by a rule-based approach to kinetic modeling. Despite imposing global biophysical constraints, we find that initially identical simulations rapidly diverge in the space of molecular possibilities, eventually sampling disjoint sets of large complexes. We refer to this phenomenon as "compositional drift". Since interaction data in PPI networks lack detailed information about geometric and biological constraints, our study does not represent a quantitative description of cellular dynamics. Rather, our work brings to light a fundamental problem (the control of compositional drift) that must be solved by mechanisms of assembly in the context of large networks. In cases where drift is not (or cannot be) completely controlled by the cell, this phenomenon could constitute a novel source of phenotypic heterogeneity in cell populations.
url http://europepmc.org/articles/PMC3297590?pdf=render
work_keys_str_mv AT ericjdeeds combinatorialcomplexityandcompositionaldriftinproteininteractionnetworks
AT jeankrivine combinatorialcomplexityandcompositionaldriftinproteininteractionnetworks
AT jeromeferet combinatorialcomplexityandcompositionaldriftinproteininteractionnetworks
AT vincentdanos combinatorialcomplexityandcompositionaldriftinproteininteractionnetworks
AT walterfontana combinatorialcomplexityandcompositionaldriftinproteininteractionnetworks
_version_ 1725802854477725696