Predicting phenotypic diversity and the underlying quantitative molecular transitions.

During development, signaling networks control the formation of multicellular patterns. To what extent quantitative fluctuations in these complex networks may affect multicellular phenotype remains unclear. Here, we describe a computational approach to predict and analyze the phenotypic diversity th...

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Main Authors: Claudiu A Giurumescu, Paul W Sternberg, Anand R Asthagiri
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2009-04-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC2661366?pdf=render
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spelling doaj-17bfd3c18be946d98e8a694dfadc59522020-11-25T02:31:46ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582009-04-0154e100035410.1371/journal.pcbi.1000354Predicting phenotypic diversity and the underlying quantitative molecular transitions.Claudiu A GiurumescuPaul W SternbergAnand R AsthagiriDuring development, signaling networks control the formation of multicellular patterns. To what extent quantitative fluctuations in these complex networks may affect multicellular phenotype remains unclear. Here, we describe a computational approach to predict and analyze the phenotypic diversity that is accessible to a developmental signaling network. Applying this framework to vulval development in C. elegans, we demonstrate that quantitative changes in the regulatory network can render approximately 500 multicellular phenotypes. This phenotypic capacity is an order-of-magnitude below the theoretical upper limit for this system but yet is large enough to demonstrate that the system is not restricted to a select few outcomes. Using metrics to gauge the robustness of these phenotypes to parameter perturbations, we identify a select subset of novel phenotypes that are the most promising for experimental validation. In addition, our model calculations provide a layout of these phenotypes in network parameter space. Analyzing this landscape of multicellular phenotypes yielded two significant insights. First, we show that experimentally well-established mutant phenotypes may be rendered using non-canonical network perturbations. Second, we show that the predicted multicellular patterns include not only those observed in C. elegans, but also those occurring exclusively in other species of the Caenorhabditis genus. This result demonstrates that quantitative diversification of a common regulatory network is indeed demonstrably sufficient to generate the phenotypic differences observed across three major species within the Caenorhabditis genus. Using our computational framework, we systematically identify the quantitative changes that may have occurred in the regulatory network during the evolution of these species. Our model predictions show that significant phenotypic diversity may be sampled through quantitative variations in the regulatory network without overhauling the core network architecture. Furthermore, by comparing the predicted landscape of phenotypes to multicellular patterns that have been experimentally observed across multiple species, we systematically trace the quantitative regulatory changes that may have occurred during the evolution of the Caenorhabditis genus.http://europepmc.org/articles/PMC2661366?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Claudiu A Giurumescu
Paul W Sternberg
Anand R Asthagiri
spellingShingle Claudiu A Giurumescu
Paul W Sternberg
Anand R Asthagiri
Predicting phenotypic diversity and the underlying quantitative molecular transitions.
PLoS Computational Biology
author_facet Claudiu A Giurumescu
Paul W Sternberg
Anand R Asthagiri
author_sort Claudiu A Giurumescu
title Predicting phenotypic diversity and the underlying quantitative molecular transitions.
title_short Predicting phenotypic diversity and the underlying quantitative molecular transitions.
title_full Predicting phenotypic diversity and the underlying quantitative molecular transitions.
title_fullStr Predicting phenotypic diversity and the underlying quantitative molecular transitions.
title_full_unstemmed Predicting phenotypic diversity and the underlying quantitative molecular transitions.
title_sort predicting phenotypic diversity and the underlying quantitative molecular transitions.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2009-04-01
description During development, signaling networks control the formation of multicellular patterns. To what extent quantitative fluctuations in these complex networks may affect multicellular phenotype remains unclear. Here, we describe a computational approach to predict and analyze the phenotypic diversity that is accessible to a developmental signaling network. Applying this framework to vulval development in C. elegans, we demonstrate that quantitative changes in the regulatory network can render approximately 500 multicellular phenotypes. This phenotypic capacity is an order-of-magnitude below the theoretical upper limit for this system but yet is large enough to demonstrate that the system is not restricted to a select few outcomes. Using metrics to gauge the robustness of these phenotypes to parameter perturbations, we identify a select subset of novel phenotypes that are the most promising for experimental validation. In addition, our model calculations provide a layout of these phenotypes in network parameter space. Analyzing this landscape of multicellular phenotypes yielded two significant insights. First, we show that experimentally well-established mutant phenotypes may be rendered using non-canonical network perturbations. Second, we show that the predicted multicellular patterns include not only those observed in C. elegans, but also those occurring exclusively in other species of the Caenorhabditis genus. This result demonstrates that quantitative diversification of a common regulatory network is indeed demonstrably sufficient to generate the phenotypic differences observed across three major species within the Caenorhabditis genus. Using our computational framework, we systematically identify the quantitative changes that may have occurred in the regulatory network during the evolution of these species. Our model predictions show that significant phenotypic diversity may be sampled through quantitative variations in the regulatory network without overhauling the core network architecture. Furthermore, by comparing the predicted landscape of phenotypes to multicellular patterns that have been experimentally observed across multiple species, we systematically trace the quantitative regulatory changes that may have occurred during the evolution of the Caenorhabditis genus.
url http://europepmc.org/articles/PMC2661366?pdf=render
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