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Inferring Signaling Pathway Topologies from Multiple Perturbation Measurements of Specific Biochemical Species
Author(s)
Date Issued
2010-03-16
Date Available
2013-11-29T13:27:03Z
Abstract
The specification of biological decisions by signaling pathways is encoded by the interplay between activation dynamics and network topologies. Although we can describe complex networks, we cannot easily determine which topology the cell actually uses to transduce a specific signal. Experimental testing of all plausible topologies is infeasible because of the combinatorially large number of experiments required to explore the complete hypothesis space. Here, we demonstrate that Bayesian inference–based modeling provides an approach to explore and constrain this hypothesis space, permitting the rational ranking of pathway models. Our approach can use measurements of a limited number of biochemical species when combined with multiple perturbations. As proof of concept, we examined the activation of the extracellular signal–regulated kinase (ERK) pathway by epidermal growth factor. The predicted and experimentally validated model shows that both Raf-1 and, unexpectedly, B-Raf are needed to fully activate ERK in two different cell lines. Thus, our formal methodology rationally infers evidentially supported pathway topologies even when a limited number of biochemical and kinetic measurements are available.
Other Sponsorship
UK Department of Trade and Industry (Beacon Project; AG, VV, WK), Medical Research Council (G0400053 and G0600765; GSB, WK MDH), the European Union (LSHB-CT-2006-037189; MDH), Science Foundation Ireland (06/CE/B1129), and by the Fondation Leducq (06CVD02; MDH and GSB). MG is funded by an EPSRC Advanced Research Fellowship, EP/E052029, and BBSRC project grant BB/G006997/1.
Type of Material
Journal Article
Publisher
American Association for the Advancement of Science
Journal
Science Signaling
Volume
3
Issue
113
Start Page
ra20
End Page
ra20
Copyright (Published Version)
2010 American Association for the Advancement of Science
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
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Name
Paper73.pdf
Size
2.24 MB
Format
Adobe PDF
Checksum (MD5)
5b4d241654f65637fe24da046c1597b4
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