Perturbation Biology: Inferring Signaling Networks in Cellular Systems

Evan Molinelli(Cornell University), Anil Korkut(Memorial Sloan Kettering Cancer Center), Weiqing Wang(Memorial Sloan Kettering Cancer Center), Martin L. Miller(Memorial Sloan Kettering Cancer Center), Nicholas P. Gauthier(Memorial Sloan Kettering Cancer Center), Xiaohong Jing(Memorial Sloan Kettering Cancer Center), Poorvi Kaushik(Memorial Sloan Kettering Cancer Center), Qin He(Memorial Sloan Kettering Cancer Center), Gordon B. Mills(The University of Texas MD Anderson Cancer Center), David B. Solit(Memorial Sloan Kettering Cancer Center), Christine A. Pratilas(Memorial Sloan Kettering Cancer Center), Martin Weigt(Sorbonne Université), Alfredo Braunstein(Polytechnic University of Turin), Andrea Pagnani(Polytechnic University of Turin), Riccardo Zecchina(Italian institute for Genomic Medicine), Chris Sander(Memorial Sloan Kettering Cancer Center)
PLoS Computational Biology
December 19, 2013
Cited by 195Open Access
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Abstract

We present a powerful experimental-computational technology for inferring network models that predict the response of cells to perturbations, and that may be useful in the design of combinatorial therapy against cancer. The experiments are systematic series of perturbations of cancer cell lines by targeted drugs, singly or in combination. The response to perturbation is quantified in terms of relative changes in the measured levels of proteins, phospho-proteins and cellular phenotypes such as viability. Computational network models are derived de novo, i.e., without prior knowledge of signaling pathways, and are based on simple non-linear differential equations. The prohibitively large solution space of all possible network models is explored efficiently using a probabilistic algorithm, Belief Propagation (BP), which is three orders of magnitude faster than standard Monte Carlo methods. Explicit executable models are derived for a set of perturbation experiments in SKMEL-133 melanoma cell lines, which are resistant to the therapeutically important inhibitor of RAF kinase. The resulting network models reproduce and extend known pathway biology. They empower potential discoveries of new molecular interactions and predict efficacious novel drug perturbations, such as the inhibition of PLK1, which is verified experimentally. This technology is suitable for application to larger systems in diverse areas of molecular biology.


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