The central goal of this proposal is to develop and experimentally validate a computational model of cancer-related signaling networks that can be used to identify subsets of patients that will respond to pathway- targeted therapeutics and to do this prior to initiation of clinical trials so that drugs with efficacy in small patient subsets are not missed. Our hypothesis is that a robust computational model can be developed iteratively from measurements of molecular and biological responses to pathway inhibitors in a """"""""system"""""""" comprised of approximately 60 well characterized cancer and normal breast cell lines grown in vitro. We will focus on agents that target the Raf-MEK-ERK signaling module. However, the model and number of therapeutics tested will increase as the approach proves successful. We expect that an important byproduct of this approach will be identification of pathway inhibitors that are best used in combination. This program will be executed in 4 projects and 5 cores. The central project will develop a discrete Pathway Logic model that manages the concentrations of states that are measured experimentally (e.g., proteins, metabolites, cellular structures) as entities in interacting pathways. The model defines pathway responses to perturbations using logical statements that describe how cellular components interact and propagate signals down pathways in a state concentration-dependent manner (e.g. an increased amount of phosphorylated protein might """"""""activate"""""""" a signal propagation rule) so that models can be developed that apply to individual cell lines or tumors and so can predict individual responses. Three experimental projects will provide measurements to support model development and test model predictions. One project will focus on cellular and molecular responses to signal transduction pathway siRNA and small molecule inhibitors in the breast cancer and normal cell lines. A second project will critically examine the influence of microenvironmental interactions (i.e. cell-ECM, cell-cell myoepithelial and stromal-interactions) on responses to Raf-MEK-ERK inhibitors. A third project will use the Bernards laboratory library of retroviral vectors encoding shRNAs to efficiently screen for inhibitors that confer resistance or sensitivity to Raf-MEK-ERK inhibitors. Data quality control will be insured since all projects will work through cores that standardize important aspects of cell culture, reagent development and validation, molecular profiling and cellular response.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Specialized Center--Cooperative Agreements (U54)
Project #
3U54CA112970-03S1
Application #
7289027
Study Section
Special Emphasis Panel (ZCA1)
Program Officer
Gallahan, Daniel L
Project Start
2004-09-30
Project End
2009-08-31
Budget Start
2006-09-01
Budget End
2007-08-31
Support Year
3
Fiscal Year
2006
Total Cost
$63,659
Indirect Cost
Name
Lawrence Berkeley National Laboratory
Department
Biology
Type
Organized Research Units
DUNS #
078576738
City
Berkeley
State
CA
Country
United States
Zip Code
94720
Risom, Tyler; Langer, Ellen M; Chapman, Margaret P et al. (2018) Differentiation-state plasticity is a targetable resistance mechanism in basal-like breast cancer. Nat Commun 9:3815
Gast, Charles E; Silk, Alain D; Zarour, Luai et al. (2018) Cell fusion potentiates tumor heterogeneity and reveals circulating hybrid cells that correlate with stage and survival. Sci Adv 4:eaat7828
Riesco, Adrián; Santos-Buitrago, Beatriz; De Las Rivas, Javier et al. (2017) Epidermal Growth Factor Signaling towards Proliferation: Modeling and Logic Inference Using Forward and Backward Search. Biomed Res Int 2017:1809513
Hassan, Saima; Esch, Amanda; Liby, Tiera et al. (2017) Pathway-Enriched Gene Signature Associated with 53BP1 Response to PARP Inhibition in Triple-Negative Breast Cancer. Mol Cancer Ther 16:2892-2901
Sears, Rosalie; Gray, Joe W (2017) Epigenomic Inactivation of RasGAPs Activates RAS Signaling in a Subset of Luminal B Breast Cancers. Cancer Discov 7:131-133
Gendelman, Rina; Xing, Heming; Mirzoeva, Olga K et al. (2017) Bayesian Network Inference Modeling Identifies TRIB1 as a Novel Regulator of Cell-Cycle Progression and Survival in Cancer Cells. Cancer Res 77:1575-1585
Hafner, Marc; Heiser, Laura M; Williams, Elizabeth H et al. (2017) Quantification of sensitivity and resistance of breast cancer cell lines to anti-cancer drugs using GR metrics. Sci Data 4:170166
Xu, Xiaowei; De Angelis, Carmine; Burke, Kathleen A et al. (2017) HER2 Reactivation through Acquisition of the HER2 L755S Mutation as a Mechanism of Acquired Resistance to HER2-targeted Therapy in HER2+ Breast Cancer. Clin Cancer Res 23:5123-5134
Hill, Steven M; Nesser, Nicole K; Johnson-Camacho, Katie et al. (2017) Context Specificity in Causal Signaling Networks Revealed by Phosphoprotein Profiling. Cell Syst 4:73-83.e10
Seviour, E G; Sehgal, V; Mishra, D et al. (2017) Targeting KRas-dependent tumour growth, circulating tumour cells and metastasis in vivo by clinically significant miR-193a-3p. Oncogene 36:1339-1350

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