Individual cells display stochastic variability in their responses to activating stimuli. In cells taking part in the innate immune response this variability seems very important. Cells react differently to the same stimulus, e.g. some proliferate some move to apoptosis.
Our aim i s to develop tools for understanding and accurate modeling of stochastic phenomena in gene transcription and signal transduction in eukaryotic cells. An integral part of the proposal is interdisciplinary training at the undergraduate, graduate and postgraduate level, in which we have experience, involving NSF IGERT grants, Keck Center for Computational Biology and outreach to Texas Medical Center. The primary sources of stochasticity in eukaryotic cells are: (i) Assembly of the transcription complexes attracting RNA Polymerase II. (ii) For low levels of signal, fluctuations in the number of cell membrane receptors binding activating molecule. We are planning to: 1. Identify sources of stochastic effects in gene transcription and regulation on single-cell, nuclear and molecular level and develop mathematical models of these effects. 2. Investigate the mathematical properties of these models by: (a) Finding stochastic solutions, (b) Developing limit theory, (c) Investigating qualitative properties of the models. 3. Develop computational algorithms for model predictions. Implement computer programs for these algorithms. 4. Apply Bayesian and non-Bayesian statistical methodologies for estimating parameters and making inferences about these parameters, and assess the goodness of fit of the models, for inference with complex computer models. The biological system we chose is constituted by 3 pathways involving NFKB family of transcription factors playing a decisive role in innate immunity in mammals. These three are: (i) the canonical, (ii) the RIG-IMAVS-, and (iii) the non-canonical pathways, activated by distinct stimuli, and serve as informative models for computational analysis of stochasticity. We will extend the understanding of these pathways by using fluorescent fusion proteins, analysis of transcription at a single mRNA molecule resolution, chromatin exchange using photobleaching and fluorescence lifetime measurements. In our approach, the biological experiments are motivated by data needed for modeling and estimation, and mathematical methods are based on the observed biological model behavior.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
3R01GM086885-02S1
Application #
8053024
Study Section
Special Emphasis Panel (ZGM1-CBCB-5 (BM))
Program Officer
Dunsmore, Sarah
Project Start
2010-05-01
Project End
2011-04-30
Budget Start
2010-05-01
Budget End
2011-04-30
Support Year
2
Fiscal Year
2010
Total Cost
$191,432
Indirect Cost
Name
Rice University
Department
Biostatistics & Other Math Sci
Type
Schools of Engineering
DUNS #
050299031
City
Houston
State
TX
Country
United States
Zip Code
77005
Choudhary, Sanjeev; Boldogh, Istvan; Brasier, Allan R (2016) Inside-Out Signaling Pathways from Nuclear Reactive Oxygen Species Control Pulmonary Innate Immunity. J Innate Immun 8:143-55
Bertolusso, Roberto; Tian, Bing; Zhao, Yingxin et al. (2014) Dynamic cross talk model of the epithelial innate immune response to double-stranded RNA stimulation: coordinated dynamics emerging from cell-level noise. PLoS One 9:e93396
Kalita, Mridul; Tian, Bing; Gao, Boning et al. (2013) Systems approaches to modeling chronic mucosal inflammation. Biomed Res Int 2013:505864
Zhao, Yingxin; Brasier, Allan R (2013) Applications of selected reaction monitoring (SRM)-mass spectrometry (MS) for quantitative measurement of signaling pathways. Methods 61:313-22
Zhao, Yingxin; Tian, Bing; Edeh, Chukwudi B et al. (2013) Quantitation of the dynamic profiles of the innate immune response using multiplex selected reaction monitoring-mass spectrometry. Mol Cell Proteomics 12:1513-29
Jaruszewicz, Joanna; Zuk, Pawel J; Lipniacki, Tomasz (2013) Type of noise defines global attractors in bistable molecular regulatory systems. J Theor Biol 317:140-51
Yang, Jun; Mitra, Abhishek; Dojer, Norbert et al. (2013) A probabilistic approach to learn chromatin architecture and accurate inference of the NF-?B/RelA regulatory network using ChIP-Seq. Nucleic Acids Res 41:7240-59
Tian, Bing; Zhao, Yingxin; Kalita, Mridul et al. (2013) CDK9-dependent transcriptional elongation in the innate interferon-stimulated gene response to respiratory syncytial virus infection in airway epithelial cells. J Virol 87:7075-92
Jaruszewicz, Joanna; Lipniacki, Tomasz (2013) Toggle switch: noise determines the winning gene. Phys Biol 10:035007
Iwanaszko, Marta; Brasier, Allan R; Kimmel, Marek (2012) The dependence of expression of NF-ýýB-dependent genes: statistics and evolutionary conservation of control sequences in the promoter and in the 3' UTR. BMC Genomics 13:182

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