A group of investigators with complementary expertise in molecular biology, structural biology, statistical physics, control theory, computer modeling, and computer science, propose to develop computational models for complex systems involved in the regulation of gene expression. Two initial research projects are proposed: Project I will focus on the structural and mechanistic basis of the first, and most highly regulated, step in gene expression: i.e., transcription. A combination of high-resolution structural methods, biophysical and biochemical methods, and molecular modeling will be used to construct structural models of the nanometer-scale supramolecular assembles involved in transcription initiation, elongation, and regulation. Computational-chemistry methods will be used to infer equilibrium and dynamic properties of assemblies, and statistical-mechanical methods will be used to incorporate information about all structural and reaction-state microstates important for transcription initiation, elongation, and regulation. Computational-chemistry methods will be used to infer equilibrium and dynamic properties of assemblies, and statistical- mechanical methods will be used to incorporate information about all structural and reaction-state microstates microstates important for transcription initiation, elongation, and regulation. Small-molecule inhibitors of protein-DNA interactions occurring in individual structural microstates will be designed, synthesized, and characterized. Project II, which will be tightly integrated with Project I, will focus on comprehensive quantitative simulation of two model biological regulatory networks: i.e., regulation of lactose and galactose assimilation in bacteria, and regulation of lytic and lysogenic developmental pathways in bacteriophage lambda. For each regulatory network, a multi-step analysis will be performed, with the first step involving simulation of the central circuitry of the regulatory network, and with successive steps involving simulation of first step involving simulation of the central circuitry of the regulatory network, and with successive steps involving simulation of sensory components that mediate transfer of information among he central circuitry, the cell, and the cellular environment. Inputs for simulations will include structural and mechanistic information from Project I, and quantitative data from systematic population and single-cell measurements of RNA levels, protein levels, small-molecule-effector levels, promoter activities, and protease activities. Simulations will be performed using direct, reverse-engineering, and hybrid methods. Simulations will be tested by comparing predicted and observed effects of perturbations of regulatory networks. The results to be obtained will contribute to understanding transcriptional regulation, will contribute development of approaches to simulate complex biological regulatory networks, and will contribute to development of approaches to predict effects of small-molecule agents on complex biological systems. The organizational infrastructure of the effort will be closely affiliated with the Rutgers University Initiative for Research and Education at the Biological/Mathematical/Physical-Sciences Interface (BioMaPS), which provides for establishment of a graduate courses, summer research internships, and seminars at the BioMaPS interface, and for recruitment of additional faculty members in biological computing and modeling.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Exploratory Grants (P20)
Project #
1P20GM064375-01
Application #
6406344
Study Section
Special Emphasis Panel (ZRG1-SSS-E (01))
Program Officer
Tompkins, Laurie
Project Start
2001-08-01
Project End
2004-07-31
Budget Start
2001-08-01
Budget End
2002-07-31
Support Year
1
Fiscal Year
2001
Total Cost
$441,676
Indirect Cost
Name
Rutgers University
Department
Chemistry
Type
Schools of Arts and Sciences
DUNS #
038633251
City
New Brunswick
State
NJ
Country
United States
Zip Code
08901
Epshtein, Vitaly; Cardinale, Christopher J; Ruckenstein, Andrei E et al. (2007) An allosteric path to transcription termination. Mol Cell 28:991-1001
Himmel, Daniel M; Sarafianos, Stefan G; Dharmasena, Sanjeewa et al. (2006) HIV-1 reverse transcriptase structure with RNase H inhibitor dihydroxy benzoyl naphthyl hydrazone bound at a novel site. ACS Chem Biol 1:702-12
Swigon, David; Coleman, Bernard D; Olson, Wilma K (2006) Modeling the Lac repressor-operator assembly: the influence of DNA looping on Lac repressor conformation. Proc Natl Acad Sci U S A 103:9879-84
Knight, Jennifer L; Mekler, Vladimir; Mukhopadhyay, Jayanta et al. (2005) Distance-restrained docking of rifampicin and rifamycin SV to RNA polymerase using systematic FRET measurements: developing benchmarks of model quality and reliability. Biophys J 88:925-38
Chaves, Madalena; Albert, Reka; Sontag, Eduardo D (2005) Robustness and fragility of Boolean models for genetic regulatory networks. J Theor Biol 235:431-49
Roma, David Marin; O'Flanagan, Ruadhan A; Ruckenstein, Andrei E et al. (2005) Optimal path to epigenetic switching. Phys Rev E Stat Nonlin Soft Matter Phys 71:011902
Bar-Nahum, Gil; Epshtein, Vitaly; Ruckenstein, Andrei E et al. (2005) A ratchet mechanism of transcription elongation and its control. Cell 120:183-93
Lawson, Catherine L; Swigon, David; Murakami, Katsuhiko S et al. (2004) Catabolite activator protein: DNA binding and transcription activation. Curr Opin Struct Biol 14:10-20
Mukhopadhyay, Jayanta; Sineva, Elena; Knight, Jennifer et al. (2004) Antibacterial peptide microcin J25 inhibits transcription by binding within and obstructing the RNA polymerase secondary channel. Mol Cell 14:739-51
Sontag, Eduardo; Kiyatkin, Anatoly; Kholodenko, Boris N (2004) Inferring dynamic architecture of cellular networks using time series of gene expression, protein and metabolite data. Bioinformatics 20:1877-86

Showing the most recent 10 out of 17 publications