The system comprised of the bacterium Escherichia coli and its virus, bacteriophage lambda, serves as the basic paradigm for many aspects of gene regulation, ranging in scale from the molecular to the organismic level. Questions asked within the lambda system often yield insights relevant to """"""""higher"""""""" eukaryotic systems. The lambda system has been extensively characterized using the traditional tools of genetics and biochemistry, enabling the formation of an elegant and seemingly complete narrative of the observed phenomenology in terms of the microscopic interactions in the cell. However, from the point of view of a quantitative scientist there is an immense gap of understanding between the genetic and biochemical knowledge on the one hand, and the observed population phenotype on the other. This gap manifests itself in the poor predictive powers of mathematical models of the system. To try and bridge the knowledge gap it is required to """"""""deconstruct"""""""" the life cycle of bacteriophage lambda by studying the events comprising this life cycle in real-time, in individual living cells, quantifying the intracellular dynamics with sufficient resolution to describe individual events in space and time. In this proposal we suggest to characterize gene regulation during the lambda life cycle, concentrating on the following aims: (1) Characterizing the function of the lysis/lysogeny switch during the maintenance of the lysogenic (dormant) state as well as the induction of the lytic (virulent) pathway following cell damage. (2) Elucidating spatiotemporal aspects affecting the life cycle, for example how the different stages of the lytic pathway genome replication, gene expression, capsid self-assembly and lysis are organized in space and time. (3) Distinguishing precision versus stochasticity in the lambda life cycle, by separating """"""""real"""""""" stochasticity one resulting from actual sources of uncontrolled variability from """"""""apparent"""""""" stochasticity, resulting from our own inability to detect and measure differences in physiological parameters between individual cells.

Public Health Relevance

Filling the knowledge gap at the single-event level will in turn bring us closer to a quantitative understanding of whole-system (organism) characteristics in terms of the microscopic constituents, in the vain of """"""""systems biology"""""""". Achieving this goal in a simple model system such as lambda can then be followed by similar endeavors in higher organisms.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
7R01GM082837-03
Application #
7905902
Study Section
Modeling and Analysis of Biological Systems Study Section (MABS)
Program Officer
Lyster, Peter
Project Start
2008-08-04
Project End
2013-07-31
Budget Start
2010-08-01
Budget End
2011-07-31
Support Year
3
Fiscal Year
2010
Total Cost
$309,870
Indirect Cost
Name
Baylor College of Medicine
Department
Biochemistry
Type
Schools of Medicine
DUNS #
051113330
City
Houston
State
TX
Country
United States
Zip Code
77030
Golding, Ido (2018) Infection by bacteriophage lambda: an evolving paradigm for cellular individuality. Curr Opin Microbiol 43:9-13
Sivaramakrishnan, Priya; SepĂșlveda, Leonardo A; Halliday, Jennifer A et al. (2017) The transcription fidelity factor GreA impedes DNA break repair. Nature 550:214-218
SepĂșlveda, Leonardo A; Xu, Heng; Zhang, Jing et al. (2016) Measurement of gene regulation in individual cells reveals rapid switching between promoter states. Science 351:1218-22
Golding, Ido (2016) Single-Cell Studies of Phage ?: Hidden Treasures Under Occam's Rug. Annu Rev Virol 3:453-472
Figard, Lauren; Wang, Mengyu; Zheng, Liuliu et al. (2016) Membrane Supply and Demand Regulates F-Actin in a Cell Surface Reservoir. Dev Cell 37:267-78
Skinner, Samuel O; Xu, Heng; Nagarkar-Jaiswal, Sonal et al. (2016) Single-cell analysis of transcription kinetics across the cell cycle. Elife 5:e12175
Xu, Heng; Skinner, Samuel O; Sokac, Anna Marie et al. (2016) Stochastic Kinetics of Nascent RNA. Phys Rev Lett 117:
Xu, Heng; SepĂșlveda, Leonardo A; Figard, Lauren et al. (2015) Combining protein and mRNA quantification to decipher transcriptional regulation. Nat Methods 12:739-42
Hsu, Tiffany Y-T; Simon, Lukas M; Neill, Nicholas J et al. (2015) The spliceosome is a therapeutic vulnerability in MYC-driven cancer. Nature 525:384-8
Satory, Dominik; Gordon, Alasdair J E; Wang, Mengyu et al. (2015) DksA involvement in transcription fidelity buffers stochastic epigenetic change. Nucleic Acids Res 43:10190-9

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