University of Maryland DRUM  
University of Maryland Digital Repository at the University of Maryland

DRUM >
Theses and Dissertations from UM >
UM Theses and Dissertations >

Please use this identifier to cite or link to this item: http://hdl.handle.net/1903/9591

Title: Nonlinear Dyanmics in Biological Systems: Actin Networks and Gene Networks
Authors: Pomerance, Andrew
Advisors: Losert, Wolfgang
Department/Program: Physics
Type: Dissertation
Sponsors: Digital Repository at the University of Maryland
University of Maryland (College Park, Md.)
Keywords: 0605 Physics, General
Issue Date: 2009
Abstract: Two problems in biological systems are studied: (i) experiments in microscale deformations of actin networks and (ii) a theoretical treatment of the stability of discrete state network models of genetic control. In the experiments on actin networks, we use laser tweezers to locally deform actin networks at the micron scale as a model of the action of molecular motors and other cellular components, and we image the network during deformation using confocal microscopy. Using these tools, we observe two nonlinear effects. The first observation is that there are two time scales of relaxation in the network: the stress induced by deformation relaxes rather quickly, however, the strain relaxes at a different rate. Additionally, upon removing the deforming force, the initial rate at which the strain relaxes seems to be independent of the amount of stress still in the network. The second observation is that large deformations are irreversible, and imaging the network implies that a large-scale snapping event seems to accompany this irreversibility. In the theoretical treatment of gene networks, we focus on the stability of their dynamics in response to small perturbations. Previous approaches to stability have assumed uncorrelated random network structure. Real gene networks typically have nontrivial topology significantly different from the random network paradigm. In order to address such situations, we present a general method for determining the stability of large Boolean networks of any specified network topology and predicting their steady-state behavior in response to small perturbations. Additionally, we generalize to the case where individual genes have a distribution of `expression biases,' and we consider non-synchronous update, as well as extension of our method to non-Boolean models in which there are more than two possible gene states. We find that stability is governed by the maximum eigenvalue of a modified adjacency matrix (&lambda<sub>Q<\sub>), and we test this result by comparison with numerical simulations. We also discuss the possible application of our work to experimentally inferred gene networks and present approximations to &lambda<sub>Q<\sub> in several cases.
URI: http://hdl.handle.net/1903/9591
Appears in Collections:UM Theses and Dissertations
Physics Theses and Dissertations

Files in This Item:

File Description SizeFormatNo. of Downloads
Pomerance_umd_0117E_10629.pdfRESTRICTED ACCESS717.99 kBAdobe PDF2View/Open

All items in DRUM are protected by copyright, with all rights reserved.

 

DRUM is brought to you by the University of Maryland Libraries
University of Maryland, College Park, MD 20742-7011 (301)314-1328.
Please send us your comments. -
All Contents