Robust System Identification
and
Control of Cellular Processes
Professor Ann Rundell
Weldon School of Biomedical
Engineering
Purdue University
West Lafayette, IN 47907
Abstract:
Controlling
cellular processes presents unique challenges not often encountered in the
control of traditional electrical, mechanical, or chemical systems. For
example, mathematical models of cellular processes are typically nonlinear and
uncertain. Furthermore, real-time, continuous feedback is generally
not available and realizable control actions are limited by experimental
techniques. As a result, there have been minimal efforts to apply control
theory at the cellular level. An integrated engineering approach towards
effective experiment design for predictably manipulating cellular responses
will be discussed that employs robust controller design. An adaptive
sparse grid based interpolation approach will be presented for partitioning an
uncertain parameter space into unacceptable and acceptable subspaces. Robust
parameters are identified as the most 'central interior' point of the
acceptable subspaces so small perturbations about these values are less likely
to lead to an unacceptable behavior. This method will initially be
illustrated for robust model parameter identification with a standard
mitogen-activated protein kinase (MAPK) cascade model prior to exploring its
applicability to support robust controller design. Since nonlinear model
predictive control (NMPC) has shown promise for controlling biomass production
and batch cellular growth in bioreactor systems, an NMPC algorithm was devised
that utilizes the robust sparse grid-based controller parameter selection to
maximize the likelihood that an experimental strategy derived by the controller
design will be successful in the laboratory environment. This robust NMPC
approach was used to quantitatively design an experimental strategy (for an
open-loop realization) that predictably manipulates the activation time course
of the T-cell receptor activated MAPK, Erk. Preliminary experiments using a
Jurkat T cell culture system evaluate the derived control strategy and provide
insight to improve the supporting model and robust controller design
approach. Ultimately, this engineering-control approach to quantitative experiment
design is anticipated to advance our abilities to regulate cellular processes
as well as improve our current understanding of them.
Friday, November 21, 2008
3:30 – 4:30 p.m.
Rm. 1500 EECS