Title :
Modeling and control of amino acid starvation-induced apoptosis in CHO cell cultures
Author :
Simon, Laurent ; Karim, M. Nazmul
Author_Institution :
New Jersey Inst. of Technol., Newark, NJ, USA
Abstract :
Advanced process control theories are usually tested in a simulated environment. This article shows how a non-classical control algorithm can be implemented in a discrete fashion on a real biological process with satisfactory results. Kalman filters and model predictive controllers were implemented to delay starvation-induced apoptosis in CHO cell cultures Apoptosis was mostly caused by deprivation of glutamine and asparagine in the medium. The concentrations of the state variables were estimated every 15 hours by forward integration of the system equations. The off-line measured concentrations of viable cells, lactate, and glucose were used to update the state estimates. Neural network and Kalman filter techniques were then used to approximate the concentration of apoptotic cells in the bioreactor based on the concentrations of viable cells, glutamine and asparagine. This information was then fed to a model based predictive controller that was activated when the apoptotic cell estimate reached a concentration of 0.1 million cells per ml. This resulted in improved protein productivity and a reduced final apoptotic cell concentration.
Keywords :
Kalman filters; biotechnology; filtering theory; neural nets; predictive control; process control; proteins; CHO cell culture; Kalman filter; Kalman filters; advanced process control theories; amino acid starvation-induced apoptosis control; amino acid starvation-induced apoptosis modeling; apoptotic cell concentration; asparagine deprivation; biological process; bioreactor; delay; glucose concentration; glutamine deprivation; lactate concentration; model based predictive controller; model predictive controllers; neural network; nonclassical control algorithm; protein productivity; viable cell concentration; Amino acids; Biological control systems; Biological processes; Biological system modeling; Delay; Equations; Predictive models; Process control; State estimation; Testing;
Conference_Titel :
American Control Conference, 2002. Proceedings of the 2002
Print_ISBN :
0-7803-7298-0
DOI :
10.1109/ACC.2002.1023247