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Optimal Selection of Enzyme Levels using Large-scale Kinetic Models

Authors:Nikolaev Evgeni V., Pennsylvania State University, United States
Pharkya Priti, Pennsylvania State University, United States
Maranas Costas D., Pennsylvania State University, United States
Armaou Antonios, Pennsylvania State University, United States
Topic:8.4 Control of Biotechnological Processes
Session:Systems Biology
Keywords: biotechnology, global optimization, mathematical models, kinetic models, enzyme levels

Abstract

A hybrid optimization framework is introduced to identify enzyme sets and levels to meet overproduction requirements using kinetic models of metabolism. A simulated annealing algorithm is employed to navigate through the discrete space of enzyme sets while a sequential quadratic programming method is utilized to identify optimal enzyme levels. The framework is demonstrated on a model of E.coli central metabolism for serine biosynthesis. Computational results show that by optimally manipulating relatively small enzyme sets, a substantial increase in serine production can be achieved. The proposed approach thus provides a versatile tool for the elucidation of controlling enzymes with implications in biotechnology.