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Soft constraints-based multiobjective framework for flux balance analysis
Authors:Deepak Nagrath  Marco Avila-Elchiver  François Berthiaume  Arno W Tilles  Achille Messac  Martin L Yarmush
Institution:1. Department of Medical and Biological Sciences, University of Udine, 33100-Udine, Italy;2. Department of Laboratory Medicine, A.O.U., Ospedali Riuniti di Trieste, 34100-Trieste, Italy;1. Institute of Energy and Process Systems Engineering, Technische Universität Braunschweig, Franz-Liszt-Straße 35, Braunschweig 38106, Germany;2. Center of Pharmaceutical Engineering (PVZ), Technische Universität Braunschweig, Franz-Liszt-Straße 35a, Braunschweig 38106, Germany;3. International Max Planck Research School for Advanced Methods in Process and Systems Engineering, Sandtorstraße 1, Magdeburg 39106, Germany
Abstract:The current state of the art for linear optimization in Flux Balance Analysis has been limited to single objective functions. Since mammalian systems perform various functions, a multiobjective approach is needed when seeking optimal flux distributions in these systems. In most of the available multiobjective optimization methods, there is a lack of understanding of when to use a particular objective, and how to combine and/or prioritize mutually competing objectives to achieve a truly optimal solution. To address these limitations we developed a soft constraints based linear physical programming-based flux balance analysis (LPPFBA) framework to obtain a multiobjective optimal solutions. The developed framework was first applied to compute a set of multiobjective optimal solutions for various pairs of objectives relevant to hepatocyte function (urea secretion, albumin, NADPH, and glutathione syntheses) in bioartificial liver systems. Next, simultaneous analysis of the optimal solutions for three objectives was carried out. Further, this framework was utilized to obtain true optimal conditions to improve the hepatic functions in a simulated bioartificial liver system. The combined quantitative and visualization framework of LPPFBA is applicable to any large-scale metabolic network system, including those derived by genomic analyses.
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