Abstract Dynamic flux balance analysis (DFBA) has become an instrumental modeling tool for describing the dynamic behavior of bioprocesses. DFBA involves the maximization of a biologically meaningful objective subject to kinetic constraints on the rate of consumption/production of metabolites. In this paper, we propose a systematic data-based approach for finding both the biological objective function and a minimum set of active constraints necessary for matching the model predictions to the experimental data. The proposed algorithm accounts for the errors in the experiments and eliminates the need for ad hoc choices of objective function and constraints as done in previous studies. The method is illustrated for two cases: (1...
Systems level modelling and simulations of biological processes are proving to be invaluable in obta...
The main objective of flux balance analysis (FBA) is to obtain quantitative predictions of metabolic...
Mathematical models for the growth, survival, inactivation and product formation of microbial organi...
Mathematical modelling of biological systems is an essential tool for better understanding and for o...
Dynamic flux balance analysis (DFBA) extends flux balance analysis and enables the combined simulati...
AbstractWe present two modifications of the flux balance analysis (FBA) metabolic modeling framework...
This work presents a novel, differentiable, way of solving dynamic Flux Balance Analysis (dFBA) probl...
In this study, we propose a parameter estimation method for genome-scale dynamic flux balance (DFBA)...
AbstractFlux Balance Analysis (FBA) has been used in the past to analyze microbial metabolic network...
In this study, we propose a parameter estimation method for genome-scale dynamic flux balance (DFBA)...
Dynamic flux balance analysis uses a quasi-steady state assumption to calculate an organism's metabo...
In this study, a metabolic flux analysis (MFA) is firstly applied, at each time instant, for determi...
Genome-scale reconstructions are usually stoichiometric and analyzed under steady-state assumptions ...
A careful analysis of the admissible metabolic flux intervals (determined from linear programs) obta...
Systems level modelling and simulations of biological processes are proving to be invaluable in ob...
Systems level modelling and simulations of biological processes are proving to be invaluable in obta...
The main objective of flux balance analysis (FBA) is to obtain quantitative predictions of metabolic...
Mathematical models for the growth, survival, inactivation and product formation of microbial organi...
Mathematical modelling of biological systems is an essential tool for better understanding and for o...
Dynamic flux balance analysis (DFBA) extends flux balance analysis and enables the combined simulati...
AbstractWe present two modifications of the flux balance analysis (FBA) metabolic modeling framework...
This work presents a novel, differentiable, way of solving dynamic Flux Balance Analysis (dFBA) probl...
In this study, we propose a parameter estimation method for genome-scale dynamic flux balance (DFBA)...
AbstractFlux Balance Analysis (FBA) has been used in the past to analyze microbial metabolic network...
In this study, we propose a parameter estimation method for genome-scale dynamic flux balance (DFBA)...
Dynamic flux balance analysis uses a quasi-steady state assumption to calculate an organism's metabo...
In this study, a metabolic flux analysis (MFA) is firstly applied, at each time instant, for determi...
Genome-scale reconstructions are usually stoichiometric and analyzed under steady-state assumptions ...
A careful analysis of the admissible metabolic flux intervals (determined from linear programs) obta...
Systems level modelling and simulations of biological processes are proving to be invaluable in ob...
Systems level modelling and simulations of biological processes are proving to be invaluable in obta...
The main objective of flux balance analysis (FBA) is to obtain quantitative predictions of metabolic...
Mathematical models for the growth, survival, inactivation and product formation of microbial organi...