We present an identification framework for biochemical systems that allows multiple candidate models to be compared. This framework is designed to select a model that fits the data while maintaining model simplicity. The model identification task is divided into a parameter estimation stage and a model comparison stage. Model selection is based on calculating Akaike's information criterion, which is a systematic method for determining the model that best represents a set of experimental data. Two case studies are presented: a simulated transcriptional control circuit and a system of oscillators that has been built and characterized in vitro. In both examples the multi-model framework is able to discriminate between model candidates to selec...
Algorithms for parameter estimation and model selection that identify both the structure and the par...
Magdeburg, Univ., Fak. für Verfahrens- und Systemtechnik, Diss., 2014von Robert Johann Flassi
AbstractAdvances in biotechnology and computer science are providing the possibility to construct ma...
We present an identification framework for biochemical systems that allows multiple candidate models...
This paper proposes a set-based parameter identification method for biochemical systems. The develop...
Mathematical models of biological processes have various applications: to assist in understanding th...
Mathematical models of biological processes have various applications: to assist in understanding th...
In this study, a parameter estimation method has been developed for models of biomedical pathways. T...
This thesis concerns the identification of dynamic models in systems biology. and is structured into...
Systems biology applies quantitative, mechanistic modelling to study genetic networks, signal transd...
In bioinformatics, biochemical signal pathways can be modeled by many differential equations. It is ...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Model checking has historically been an important tool to verify models of a wide variety of system...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
The inverse problem of modeling biochemical processes mathematically from measured time course data ...
Algorithms for parameter estimation and model selection that identify both the structure and the par...
Magdeburg, Univ., Fak. für Verfahrens- und Systemtechnik, Diss., 2014von Robert Johann Flassi
AbstractAdvances in biotechnology and computer science are providing the possibility to construct ma...
We present an identification framework for biochemical systems that allows multiple candidate models...
This paper proposes a set-based parameter identification method for biochemical systems. The develop...
Mathematical models of biological processes have various applications: to assist in understanding th...
Mathematical models of biological processes have various applications: to assist in understanding th...
In this study, a parameter estimation method has been developed for models of biomedical pathways. T...
This thesis concerns the identification of dynamic models in systems biology. and is structured into...
Systems biology applies quantitative, mechanistic modelling to study genetic networks, signal transd...
In bioinformatics, biochemical signal pathways can be modeled by many differential equations. It is ...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Model checking has historically been an important tool to verify models of a wide variety of system...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
The inverse problem of modeling biochemical processes mathematically from measured time course data ...
Algorithms for parameter estimation and model selection that identify both the structure and the par...
Magdeburg, Univ., Fak. für Verfahrens- und Systemtechnik, Diss., 2014von Robert Johann Flassi
AbstractAdvances in biotechnology and computer science are providing the possibility to construct ma...