Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such as association and dissociation constants. Their direct estimation from studies on isolated reactions is usually expensive, time-consuming or even infeasible for large models. As a consequence, they must be estimated from indirect measurements, usually in the form of time-series data. We describe an observer-based parameter estimation approach taking the specific structure of biochemical reaction networks into account. Considering reaction kinetics described by polynomial or rational functions, we propose a three step approach. In a first step, the estimation of not directly measured states is decoupled from the estimation of the parameters us...
An essential part of mathematical modelling is the accurate and reliable estimation of model paramet...
Abstract: Estimation of kinetic parameters is a key step in modelling biochemical reaction networks ...
In biological research, experimental data analysis plays an important role since it enables quantita...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
A fundamental step in systems biology is the estimation of kinetic parameters, such as association a...
A fundamental step in systems biology is the estimation of kinetic parameters, such as association a...
An essential part of mathematical modelling is the accurate and reliable estimation of model paramet...
Abstract: Estimation of kinetic parameters is a key step in modelling biochemical reaction networks ...
In biological research, experimental data analysis plays an important role since it enables quantita...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
Dynamic models present a fundamental tool in systems biology, but rely on kinetic parameters, such a...
A fundamental step in systems biology is the estimation of kinetic parameters, such as association a...
A fundamental step in systems biology is the estimation of kinetic parameters, such as association a...
An essential part of mathematical modelling is the accurate and reliable estimation of model paramet...
Abstract: Estimation of kinetic parameters is a key step in modelling biochemical reaction networks ...
In biological research, experimental data analysis plays an important role since it enables quantita...