Mathematical modeling of biochemical processes significantly contributes to a better understanding of biological functionality and underlying dynamic mechanisms. To support time consuming and costly lab experiments, kinetic reaction equations can be formulated as a set of ordinary differential equations, which in turn allows to simulate and compare hypothetical models in silico. To identify new experimental designs that are able to discriminate between investigated models, the approach used in this work solves a semi-infinite constrained nonlinear optimization problem using derivative based numerical algorithms. The method takes into account parameter variabilities such that new experimental designs are robust against parameter changes whil...
Motivation: Mathematical models of complex biological systems usually consist of sets of differentia...
Abstract Background Parameter estimation in biological models is a common yet challenging problem. I...
A benchmark problem is described for the reconstruction and analysis of biochemical networks given s...
Biochemical reaction networks in the form of coupled ODEs provide a powerful modeling tool to unders...
<div><p>Systems biology relies heavily on the construction of quantitative models of biochemical net...
Abstract Background The success of molecular systems biology hinges on the ability to use computatio...
Considering the competitive and strongly regulated pharmaceutical industry, mathematical modeling a...
This thesis considers the problem of selecting robust and optimal experimental designs for accuratel...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
The aim of model calibration is to estimate unique parameter values from available experimental data...
Biological systems are often modeled by a set of differential equations. For any given system there ...
This model-based design of experiments (MBDOE) method determines the input magni-tudes of an experim...
peer reviewedA benchmark problem is described for the reconstruction and analysis of biochemical net...
Modeling an experimental system often results in a number of alternative models that are justified e...
The Design-Build-Test-Learn cycle is the main approach of synthetic biology to re-design and create ...
Motivation: Mathematical models of complex biological systems usually consist of sets of differentia...
Abstract Background Parameter estimation in biological models is a common yet challenging problem. I...
A benchmark problem is described for the reconstruction and analysis of biochemical networks given s...
Biochemical reaction networks in the form of coupled ODEs provide a powerful modeling tool to unders...
<div><p>Systems biology relies heavily on the construction of quantitative models of biochemical net...
Abstract Background The success of molecular systems biology hinges on the ability to use computatio...
Considering the competitive and strongly regulated pharmaceutical industry, mathematical modeling a...
This thesis considers the problem of selecting robust and optimal experimental designs for accuratel...
This thesis investigates optimal experiment design for parameter estimation of nonlinear dynamic sys...
The aim of model calibration is to estimate unique parameter values from available experimental data...
Biological systems are often modeled by a set of differential equations. For any given system there ...
This model-based design of experiments (MBDOE) method determines the input magni-tudes of an experim...
peer reviewedA benchmark problem is described for the reconstruction and analysis of biochemical net...
Modeling an experimental system often results in a number of alternative models that are justified e...
The Design-Build-Test-Learn cycle is the main approach of synthetic biology to re-design and create ...
Motivation: Mathematical models of complex biological systems usually consist of sets of differentia...
Abstract Background Parameter estimation in biological models is a common yet challenging problem. I...
A benchmark problem is described for the reconstruction and analysis of biochemical networks given s...