Ordinary differential equation models have become a standard tool for the mechanistic description of biochemical processes. If parameters are inferred from experimental data, such mechanistic models can provide accurate predictions about the behavior of latent variables or the process under new experimental conditions. Complementarily, inference of model structure can be used to identify the most plausible model structure from a set of candidates, and, thus, gain novel biological insight. Several toolboxes can infer model parameters and structure for small- to medium-scale mechanistic models out of the box. However, models for highly multiplexed datasets can require hundreds to thousands of state variables and parameters. For the analysis o...
The biochemical models describing complex and dynamic metabolic systems are typically multi-parametr...
Chemical reaction networks are a popular formalism for modeling biological processes which supports ...
The inverse problem of modeling biochemical processes mathematically from measured time course data ...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Mechanistic mathematical modeling of biochemical reaction networks using ordinary differential equat...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Algorithms for parameter estimation and model selection that identify both the structure and the par...
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...
<div><p>The inference of reaction rate parameters in biochemical network models from time series con...
[Background] Kinetic models of biochemical systems usually consist of ordinary diff...
Problem statement. Constructing a computational model for a biological sys-tem consists of two main ...
Mathematical models based on ordinary differential equations have been employed with great success t...
In biology and bioengineering, mathematical and statistical analysis provides an understanding of bi...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
The biochemical models describing complex and dynamic metabolic systems are typically multi-parametr...
Chemical reaction networks are a popular formalism for modeling biological processes which supports ...
The inverse problem of modeling biochemical processes mathematically from measured time course data ...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Mechanistic mathematical modeling of biochemical reaction networks using ordinary differential equat...
Biochemical systems involving a high number of components with intricate interactions often lead to ...
Algorithms for parameter estimation and model selection that identify both the structure and the par...
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...
<div><p>The inference of reaction rate parameters in biochemical network models from time series con...
[Background] Kinetic models of biochemical systems usually consist of ordinary diff...
Problem statement. Constructing a computational model for a biological sys-tem consists of two main ...
Mathematical models based on ordinary differential equations have been employed with great success t...
In biology and bioengineering, mathematical and statistical analysis provides an understanding of bi...
Stochastic methods for simulating biochemical reaction networks often provide a more realistic descr...
The biochemical models describing complex and dynamic metabolic systems are typically multi-parametr...
Chemical reaction networks are a popular formalism for modeling biological processes which supports ...
The inverse problem of modeling biochemical processes mathematically from measured time course data ...