Financiado para publicación en acceso aberto: Universidade de Vigo/CISUGBiological processes are often modelled using ordinary differential equations. The unknown parameters of these models are estimated by optimizing the fit of model simulation and experimental data. The resulting parameter estimates inevitably possess some degree of uncertainty. In practical applications it is important to quantify these parameter uncertainties as well as the resulting prediction uncertainty, which are uncertainties of potentially time-dependent model characteristics. Unfortunately, estimating prediction uncertainties accurately is nontrivial, due to the nonlinear dependence of model characteristics on parameters. While a number of numerical approaches ha...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Biological processes are often modelled using ordinary differential equations. The unknown parameter...
Biological processes are often modelled using ordinary differential equations. The unknown parameter...
7 pages, 4 figures, 2 tablesThe parameters of dynamical models of biological processes always posses...
The parameters of dynamical models of biological processes always possess some degree of uncertainty...
Scripts that reproduce the results presented in the paper "Assessment of Prediction Uncertainty Quan...
Scripts that reproduce the Uncertainty Quantification results presented in the associated paper. Fou...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
One of the most important properties of a mathematical model is the abilityto make predictions: to p...
One of the most important properties of a mathematical model is the abilityto make predictions: to p...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Biological processes are often modelled using ordinary differential equations. The unknown parameter...
Biological processes are often modelled using ordinary differential equations. The unknown parameter...
7 pages, 4 figures, 2 tablesThe parameters of dynamical models of biological processes always posses...
The parameters of dynamical models of biological processes always possess some degree of uncertainty...
Scripts that reproduce the results presented in the paper "Assessment of Prediction Uncertainty Quan...
Scripts that reproduce the Uncertainty Quantification results presented in the associated paper. Fou...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
One of the most important properties of a mathematical model is the abilityto make predictions: to p...
One of the most important properties of a mathematical model is the abilityto make predictions: to p...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...
Improved mechanistic understanding of biochemical networks is one of the driving ambitions of System...