Motivation: Computational models of biological signalling networks, based on ordinary differential equations (ODEs), have generated many insights into cellular dynamics, but the model-building process typically requires estimating rate parameters based on experimentally observed concentrations. New proteomic methods can measure concentrations for all molecular species in a pathway; this creates a new opportunity to decompose the optimization of rate parameters. Results: In contrast with conventional parameter estimation methods that minimize the disagreement between simulated and observed concentrations, the SPEDRE method fits spline curves through observed concentration points, estimates derivatives and then matches the derivatives to the...
Dynamical models of inter- and intra-cellular processes contain the rate constants of the biochemica...
Background Parameter estimation is often the bottlenecking step in biological system modeling. For ...
The use of computer simulations in biology is often limited due to the lack of experimentally measur...
Cell signaling pathways and metabolic networks are often modeled using ordinary differential equatio...
Background: Mathematical modeling is being applied to increasingly complex biological systems and da...
The estimation of parameter values (model calibration) is the bottleneck of the computational analys...
Background: Recovering the network topology and associated kinetic parameter values from time-series...
Progress in advancing our understanding of biological systems is limited by their sheer complexity, ...
Mechanistic mathematical modeling of biochemical reaction networks using ordinary differential equat...
Abstract Background Parameter estimation in biological models is a common yet challenging problem. I...
Ordinary differential equations (ODEs) are widely used to model the dynamic properties of biological...
Mathematical modelling is feasible only if the biological system under consideration meets certain c...
Whether it is the signaling mechanisms behind immune cells or the change in animal populations, mech...
BACKGROUND: As computational performance steadily increases, so does interest in extending one-parti...
Abstract Background Mathematical modeling is being applied to increasingly complex biological system...
Dynamical models of inter- and intra-cellular processes contain the rate constants of the biochemica...
Background Parameter estimation is often the bottlenecking step in biological system modeling. For ...
The use of computer simulations in biology is often limited due to the lack of experimentally measur...
Cell signaling pathways and metabolic networks are often modeled using ordinary differential equatio...
Background: Mathematical modeling is being applied to increasingly complex biological systems and da...
The estimation of parameter values (model calibration) is the bottleneck of the computational analys...
Background: Recovering the network topology and associated kinetic parameter values from time-series...
Progress in advancing our understanding of biological systems is limited by their sheer complexity, ...
Mechanistic mathematical modeling of biochemical reaction networks using ordinary differential equat...
Abstract Background Parameter estimation in biological models is a common yet challenging problem. I...
Ordinary differential equations (ODEs) are widely used to model the dynamic properties of biological...
Mathematical modelling is feasible only if the biological system under consideration meets certain c...
Whether it is the signaling mechanisms behind immune cells or the change in animal populations, mech...
BACKGROUND: As computational performance steadily increases, so does interest in extending one-parti...
Abstract Background Mathematical modeling is being applied to increasingly complex biological system...
Dynamical models of inter- and intra-cellular processes contain the rate constants of the biochemica...
Background Parameter estimation is often the bottlenecking step in biological system modeling. For ...
The use of computer simulations in biology is often limited due to the lack of experimentally measur...