This article addresses reaction networks in which spatial and stochastic effects are of crucial importance. For such systems, particle-based models allow us to describe all microscopic details with high accuracy. However, they suffer from computational inefficiency if particle numbers and density get too large. Alternative coarse-grained-resolution models reduce computational effort tremendously, e.g., by replacing the particle distribution by a continuous concentration field governed by reaction-diffusion PDEs. We demonstrate how models on the different resolution levels can be combined into hybrid models that seamlessly combine the best of both worlds, describing molecular species with large copy numbers by macroscopic equations with spat...
Reaction–diffusion models are used to describe systems in fields as diverse as physics, chemistry, e...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...
Recent advances in computational neuroscience have demonstrated the usefulness and importance of sto...
This article addresses reaction networks in which spatial and stochastic effects are of crucial impo...
Numerous network and whole brain modeling approaches make use of mean-field models. Their relative s...
Spatial reaction-diffusion models have been employed to describe many emergent phenomena in biologic...
Intracellular signalling networks are composed of large numbers of different chemical species that r...
The NEURON simulator is a widely used tool for studying detailed single cell and network models. In ...
Open biochemical systems of interacting molecules are ubiquitous in life-related processes. However,...
With the observation that stochasticity is important in biological systems, chemical kinetics have b...
Spatial stochastic reaction-diffusion simulations have become an important component of molecular mo...
Neuronal networks may be represented as stochastic particle systems. Every particle has an associate...
International audienceDeriving tractable reduced equations of biological neural networks capturing t...
Deriving tractable reduced equations of biological neural networks capturing the macroscopic dynamic...
Neuronal signal transduction plays a central role in brain functioning, and it involves molecular si...
Reaction–diffusion models are used to describe systems in fields as diverse as physics, chemistry, e...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...
Recent advances in computational neuroscience have demonstrated the usefulness and importance of sto...
This article addresses reaction networks in which spatial and stochastic effects are of crucial impo...
Numerous network and whole brain modeling approaches make use of mean-field models. Their relative s...
Spatial reaction-diffusion models have been employed to describe many emergent phenomena in biologic...
Intracellular signalling networks are composed of large numbers of different chemical species that r...
The NEURON simulator is a widely used tool for studying detailed single cell and network models. In ...
Open biochemical systems of interacting molecules are ubiquitous in life-related processes. However,...
With the observation that stochasticity is important in biological systems, chemical kinetics have b...
Spatial stochastic reaction-diffusion simulations have become an important component of molecular mo...
Neuronal networks may be represented as stochastic particle systems. Every particle has an associate...
International audienceDeriving tractable reduced equations of biological neural networks capturing t...
Deriving tractable reduced equations of biological neural networks capturing the macroscopic dynamic...
Neuronal signal transduction plays a central role in brain functioning, and it involves molecular si...
Reaction–diffusion models are used to describe systems in fields as diverse as physics, chemistry, e...
We present a mean-field formalism able to predict the collective dynamics of large networks of condu...
Recent advances in computational neuroscience have demonstrated the usefulness and importance of sto...