There is an increasing awareness of the pivotal role of noise in biochemical processes and of the effect of molecular crowding on the dynamics of biochemical systems. This necessity has given rise to a strong need for suitable and sophisticated algorithms for the simulation of biological phenomena taking into account both spatial effects and noise. However, the high computational effort characterizing simulation approaches, coupled with the necessity to simulate the models several times to achieve statistically relevant information on the model behaviours, makes such kind of algorithms very time-consuming for studying real systems. So far, different parallelization approaches have been deployed to reduce the computational time required to s...
Heterogeneity and variability is ubiquitous in biology and physiology and one of the great modelling...
Abstract reaction event that occurs in the system, the accuracy of the method comes at a high comput...
The dissertation is focused on algorithms for performing non-spatial and spatial stochastic simulati...
Copyright © 2014 Daniele D’Agostino et al. This is an open access article distributed under the Crea...
Stochastic models are widely used in the simulation of biochemical systems at a cellular level. For ...
Spatial stochastic reaction-diffusion simulations have become an important component of molecular mo...
Spatial distributions characterize the evolution of reaction-diffusion models of several physical, c...
Recent advances in biology have shown that proteins and genes often interact probabilistically. The ...
Stochastic modelling is critical for studying many biochemical processes in a cell, in particular wh...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
Quantitative descriptions of reaction kinetics formulated at the stochastic mesoscopic level are fre...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
Stochastic, spatial reaction-diffusion simulations have been widely used in systems biology and comp...
Stochastic modelling and simulations play a major role in Systems Biology because, at molecular leve...
The small number of some reactant molecules in biological systems formed by living cells can result ...
Heterogeneity and variability is ubiquitous in biology and physiology and one of the great modelling...
Abstract reaction event that occurs in the system, the accuracy of the method comes at a high comput...
The dissertation is focused on algorithms for performing non-spatial and spatial stochastic simulati...
Copyright © 2014 Daniele D’Agostino et al. This is an open access article distributed under the Crea...
Stochastic models are widely used in the simulation of biochemical systems at a cellular level. For ...
Spatial stochastic reaction-diffusion simulations have become an important component of molecular mo...
Spatial distributions characterize the evolution of reaction-diffusion models of several physical, c...
Recent advances in biology have shown that proteins and genes often interact probabilistically. The ...
Stochastic modelling is critical for studying many biochemical processes in a cell, in particular wh...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
Quantitative descriptions of reaction kinetics formulated at the stochastic mesoscopic level are fre...
Experimental and theoretical studies have shown the importance of stochastic processes in genetic re...
Stochastic, spatial reaction-diffusion simulations have been widely used in systems biology and comp...
Stochastic modelling and simulations play a major role in Systems Biology because, at molecular leve...
The small number of some reactant molecules in biological systems formed by living cells can result ...
Heterogeneity and variability is ubiquitous in biology and physiology and one of the great modelling...
Abstract reaction event that occurs in the system, the accuracy of the method comes at a high comput...
The dissertation is focused on algorithms for performing non-spatial and spatial stochastic simulati...