about
Adiabatic coarse-graining and simulations of stochastic biochemical networks.A new class of highly efficient exact stochastic simulation algorithms for chemical reaction networksSpecificity and completion time distributions of biochemical processesTemperature control of fimbriation circuit switch in uropathogenic Escherichia coli: quantitative analysis via automated model abstractionThe interplay of intrinsic and extrinsic bounded noises in biomolecular networksA hybrid continuous-discrete method for stochastic reaction-diffusion processesNoise in biologyComparison of Parameter Estimation Methods in Stochastic Chemical Kinetic Models: Examples in Systems BiologyLazy Updating of hubs can enable more realistic models by speeding up stochastic simulationsMathematical modeling of intracellular signaling pathways.A hybrid multiscale Monte Carlo algorithm (HyMSMC) to cope with disparity in time scales and species populations in intracellular networksFERN - a Java framework for stochastic simulation and evaluation of reaction networks.Computational Cellular Dynamics Based on the Chemical Master Equation: A Challenge for Understanding Complexity.Kinetic modeling of biological systems.The validity of quasi-steady-state approximations in discrete stochastic simulationsA data-integrated method for analyzing stochastic biochemical networks.The slow-scale linear noise approximation: an accurate, reduced stochastic description of biochemical networks under timescale separation conditions.URDME: a modular framework for stochastic simulation of reaction-transport processes in complex geometriesStochastic regulation in early immune response.Equilibrium distributions of simple biochemical reaction systems for time-scale separation in stochastic reaction networksStochastic simulation in systems biology.An accelerated algorithm for discrete stochastic simulation of reaction-diffusion systems using gradient-based diffusion and tau-leaping.The stochastic quasi-steady-state assumption: reducing the model but not the noise.Stochastic exit from mitosis in budding yeast: model predictions and experimental observations.Analytical Derivation of Moment Equations in Stochastic Chemical Kinetics.Equivalence of on-Lattice Stochastic Chemical Kinetics with the Well-Mixed Chemical Master Equation in the Limit of Fast Diffusion.Spectral methods for parametric sensitivity in stochastic dynamical systems.Automatising the analysis of stochastic biochemical time-series.Hybrid modeling and simulation of stochastic effects on progression through the eukaryotic cell cycleThe Abridgment and Relaxation Time for a Linear Multi-Scale Model Based on Multiple Site Phosphorylation.Are Quasi-Steady-State Approximated Models Suitable for Quantifying Intrinsic Noise Accurately?The relationship between stochastic and deterministic quasi-steady state approximations.Fast stochastic algorithm for simulating evolutionary population dynamicsConstant-complexity stochastic simulation algorithm with optimal binning.On the precision of quasi steady state assumptions in stochastic dynamicsStochastic modeling and simulation of reaction-diffusion system with Hill function dynamics.Discrete stochastic simulation methods for chemically reacting systemsReduction of multiscale stochastic biochemical reaction networks using exact moment derivation.A "partitioned leaping" approach for multiscale modeling of chemical reaction dynamics.Phenotypic model for early T-cell activation displaying sensitivity, specificity, and antagonism.
P2860
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P2860
description
2005 nî lūn-bûn
@nan
2005年の論文
@ja
2005年学术文章
@wuu
2005年学术文章
@zh
2005年学术文章
@zh-cn
2005年学术文章
@zh-hans
2005年学术文章
@zh-my
2005年学术文章
@zh-sg
2005年學術文章
@yue
2005年學術文章
@zh-hant
name
The slow-scale stochastic simulation algorithm.
@en
The slow-scale stochastic simulation algorithm.
@nl
type
label
The slow-scale stochastic simulation algorithm.
@en
The slow-scale stochastic simulation algorithm.
@nl
prefLabel
The slow-scale stochastic simulation algorithm.
@en
The slow-scale stochastic simulation algorithm.
@nl
P2093
P2860
P356
P1476
The slow-scale stochastic simulation algorithm.
@en
P2093
Daniel T Gillespie
Linda R Petzold
P2860
P356
10.1063/1.1824902
P407
P577
2005-01-01T00:00:00Z