about
Intrinsic noise analyzer: a software package for the exploration of stochastic biochemical kinetics using the system size expansionSingle-molecule enzymology à la Michaelis-MentenModeling cellular compartmentation in one-carbon metabolismThe role of compensatory mutations in the emergence of drug resistanceA self-organized model for cell-differentiation based on variations of molecular decay ratesA computational framework for analyzing stochasticity in gene expressionA stochastic chemical dynamic approach to correlate autoimmunity and optimal vitamin-D rangeSimulation of anaerobic digestion processes using stochastic algorithmStochastic kinetics of viral capsid assembly based on detailed protein structures.Using Petri Net tools to study properties and dynamics of biological systemsA stochastic automaton shows how enzyme assemblies may contribute to metabolic efficiency.Phenotype prediction in regulated metabolic networksGridCell: a stochastic particle-based biological system simulator.Increasing the efficiency of bacterial transcription simulations: when to exclude the genome without loss of accuracy.Probability distributed time delays: integrating spatial effects into temporal models.Solving the chemical master equation using sliding windows.A Bayesian hierarchical model for maximizing the vascular adhesion of nanoparticles.Simulation methods with extended stability for stiff biochemical Kinetics.Exploring the spatial and temporal organization of a cell's proteomeStochastic adaptation and fold-change detection: from single-cell to population behaviorComputational study of noise in a large signal transduction networkAccelerating the Gillespie τ-Leaping Method using graphics processing units.Accelerating the Gillespie Exact Stochastic Simulation Algorithm using hybrid parallel execution on graphics processing units.Comparison of models for IP3 receptor kinetics using stochastic simulations.Sources of anomalous diffusion on cell membranes: a Monte Carlo studyA straightforward method to compute average stochastic oscillations from data samplesSpatial aspects in biological system simulationsSpace as the final frontier in stochastic simulations of biological systems.Spatial simulations in systems biology: from molecules to cells.Control of Stochastic and Induced Switching in Biophysical NetworksDiscrete-state stochastic models of calcium-regulated calcium influx and subspace dynamics are not well-approximated by ODEs that neglect concentration fluctuations.Mathematical models for somite formation.Modelling reaction kinetics inside cellsTraining an asymmetric signal perceptron through reinforcement in an artificial chemistry.The chemical master equation approach to nonequilibrium steady-state of open biochemical systems: linear single-molecule enzyme kinetics and nonlinear biochemical reaction networks.Fractal symmetry of protein interior: what have we learned?Modeling formalisms in Systems Biology.Mathematical simulation of membrane protein clustering for efficient signal transductionLogic-based models in systems biology: a predictive and parameter-free network analysis method.Foundations for modeling the dynamics of gene regulatory networks: a multilevel-perspective review.
P2860
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P2860
description
2004 nî lūn-bûn
@nan
2004年の論文
@ja
2004年論文
@yue
2004年論文
@zh-hant
2004年論文
@zh-hk
2004年論文
@zh-mo
2004年論文
@zh-tw
2004年论文
@wuu
2004年论文
@zh
2004年论文
@zh-cn
name
Stochastic approaches for modelling in vivo reactions.
@ast
Stochastic approaches for modelling in vivo reactions.
@en
type
label
Stochastic approaches for modelling in vivo reactions.
@ast
Stochastic approaches for modelling in vivo reactions.
@en
prefLabel
Stochastic approaches for modelling in vivo reactions.
@ast
Stochastic approaches for modelling in vivo reactions.
@en
P1476
Stochastic approaches for modelling in vivo reactions
@en
P2093
P304
P356
10.1016/J.COMPBIOLCHEM.2004.05.001
P577
2004-07-01T00:00:00Z