DocumentCode
412545
Title
Stochastic neural network models for gene regulatory networks
Author
Tian, Tianhai ; Burrage, Kevin
Author_Institution
Adv. Computational Modelling Centre, Queensland Univ., Brisbane, Qld., Australia
Volume
1
fYear
2003
fDate
8-12 Dec. 2003
Firstpage
162
Abstract
Recent advances in gene-expression profiling technologies provide large amounts of gene expression data. This raises the possibility for a functional understanding of genome dynamics by means of mathematical modelling. As gene expression involves intrinsic noise, stochastic models are essential for better descriptions of gene regulatory networks. However, stochastic modelling for large scale gene expression data sets is still in the very early developmental stage. In this paper we present some stochastic models by introducing stochastic processes into neural network models that can describe intermediate regulation for large scale gene networks. Poisson random variables are used to represent chance events in the processes of synthesis and degradation. For expression data with normalized concentrations, exponential or normal random variables are used to realize fluctuations. Using a network with three genes, we show how to use stochastic simulations for studying robustness and stability properties of gene expression patterns under the influence of noise, and how to use stochastic models to predict statistical distributions of expression levels in population of cells. The discussion suggest that stochastic neural network models can give better description of gene regulatory networks and provide criteria for measuring the reasonableness o mathematical models.
Keywords
Poisson distribution; biology computing; genetics; neural nets; stochastic processes; Poisson random variables; cell population; expression levels; gene expression patterns; gene regulatory networks; gene-expression profiling technologies; genome dynamics; intrinsic noise; large scale gene expression data sets; mathematical modelling; mathematical models; normalized concentrations; statistical distributions; stochastic neural network models; stochastic processes; stochastic simulations; Gene expression; Genomics; Large-scale systems; Mathematical model; Neural networks; Predictive models; Random variables; Robust stability; Stochastic processes; Stochastic resonance;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 2003. CEC '03. The 2003 Congress on
Print_ISBN
0-7803-7804-0
Type
conf
DOI
10.1109/CEC.2003.1299570
Filename
1299570
Link To Document