Journal article

Stochastic S-system modeling of gene regulatory network

AR Chowdhury, M Chetty, R Evans

Cognitive Neurodynamics | Published : 2015

Abstract

Microarray gene expression data can provide insights into biological processes at a system-wide level and is commonly used for reverse engineering gene regulatory networks (GRN). Due to the amalgamation of noise from different sources, microarray expression profiles become inherently noisy leading to significant impact on the GRN reconstruction process. Microarray replicates (both biological and technical), generated to increase the reliability of data obtained under noisy conditions, have limited influence in enhancing the accuracy of reconstruction. Therefore, instead of the conventional GRN modeling approaches which are deterministic, stochastic techniques are becoming increasingly necess..

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University of Melbourne Researchers

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Funding Acknowledgements

This work has been funded by Collaborative Research Network (CRN) project of Federation University Australia. Authors would like to acknowledge Dr. Andrew Percy from Federation University Australia (Gippsland campus) for his useful discussion.