Integrating heterogeneous gene expression data for gene regulatory network modelling

被引:0
|
作者
Alina Sîrbu
Heather J. Ruskin
Martin Crane
机构
[1] Centre for Scientific Computing and Complex Systems Modelling,
[2] School of Computing,undefined
[3] Dublin City University,undefined
来源
Theory in Biosciences | 2012年 / 131卷
关键词
Gene expression; Wavelets; Data integration; Genetic regulatory networks; Complex systems; Mathematical modelling;
D O I
暂无
中图分类号
学科分类号
摘要
Gene regulatory networks (GRNs) are complex biological systems that have a large impact on protein levels, so that discovering network interactions is a major objective of systems biology. Quantitative GRN models have been inferred, to date, from time series measurements of gene expression, but at small scale, and with limited application to real data. Time series experiments are typically short (number of time points of the order of ten), whereas regulatory networks can be very large (containing hundreds of genes). This creates an under-determination problem, which negatively influences the results of any inferential algorithm. Presented here is an integrative approach to model inference, which has not been previously discussed to the authors’ knowledge. Multiple heterogeneous expression time series are used to infer the same model, and results are shown to be more robust to noise and parameter perturbation. Additionally, a wavelet analysis shows that these models display limited noise over-fitting within the individual datasets.
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页码:95 / 102
页数:7
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