Graph Inference Enhancement With Clustering: Application To Gene Regulatory Network Reconstruction

2015 23rd European Signal Processing Conference (EUSIPCO)(2015)

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摘要
The obtention of representative graphs is a key problem in an increasing number of fields, such as computer graphics, social sciences, and biology to name a few. Due to the large number of possible solutions from the available amount of data, building meaningful graphs is often challenging. Nonetheless, enforcing a priori on the graph structure, such as a modularity, may reduce the underdetermination in the underlying problem. In this work, we introduce such a methodology in the context of Gene Regulatory Network inference. These networks are useful to visualize gene interactions occurring in living organisms: some genes regulate the expression of others, structuring the network into modules where they play a central role. Our approach consists in jointly inferring the graph and performing a clustering using the graph-Laplacian based random walker algorithm. We validate our approach on the DREAM4 damsel, showing significant improvement over state-of-the-art GRN inference methods.
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关键词
genomic data analysis,graph construction,combinatorial Dirichlet problem,random walker
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