6533b838fe1ef96bd12a3d71
RESEARCH PRODUCT
Discovering discriminative graph patterns from gene expression data
Simona E. RomboFabio FassettiCristina Serraosubject
0301 basic medicineSettore INF/01 - Informaticabusiness.industryComputer science0206 medical engineeringpattern discovery subgraph extraction biological networksPattern recognition02 engineering and technologyGraph03 medical and health sciencesComputingMethodologies_PATTERNRECOGNITION030104 developmental biologyDiscriminative modelGraph patternsArtificial intelligencebusiness020602 bioinformaticsBiological networkNetwork modeldescription
We consider the problem of mining gene expression data in order to single out interesting features characterizing healthy/unhealthy samples of an input dataset. We present an approach based on a network model of the input gene expression data, where there is a labelled graph for each sample. To the best of our knowledge, this is the first attempt to build a different graph for each sample and, then, to have a database of graphs for representing a sample set. Our main goal is that of singling out interesting differences between healthy and unhealthy samples, through the extraction of "discriminative patterns" among graphs belonging to the two different sample sets. Differently from the other approaches presented in the literature, our techniques is able to take into account important local similarities, and also collaborative effects involving interactions between multiple genes. In particular, we use edge-labelled graphs and we measure the discriminative power of a pattern based on such edge weights, which are representative of how much relevant is the co-expression between two genes.
year | journal | country | edition | language |
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2016-04-04 | Proceedings of the 31st Annual ACM Symposium on Applied Computing |