We study the problem of identifying relevant genes in a co-expression network using a (cooperative) game theoretic approach. The Shapley value of a cooperative game is used to asses the relevance of each gene in interaction with the others, and to stress the role of nodes in the periphery of a co-expression network for the regulation of complex biological pathways of interest. An application of the method to the analysis of gene expression data from microarrays is presented, as well as a comparison with classical centrality indices. Finally, making further assumptions about the a priori importance of genes, we combine the game theoretic model with other techniques from cluster analysis.
CITATION STYLE
Cesari, G., Algaba, E., Moretti, S., & Nepomuceno, J. A. (2018). An application of the Shapley value to the analysis of co-expression networks. Applied Network Science, 3(1). https://doi.org/10.1007/s41109-018-0095-y
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