Open Access BASE2008

Combining Shapley value and statistics to the analysis of gene expression data in children exposed to air pollution

In: Moretti , S , van Leeuwen , D , Gmuender , H , Bonassi , S , van Delft , J , Kleinjans , J , Patrone , F & Merlo , D F 2008 , ' Combining Shapley value and statistics to the analysis of gene expression data in children exposed to air pollution ' , BMC Bioinformatics , vol. 9 , no. 1 , pp. 361 . https://doi.org/10.1186/1471-2105-9-361

Abstract

ABSTRACT: BACKGROUND: In gene expression analysis, statistical tests for differential gene expression provide lists of candidate genes having, individually, a sufficiently low p-value. However, the interpretation of each single p-value within complex systems involving several interacting genes is problematic. In parallel, in the last sixty years, game theory has been applied to political and social problems to assess the power of interacting agents in forcing a decision and, more recently, to represent the relevance of genes in response to certain conditions. RESULTS: In this paper we introduce a Bootstrap procedure to test the null hypothesis that each gene has the same relevance between two conditions, where the relevance is represented by the Shapley value of a particular coalitional game defined on a microarray data-set. This method, which is called Comparative Analysis of Shapley value (shortly, CASh), is applied to real gene expression data concerning the gene expression in children differentially exposed to air pollution. The results provided by CASh are compared with the results from a parametric statistical test for testing differential gene expression. Both lists of genes provided by CASh and t-test are informative enough to discriminate exposed subjects on the basis of their gene expression profiles. While many genes are selected in common by CASh and the parametric test, it turns out that the biological interpretation of the differences between these two selections is of more interest, suggesting a different interpretation of the main biological pathways in gene expression regulation for exposed individuals. CONCLUSIONS: CASh is successfully applied to gene expression analysis of a data-set where the joint expression behavior of genes may be critical to characterize the expression response to air pollution. We demonstrate a synergistic effect between coalitional games and statistics that resulted in a selection of genes with a potential impact in regulation of complex pathways.

Report Issue

If you have problems with the access to a found title, you can use this form to contact us. You can also use this form to write to us if you have noticed any errors in the title display.