| Literature DB >> 18466593 |
Silke Szymczak1, Angelo Nuzzo2, Christian Fuchsberger3, Daniel F Schwarz1, Andreas Ziegler1, Riccardo Bellazzi2, Bernd-Wolfgang Igl1.
Abstract
Mutual information (MI) is a robust nonparametric statistical approach for identifying associations between genotypes and gene expression levels. Using the data of Problem 1 provided for the Genetic Analysis Workshop 15, we first compared a quantitative MI (Tsalenko et al. 2006 J Bioinform Comput Biol 4:259-4) with the standard analysis of variance (ANOVA) and the nonparametric Kruskal-Wallis (KW) test. We then proposed a novel feature selection approach using MI in a classification scenario to address the small n - large p problem and compared it with a feature selection that relies on an asymptotic chi2 distribution. In both applications, we used a permutation-based approach for evaluating the significance of MI. Substantial discrepancies in significance were observed between MI, ANOVA, and KW that can be explained by different empirical distributions of the data. In contrast to ANOVA and KW, MI detects shifts in location when the data are non-normally distributed, skewed, or contaminated with outliers. ANOVA but not MI is often significant if one genotype with a small frequency had a remarkable difference in the average gene expression level relative to the other two genotypes. MI depends on genotype frequencies and cannot detect these differences. In the classification scenario, we show that our novel approach for feature selection identifies a smaller list of markers with higher accuracy compared to the standard method. In conclusion, permutation-based MI approaches provide reliable and flexible statistical frameworks which seem to be well suited for data that are non-normal, skewed, or have an otherwise peculiar distribution. They merit further methodological investigation.Entities:
Year: 2007 PMID: 18466593 PMCID: PMC2359872 DOI: 10.1186/1753-6561-1-s1-s9
Source DB: PubMed Journal: BMC Proc ISSN: 1753-6561
Figure 1Feature selection based on permutation method.
Figure 2Scatterplots of . Left, QMIS and KW. Right, ANOVA and KW.
Figure 3Gene expression levels by genotypes in cases with divergent results for QMIS, ANOVA, and KW. Left, QMIS significant, ANOVA not significant. Right, QMIS significant, KW not significant. Box plots display median, quartiles, largest non-outlier and extremes.