PLoS ONE (Jan 2010)

Systematical detection of significant genes in microarray data by incorporating gene interaction relationship in biological systems.

  • Junwei Wang,
  • Meiwen Jia,
  • Liping Zhu,
  • Zengjin Yuan,
  • Peng Li,
  • Chang Chang,
  • Jian Luo,
  • Mingyao Liu,
  • Tieliu Shi

DOI
https://doi.org/10.1371/journal.pone.0013721
Journal volume & issue
Vol. 5, no. 10
p. e13721

Abstract

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Many methods, including parametric, nonparametric, and Bayesian methods, have been used for detecting differentially expressed genes based on the assumption that biological systems are linear, which ignores the nonlinear characteristics of most biological systems. More importantly, those methods do not simultaneously consider means, variances, and high moments, resulting in relatively high false positive rate. To overcome the limitations, the SWang test is proposed to determine differentially expressed genes according to the equality of distributions between case and control. Our method not only latently incorporates functional relationships among genes to consider nonlinear biological system but also considers the mean, variance, skewness, and kurtosis of expression profiles simultaneously. To illustrate biological significance of high moments, we construct a nonlinear gene interaction model, demonstrating that skewness and kurtosis could contain useful information of function association among genes in microarrays. Simulations and real microarray results show that false positive rate of SWang is lower than currently popular methods (T-test, F-test, SAM, and Fold-change) with much higher statistical power. Additionally, SWang can uniquely detect significant genes in real microarray data with imperceptible differential expression but higher variety in kurtosis and skewness. Those identified genes were confirmed with previous published literature or RT-PCR experiments performed in our lab.