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Systematical Detection of Significant Genes in Microarray Data by Incorporating Gene Interaction Relationship in Biological Systems

机译:通过整合生物系统中的基因相互作用关系系统检测微阵列数据中的重要基因

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摘要

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.
机译:基于生物学系统是线性的假设,许多方法(包括参数方法,非参数方法和贝叶斯方法)已用于检测差异表达的基因,而忽略了大多数生物系统的非线性特征。更重要的是,这些方法不会同时考虑均值,方差和高矩,从而导致较高的误报率。为了克服这些局限性,提出了SWang检验,以根据病例与对照之间的分布相等来确定差异表达的基因。我们的方法不仅潜在地结合了基因之间的功能关系以考虑非线性生物系统,而且还同时考虑了表达谱的均值,方差,偏度和峰度。为了说明高力矩的生物学意义,我们构建了一个非线性基因相互作用模型,证明了偏度和峰度可能包含微阵列中基因之间功能关联的有用信息。仿真和真实的芯片结果表明,SWang的假阳性率低于目前流行的方法(T检验,F检验,SAM和倍数变化),且统计能力更高。此外,SWang可以独特地检测真实微阵列数据中的重要基因,这些基因具有不明显的差异表达,但峰度和偏度的多样性更高。这些已鉴定的基因已通过我们实验室中先前发表的文献或RT-PCR实验得到证实。

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