Department of Health Statistics, Third Military Medical University, Chongqing, China.
Gene. 2012 Nov 10;509(2):302-8. doi: 10.1016/j.gene.2012.07.079. Epub 2012 Aug 14.
Although many statistical methods have been proposed for identifying differentially expressed genes, the optimal approach has still not been resolved. Therefore, it is necessary to develop more efficient methods of finding differentially expressed genes while accounting for noise and false discovery rate (FDR). We propose a method based on multi-resolution wavelet transformation analysis combined with SAM for identifying differentially expressed genes by adjusting the Δ and computing the FDR. This method was applied to a microarray expression dataset from adenoma patients and normal subjects. The number of differentially expressed genes gradually reduced with an increasing Δ value, and the FDR was reduced after wavelet transformation. At a given Δ value, the FDR was also reduced before and after wavelet transformation. In conclusion, a greater number and quality of differentially expressed genes were detected using the method when compared to non-transformed data, and the FDRs were notably more controlled and reduced.
尽管已经提出了许多用于识别差异表达基因的统计方法,但最佳方法仍未得到解决。因此,有必要在考虑噪声和假发现率(FDR)的情况下,开发更有效的差异表达基因发现方法。我们提出了一种基于多分辨率小波变换分析结合 SAM 的方法,通过调整 Δ 和计算 FDR 来识别差异表达基因。该方法应用于来自腺瘤患者和正常受试者的微阵列表达数据集。随着 Δ 值的增加,差异表达基因的数量逐渐减少,并且在小波变换后 FDR 降低。在给定的 Δ 值下,小波变换前后的 FDR 也降低。总之,与非变换数据相比,该方法检测到的差异表达基因数量更多,质量更高,并且 FDR 得到了显著的控制和降低。