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Enhanced identification and biological validation of differential gene expression via Illumina whole-genome expression arrays through the use of the model-based background correction methodology

机译:通过使用基于模型的背景校正方法通过Illumina全基因组表达阵列增强对差异基因表达的鉴定和生物学验证

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摘要

Despite the tremendous growth of microarray usage in scientific studies, there is a lack of standards for background correction methodologies, especially in single-color microarray platforms. Traditional background subtraction methods often generate negative signals and thus cause large amounts of data loss. Hence, some researchers prefer to avoid background corrections, which typically result in the underestimation of differential expression. Here, by utilizing nonspecific negative control features integrated into Illumina whole genome expression arrays, we have developed a method of model-based background correction for BeadArrays (MBCB). We compared the MBCB with a method adapted from the Affymetrix robust multi-array analysis algorithm and with no background subtraction, using a mouse acute myeloid leukemia (AML) dataset. We demonstrated that differential expression ratios obtained by using the MBCB had the best correlation with quantitative RT–PCR. MBCB also achieved better sensitivity in detecting differentially expressed genes with biological significance. For example, we demonstrated that the differential regulation of Tnfr2, Ikk and NF-kappaB, the death receptor pathway, in the AML samples, could only be detected by using data after MBCB implementation. We conclude that MBCB is a robust background correction method that will lead to more precise determination of gene expression and better biological interpretation of Illumina BeadArray data.
机译:尽管在科学研究中微阵列的使用有了巨大的增长,但是背景校正方法尚缺乏标准,尤其是在单色微阵列平台中。传统的背景扣除方法通常会产生负信号,从而导致大量数据丢失。因此,一些研究人员倾向于避免背景校正,因为背景校正通常会导致差异表达的低估。在这里,通过利用整合到Illumina全基因组表达阵列中的非特异性阴性对照功能,我们开发了一种基于模型的BeadArrays(MBCB)背景校正方法。我们使用小鼠急性髓细胞白血病(AML)数据集,将MBCB与Affymetrix健壮的多阵列分析算法改编的方法进行了比较,并且没有背景扣除。我们证明了使用MBCB获得的差异表达率与定量RT-PCR的相关性最好。 MBCB在检测具有生物学意义的差异表达基因方面也获得了更高的灵敏度。例如,我们证明了AML样品中Tnfr2,Ikk和NF-kappaB(死亡受体途径)的差异调节只能通过使用MBCB实施后的数据来检测。我们得出结论,MBCB是一种可靠的背景校正方法,它将导致更精确地确定基因表达并更好地对Illumina BeadArray数据进行生物学解释。

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