首页> 外文期刊>Journal of Neuroscience Methods >Unbiased characterization of high-density oligonucleotide microarrays using probe-level statistics.
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Unbiased characterization of high-density oligonucleotide microarrays using probe-level statistics.

机译:使用探针水平的统计数据对高密度寡核苷酸微阵列进行无偏性表征。

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摘要

Affymetrix GeneChips are being used increasingly for quantitative monitoring of gene expression in a variety of biological systems. Depending on the experiment, the analysis of Affymetrix results can have several different goals ranging from calculation of signal strength for a variety of inter-gene comparisons to the determination of which genes show significant differential expression between sample conditions. There have been several proposed methods for precise quantification of expression signal with promising results; however the question of what constitutes a significant change between replicate groups still remains. We have designed a method which performs statistical analysis on the differential expression of genes in the Affymetrix GeneChip system at the probe level in order to bypass the assumptions made in other analysis techniques. Validation using both spike-in data and real experimental data proves the method is effective at isolating differentially expressed genes statistically, therebyeliminating the need for arbitrary restrictions such as fold change. Application to an existing neural stem cell data set demonstrates the method's applicability to highly complex systems and its ability to detect very low expression differences (<1.2-fold change), providing resolution which may be of significant interest in neural systems such as this.
机译:Affymetrix GeneChips越来越多地用于定量监测各种生物系统中的基因表达。根据实验的不同,对Affymetrix结果的分析可能有几个不同的目标,从计算各种基因间比较的信号强度到确定哪些基因在样品条件之间表现出明显的差异性表达,都有不同的目标。已经提出了几种精确定量表达信号的方法,其结果令人鼓舞。但是,关于什么构成重复组之间的重大变化的问题仍然存在。我们设计了一种方法,可以在探针级别对Affymetrix GeneChip系统中的基因差异表达进行统计分析,以绕过其他分析技术中的假设。使用加标数据和实际实验数据进行的验证证明,该方法可有效地统计分离差异表达的基因,从而消除了对任意限制(例如倍数变化)的需要。在现有的神经干细胞数据集上的应用证明了该方法对高度复杂的系统的适用性以及其检测极低的表达差异(<1.2倍变化)的能力,提供了在此类神经系统中可能引起重大关注的分辨率。

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