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Coincidence between Transcriptome Analyses on Different Microarray Platforms Using a Parametric Framework

机译:使用参数框架在不同微阵列平台上进行转录组分析的一致性

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摘要

A parametric framework for the analysis of transcriptome data is demonstrated to yield coincident results when applied to data acquired using two different microarray platforms. Microarrays are widely employed to acquire transcriptome information, and several platforms of chips are currently in use. However, discrepancies among studies are frequently reported, particularly among those performed using different platforms, casting doubt on the reliability of collected data. The inconsistency among observations can be largely attributed to differences among the analytical frameworks employed for data analysis. The existing frameworks are based on different philosophies and yield different results, but all involve normalization against a standard determined from the data to be analyzed. In the present study, a parametric framework based on a strict model for normalization is applied to data acquired using several slide-glass-type chips and GeneChip. The model is based on a common statistical characteristic of microarray data, and each set of chip data is normalized on the basis of a linear relationship with this model. In the proposed framework, the expressional changes observed and genes selected are coincident between platforms, achieving superior universality of data compared to other frameworks.
机译:当应用于两个不同的微阵列平台获取的数据时,用于转录组数据分析的参数框架被证明可以产生一致的结果。微阵列被广泛用于获取转录组信息,并且目前正在使用多种芯片平台。但是,经常会报告研究之间的差异,尤其是在使用不同平台进行的研究之间的差异,这对收集到的数据的可靠性提出了疑问。观察结果之间的不一致在很大程度上可归因于用于数据分析的分析框架之间的差异。现有的框架基于不同的理念并且产生不同的结果,但是所有框架都涉及根据要分析的数据确定的标准进行标准化。在本研究中,将基于严格归一化模型的参数框架应用于使用多个载玻片型芯片和GeneChip采集的数据。该模型基于微阵列数据的共同统计特征,并且基于与该模型的线性关系对每组芯片数据进行归一化。在提出的框架中,观察到的表达变化和选择的基因在平台之间是一致的,与其他框架相比,实现了卓越的数据通用性。

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