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Statistical analysis and significance testing of serial analysis of gene expression data using a Poisson mixture model

机译:使用泊松混合模型进行基因表达数据系列分析的统计分析和显着性检验

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摘要

BackgroundSerial analysis of gene expression (SAGE) is used to obtain quantitative snapshots of the transcriptome. These profiles are count-based and are assumed to follow a Binomial or Poisson distribution. However, tag counts observed across multiple libraries (for example, one or more groups of biological replicates) have additional variance that cannot be accommodated by this assumption alone. Several models have been proposed to account for this effect, all of which utilize a continuous prior distribution to explain the excess variance. Here, a Poisson mixture model, which assumes excess variability arises from sampling a mixture of distinct components, is proposed and the merits of this model are discussed and evaluated.
机译:背景技术通过基因表达的序列分析(SAGE)获得转录组的定量快照。这些配置文件基于计数,并假定遵循二项分布或泊松分布。但是,跨多个库(例如,一组或多组生物学复制品)观察到的标签计数具有其他差异,仅凭此假设无法解决。已经提出了几种模型来解释这种影响,所有模型都利用连续的先验分布来解释过量方差。在此,提出了一种Poisson混合模型,该模型假设由于对不同成分的混合物进行采样而产生了过多的可变性,并且对该模型的优点进行了讨论和评估。

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