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Independent arrays or independent time courses for gene expression time series data analysis

机译:用于基因表达时间序列数据分析的独立阵列或独立时间课程

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摘要

In this paper we apply three different independent component analysis (ICA) methods, including spatial ICA (sICA), temporal ICA (tICA), and spatiotemporal ICA (stICA), to gene expression time series data and compare their performance in clustering genes and in finding biologically meaningful modes. Up to now, only spatial ICA was applied to gene expression data analysis. However, in the case of yeast cell cycle-related gene expression time series data, our comparative study shows that tICA turns out to be more useful than sICA and stICA in the task of gene clustering and that stICA finds linear modes that best match cell cycles, among these three ICA methods. The underlying generative assumption on independence over temporal modes corresponding to biological process gives the better performance of tICA and stICA compared to sICA.
机译:在本文中,我们应用三种不同的独立成分分析(ICA)方法,包括空间ICA(sICA),时间ICA(tICA)和时空ICA(stICA),来对基因表达时间序列数据进行比较,并比较它们在聚类基因和基因表达中的表现。寻找具有生物学意义的模式。迄今为止,仅将空间ICA应用于基因表达数据分析。但是,就酵母细胞周期相关的基因表达时间序列数据而言,我们的比较研究表明,tICA在基因聚类任务中比sICA和stICA更加有用,并且stICA找到了与细胞周期最匹配的线性模式,在这三种ICA方法中。相较于sICA,潜在的关于与生物过程相对应的时间模式独立性的生成假设提供了更好的tICA和stICA性能。

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