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A tensor higher-order singular value decomposition for integrative analysis of DNA microarray data from different studies

机译:张量高阶奇异值分解,可对来自不同研究的DNA微阵列数据进行综合分析

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We describe the use of a higher-order singular value decomposition (HOSVD) in transforming a data tensor of genes × "x-settings," that is, different settings of the experimental variable x × "y-settings," which tabulates DNA microarray data from different studies, to a "core tensor" of "eigenarrays" × "x-eigengenes" × "y-eigengenes." Reformulating this multilinear HOSVD such that it decomposes the data tensor into a linear superposition of all outer products of an eigenarray, an x- and a y-eigengene, that is, rank-1 "subtensors," we define the significance of each subtensor in terms of the fraction of the overall information in the data tensor that it captures. We illustrate this HOSVD with an integration of genome-scale mRNA expression data from three yeast cell cycle time courses, two of which are under exposure to either hydrogen peroxide or menadione. We find that significant subtensors represent independent biological programs or experimental phenomena. The picture that emerges suggests that the conserved genes YKU70, MRE11, AIF1, and ZWF1, and the processes of retrotransposition, apoptosis, and the oxidative pentose phosphate pathway that these genes are involved in, may play significant, yet previously unrecognized, roles in the differential effects of hydrogen peroxide and menadione on cell cycle progression. A genome-scale correlation between DNA replication initiation and RNA transcription, which is equivalent to a recently discovered correlation and might be due to a previously unknown mechanism of regulation, is independently uncovered.
机译:我们描述了使用高阶奇异值分解(HOSVD)来转换基因ד x-settings”(即实验变量xד y-settings”的不同设置)的数据张量,该列表将DNA微阵列制成表格来自不同研究的数据,成为“特征数组”ד x-本征基因”ד y-本征基因”的“核心张量”。重新构造此多线性HOSVD,以使其将数据张量分解为特征数组,x和y特征基因的所有外部乘积(即秩1“次张量”)的线性叠加,我们定义了每个次张量的重要性。它捕获的数据张量中的整体信息的分数的项。我们用来自三个酵母细胞周期时间过程的基因组规模的mRNA表达数据的整合来说明此HOSVD,其中两个处于过氧化氢或甲萘醌下。我们发现重要的次要代表独立的生物学程序或实验现象。出现的图片表明保守基因YKU70,MRE11,AIF1和ZWF1,以及这些基因所参与的逆转座子,细胞凋亡和氧化戊糖磷酸途径的过程,可能在其中起着重要但尚未被认识的作用。过氧化氢和甲萘醌对细胞周期进程的不同影响。独立发现了DNA复制起始和RNA转录之间的基因组规模相关性,该相关性与最近发现的相关性等效,并且可能是由于以前未知的调节机制所致。

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