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Graph-Driven Features Extraction from Microarray Data using Diffusion Kernels and Kernel CCA

机译:使用扩散核和内核CCA从微阵列数据提取图形驱动的功能

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We present an algorithm to extract features from high-dimensional gene expression profiles, based on the knowledge of a graph which links together genes known to participate to successive reactions in metabolic pathways. Motivated by the intuition that biologically relevant features are likely to exhibit smoothness with respect to the graph topology, the algorithm involves encoding the graph and the set of expression profiles into kernel functions, and performing a generalized form of canonical correlation analysis in the corresponding reproducible kernel Hilbert spaces. Function prediction experiments for the genes of the yeast S. Cerevisiae validate this approach by showing a consistent increase in performance when a state-of-the-art classifier uses the vector of features instead of the original expression profile to predict the functional class of a gene.
机译:我们提出了一种算法,用于基于将已知参与代谢途径中的连续反应的基因链接在一起的图表的图表中提取高维基因表达谱的特征。通过直觉的激励,即生物学相关特征可能表现出相对于图形拓扑结构的平滑性,该算法涉及将图形和一组表达式配置文件编码为内核功能,并在相应的可再现内核中执行广义形式的规范相关分析形式希尔伯特空间。酵母S.酿酒酵母基因的功能预测实验通过在最先进的分类器使用特征矢量而不是原始表达式配置文件来预测A的功能类时,通过显示始终如一地验证这种方法来验证这种方法。基因。

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