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Over-representation of correlation analysis (ORCA): a method for identifying associations between variable sets

机译:相关分析的过度表示(ORCA):一种用于识别变量集之间的关联的方法

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Motivation: Often during the analysis of biological data, it is of importance to interpret the correlation structure that exists between variables. Such correlations may reveal patterns of co-regulation that are indicative of biochemical pathways or common mechanisms of response to a related set of treatments. However, analyses of correlations are usually conducted by either subjective interpretation of the univariate covariance matrix or by applying multivariate modeling techniques, which do not take prior biological knowledge into account. Over-representation analysis (ORA) is a simple method for objectively deciding whether a set of variables of known or suspected biological relevance, such as a gene set or pathway, is more prevalent in a set of variables of interest than we expect by chance. However, ORA is usually applied to a set of variables differentiating a single experimental variable and does not take into account correlations.
机译:动机:通常在生物数据分析过程中,重要的是要解释变量之间存在的相关结构。这样的相关性可以揭示共同调节的模式,其指示对相关的一组治疗的生化途径或共同反应机制。但是,相关性分析通常是通过单变量协方差矩阵的主观解释或通过应用多变量建模技术来进行的,这些技术没有考虑先验生物学知识。超额代表分析(ORA)是一种客观确定目标变量中比已知变量更普遍的客观方法,该变量可以客观地确定一组已知或可疑的生物学相关性变量是否比我们偶然期望的简单。但是,ORA通常应用于区分单个实验变量的一组变量,并且没有考虑相关性。

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