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Row versus column correlations: avoiding the ecological fallacy in RNA/protein expression studies

机译:行与列的相关性:避免RNA /蛋白质表达研究中的生态谬误

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摘要

Biomedical researchers are often interested in computing the correlation between RNA and protein abundance. However, correlations can be computed between rows of a data matrix or between columns, and the results are not the same. The belief that these two types of correlation are estimating the same phenomenon is a special case of a well-known logical error called the ecological fallacy. In this article, we review different uses of correlation found in the literature, explain the differences between row and column correlations and argue that one of them has an undesirable interpretation in most applications. Through simulation studies and theoretical derivations, we show that the commonly used Pearson’s coefficient, computed from protein and transcript data from a single sample, is only loosely related to the biological correlation that most researchers will be interested in studying. Beyond our basic exploration of the ecological fallacy, we examine how correlations are affected by relative quantification proteomics data and common normalization procedures, finding that double normalization is capable of completely masking true correlative relationships. We conclude with guidelines for properly identifying and computing consistent correlation coefficients.
机译:生物医学研究人员通常对计算RNA与蛋白质丰度之间的相关性感兴趣。但是,可以计算数据矩阵的行之间或列之间的相关性,结果也不相同。相信这两种类型的相关性正在估计同一现象是一种众所周知的逻辑错误(称为生态谬误)的特例。在本文中,我们回顾了文献中相关性的不同用法,解释了行相关性和列相关性之间的差异,并认为其中之一在大多数应用中都有不良的解释。通过模拟研究和理论推导,我们表明,根据单个样品的蛋白质和转录本数据计算出的常用Pearson系数与大多数研究人员感兴趣的生物学相关性之间关系不大。除了我们对生态谬误的基础探索之外,我们还研究了相关性如何受到相对定量蛋白质组学数据和通用归一化程序的影响,发现双重归一化能够完全掩盖真正的关联关系。我们以正确识别和计算一致相关系数的准则作为结束。

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