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Comparison of Profile Similarity Measures for Genetic Interaction Networks

机译:遗传交互网络的轮廓相似度比较

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摘要

Analysis of genetic interaction networks often involves identifying genes with similar profiles, which is typically indicative of a common function. While several profile similarity measures have been applied in this context, they have never been systematically benchmarked. We compared a diverse set of correlation measures, including measures commonly used by the genetic interaction community as well as several other candidate measures, by assessing their utility in extracting functional information from genetic interaction data. We find that the dot product, one of the simplest vector operations, outperforms most other measures over a large range of gene pairs. More generally, linear similarity measures such as the dot product, Pearson correlation or cosine similarity perform better than set overlap measures such as Jaccard coefficient. Similarity measures that involve L2-normalization of the profiles tend to perform better for the top-most similar pairs but perform less favorably when a larger set of gene pairs is considered or when the genetic interaction data is thresholded. Such measures are also less robust to the presence of noise and batch effects in the genetic interaction data. Overall, the dot product measure performs consistently among the best measures under a variety of different conditions and genetic interaction datasets.
机译:遗传相互作用网络的分析通常涉及鉴定具有相似谱的基因,这通常表示共同的功能。尽管已在此情况下应用了几种配置文件相似性度量,但从未对其进行系统地基准测试。我们通过评估它们在从遗传相互作用数据中提取功能信息的效用,比较了各种相关度量,包括遗传相互作用社区常用的度量以及其他几种候选度量。我们发现,点乘积是最简单的向量运算之一,在大范围的基因对上胜过大多数其他措施。更一般而言,线性相似性度量(例如点积,Pearson相关性或余弦相似性)比设置重叠度量(例如Jaccard系数)的效果更好。涉及概貌的L2归一化的相似性度量倾向于在最顶层的相似对中表现更好,但在考虑更多的基因对集合或遗传相互作用数据受到阈值时,表现较差。这样的措施对于遗传相互作用数据中噪声和批次效应的存在也不太可靠。总体而言,点积测量在各种不同条件和遗传相互作用数据集的最佳测量中始终保持一致。

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