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A novel information contents based similarity metric for comparing TFBS motifs

机译:一种新颖的基于信息内容的相似度度量,用于比较TFBS主题

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摘要

Identifying binding sites recognized by transcription factors (TFs) is one of major challenges to decipher complex genetic regulatory networks encoded in a genome. A set of binding sites recognized by the same TF, called a motif, can be accurately represented by a position frequency matrix (PFM) or a position-specific scoring matrix (PSSM). Very often, we need to compare motifs when searching for similar motifs in a motif database for a query motif, or clustering motifs possibly recognized by the same TF. In this paper, we have designed a novel metric, called SPIC (Similarity between Positions with Information Contents), for quantifying the similarity between two motifs using their PFMs, PSSMs, and column information contents, and demonstrated that this metric outperforms the other state-of-the-art methods for clustering motifs of the same TF and differentiating motifs of different TFs.
机译:识别被转录因子(TF)识别的结合位点是破解基因组中编码的复杂遗传调控网络的主要挑战之一。可以通过位置频率矩阵(PFM)或位置特定的得分矩阵(PSSM)准确表示一组由同一TF识别的结合位点,称为基序。很多时候,当在主题数据库中搜索查询主题的相似主题或将可能由同一TF识别的主题聚类时,我们需要比较主题。在本文中,我们设计了一种新颖的度量标准,称为SPIC(信息内容位置之间的相似性),用于使用其PFM,PSSM和列信息内容量化两个主题之间的相似性,并证明该度量标准优于其他状态-聚相同TF的基元和区分不同TF的基元的最新方法。

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