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首页> 外文期刊>Nucleic acids research >Identification of co-occurring transcription factor binding sites from DNA sequence using clustered position weight matrices
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Identification of co-occurring transcription factor binding sites from DNA sequence using clustered position weight matrices

机译:使用聚集的位置权重矩阵从DNA序列中识别共现的转录因子结合位点

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Accurate prediction of transcription factor binding sites (TFBSs) is a prerequisite for identifying cis-regulatory modules that underlie transcriptional regulatory circuits encoded in the genome. Here, we present a computational framework for detecting TFBSs, when multiple position weight matrices (PWMs) for a transcription factor are available. Grouping multiple PWMs of a transcription factor (TF) based on their sequence similarity improves the specificity of TFBS prediction, which was evaluated using multiple genome-wide ChIP-Seq data sets from 26 TFs. The Z-scores of the area under a receiver operating characteristic curve (AUC) values of 368 TFs were calculated and used to statistically identify co-occurring regulatory motifs in the TF bound ChIP loci. Motifs that are co-occurring along with the empirical bindings of E2F, JUN or MYC have been evaluated, in the basal or stimulated condition. Results prove our method can be useful to systematically identify the co-occurring motifs of the TF for the given conditions.
机译:准确预测转录因子结合位点(TFBS)是确定顺式调控模块的先决条件,而顺式调控模块是基因组中编码的转录调控电路的基础。在这里,当转录因子的多个位置权重矩阵(PWM)可用时,我们提出了一种用于检测TFBS的计算框架。根据序列相似性将转录因子(TF)的多个PWM分组,可以提高TFBS预测的特异性,该预测是使用来自26个TF的多个全基因组ChIP-Seq数据集进行评估的。计算了368个TF的受体工作特征曲线(AUC)值下区域的Z值,并将其用于统计识别TF结合的ChIP位点中同时出现的调控基序。与E2F,JUN或MYC的经验结合共同出现的母题已在基础或刺激条件下进行了评估。结果证明,在给定条件下,我们的方法可用于系统地识别TF的同时出现的基序。

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