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Transcription Factor Binding Profiles Reveal Cyclic Expression of Human Protein-coding Genes and Non-coding RNAs

机译:转录因子结合配置文件揭示人类蛋白编码基因和非编码RNA的循环表达。

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Cell cycle is a complex and highly supervised process that must proceed with regulatory precision to achieve successful cellular division. Despite the wide application, microarray time course experiments have several limitations in identifying cell cycle genes. We thus propose a computational model to predict human cell cycle genes based on transcription factor (TF) binding and regulatory motif information in their promoters. We utilize ENCODE ChIP-seq data and motif information as predictors to discriminate cell cycle against non-cell cycle genes. Our results show that both the trans- TF features and the cis- motif features are predictive of cell cycle genes, and a combination of the two types of features can further improve prediction accuracy. We apply our model to a complete list of GENCODE promoters to predict novel cell cycle driving promoters for both protein-coding genes and non-coding RNAs such as lincRNAs. We find that a similar percentage of lincRNAs are cell cycle regulated as protein-coding genes, suggesting the importance of non-coding RNAs in cell cycle division. The model we propose here provides not only a practical tool for identifying novel cell cycle genes with high accuracy, but also new insights on cell cycle regulation by TFs and cis-regulatory elements.
机译:细胞周期是一个复杂且受到高度监督的过程,必须以调节精度进行以实现成功的细胞分裂。尽管应用广泛,但微阵列时程实验在鉴定细胞周期基因方面有一些局限性。因此,我们提出了一种基于转录因子(TF)结合和其启动子中的调控基序信息来预测人类细胞周期基因的计算模型。我们利用ENCODE ChIP-seq数据和基序信息作为预测因子,以区分非细胞周期基因与细胞周期。我们的结果表明,反式TF特征和顺式基序特征均可预测细胞周期基因,并且两种特征的组合可进一步提高预测准确性。我们将模型应用于GENCODE启动子的完整列表,以预测蛋白质编码基因和非编码RNA(如lincRNA)的新型细胞周期驱动启动子。我们发现lincRNAs的百分比类似蛋白编码基因一样受到细胞周期调节,这表明非编码RNA在细胞周期分裂中的重要性。我们在此提出的模型不仅提供了一种实用的工具,可以高度准确地鉴定新型细胞周期基因,而且还提供了有关利用TF和顺式调控元件调控细胞周期的新见解。

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