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Dynamic motif occupancy (DynaMO) analysis identifies transcription factors and their binding sites driving dynamic biological processes

机译:动态图案占用(发电机)分析识别驾驶动态生物过程的转录因子及其结合位点

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摘要

Biological processes are usually associated with genome-wide remodeling of transcription driven by transcription factors (TFs). Identifying key TFs and their spatiotemporal binding patterns are indispensable to understanding how dynamic processes are programmed. However, most methods are designed to predict TF binding sites only. We present a computational method, dynamic motif occupancy analysis (DynaMO), to infer important TFs and their spatiotemporal binding activities in dynamic biological processes using chromatin profiling data from multiple biological conditions such as time-course histone modification ChIP-seq data. In the first step, DynaMO predicts TF binding sites with a random forests approach. Next and uniquely, DynaMO infers dynamic TF binding activities at predicted binding sites using their local chromatin profiles from multiple biological conditions. Another landmark of DynaMO is to identify key TFs in a dynamic process using a clustering and enrichment analysis of dynamic TF binding patterns. Application of DynaMO to the yeast ultradian cycle, mouse circadian clock and human neural differentiation exhibits its accuracy and versatility. We anticipate DynaMO will be generally useful for elucidating transcriptional programs in dynamic processes.
机译:生物过程通常与转录因子(TFS)驱动的转录的宽的基因组重塑相关。识别密钥TFS及其时空绑定模式是不可或缺的,以了解动态过程如何编程。然而,大多数方法旨在仅预测TF结合站点。我们提出了一种计算方法,动态基序占用分析(发电机),在动态生物过程中使用来自多种生物学条件的染色质谱数据如时间课程组蛋白修改芯片数据的动态生物过程中推断出重要的TFS及其时空结合活动。在第一步中,发电机预测具有随机森林方法的TF结合位点。接下来且唯一的,发电机在预测的结合位点使用来自多种生物条件的局部染色质曲线的预测结合位点处的动态TF结合活性。发电机的另一个地标是使用动态TF绑定模式的聚类和浓缩分析来识别动态过程中的关键TFS。发电机在酵母超级循环中的应用,鼠标昼夜节日和人类神经分化表现出其精度和多功能性。我们预期发电机通常可用于阐明动态过程中的转录程序。

著录项

  • 来源
    《Nucleic Acids Research》 |2018年第1期|共16页
  • 作者单位

    NYU Langone Med Ctr Inst Syst Genet 550 1St Ave New York NY 10016 USA;

    Johns Hopkins Univ Bloomberg Sch Publ Hlth Dept Biostat Baltimore MD 21205 USA;

    NYU Langone Med Ctr Inst Syst Genet 550 1St Ave New York NY 10016 USA;

    Johns Hopkins Univ Bloomberg Sch Publ Hlth Dept Biostat Baltimore MD 21205 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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