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Modeling within-motif dependence for transcription factor binding site predictions

机译:为转录因子结合位点预测建模基序内依赖性

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摘要

Motivation: The position-specific weight matrix (PWM) model, which assumes that each position in the DNA site contributes independently to the overall protein–DNA interaction, has been the primary means to describe transcription factor binding site motifs. Recent biological experiments, however, suggest that there exists interdependence among positions in the binding sites. In order to exploit this interdependence to aid motif discovery, we extend the PWM model to include pairs of correlated positions and design a Markov chain Monte Carlo algorithm to sample in the model space. We then combine the model sampling step with the Gibbs sampling framework for de novo motif discoveries. Results: Testing on experimentally validated binding sites, we find that about 25% of the transcription factor binding motifs show significant within-site position correlations, and 80% of these motif models can be improved by considering the correlated positions. Using both simulated data and real promoter sequences, we show that the new de novo motif-finding algorithm can infer the true correlated position pairs accurately and is more precise in finding putative transcription factor binding sites than the standard Gibbs sampling algorithms.
机译:动机:位置特异性权重矩阵(PWM)模型是描述转录因子结合位点基序的主要手段,该模型假定DNA位点中的每个位置独立地影响蛋白质与DNA的整体相互作用。然而,最近的生物学实验表明,结合位点之间的位置之间存在相互依赖性。为了利用这种相互依赖关系来帮助发现主题,我们将PWM模型扩展为包括相关位置对,并设计了一个马尔可夫链蒙特卡罗算法来在模型空间中进行采样。然后,我们将模型采样步骤与Gibbs采样框架相结合,以进行从头发现主题。结果:在经过实验验证的结合位点上进行测试,我们发现大约25%的转录因子结合基序显示出明显的位点内位置相关性,而通过考虑相关位置可以改善80%的这些基序模型。使用模拟数据和真实启动子序列,我们表明,新的从头基序查找算法可以准确地推断出真实的相关位置对,并且比标准的吉布斯采样算法更精确地找到推定的转录因子结合位点。

著录项

  • 来源
    《Bioinformatics》 |2004年第6期|p. 909-916|共8页
  • 作者

    Qing Zhou; Jun S. Liu;

  • 作者单位

    Department of Statistics, Harvard University, 1 Oxford ST, Cambridge, MA 02138, USA;

    Department of Statistics, Harvard University, 1 Oxford ST, Cambridge, MA 02138, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物科学;生物工程学(生物技术);
  • 关键词

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