基于位置数据的顺式调控变异判别检测

Yu Kawada, Y. Sakakibara
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引用次数: 1

摘要

转录因子与其DNA结合位点之间的相互作用对理解基因调控机制起着关键作用。最近的研究表明,由于顺式作用序列的差异,在转录水平上测量的调节变异在基因中存在功能多态性。这些调节变异体被认为有助于调节基因功能。然而,这种功能性顺式调控变异的计算识别比识别共识序列更具有挑战性,因为顺式调控变异与主要共识序列仅相差几个碱基,而它们对生物体表型具有重要影响。之前的研究都没有直接解决这个问题。我们提出了一种新的判别检测方法,基于全基因组定位数据,从阳性和阴性样本(转录因子结合和未结合基因的上游序列集)中精确识别转录因子结合位点及其功能变体。我们的目标是找到这样的判别子字符串,它能最好地解释位置数据,因为子字符串能精确地区分正样本和负样本,而不是删除在正样本中过度代表的子字符串。我们的方法包括两个步骤:首先,我们应用决策树学习方法来发现判别子串和它们之间的层次关系。其次,我们利用功能注释提取主基序和第二个基序作为顺式调控变体。我们对酿酒酵母的全基因组实验结果表明,我们的方法在检测实验验证的共识序列方面比现有的基序检测方法表现出明显更好的性能。此外,我们的方法还成功地发现了与不同功能注释基因相关的假定功能顺式调控变异的第二基序,并通过表达序列分析验证了这些变异的正确性。
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Discriminative Detection of Cis-Acting Regulatory Variation From Location Data
The interaction between transcription factors and their DNA binding sites plays a key role for understanding gene regulation mechanisms. Recent studies revealed the presence of ifunctional polymorphismi in genes that is dened as regulatory variation measured in transcription levels due to the cis-acting sequence differences. These regulatory variants are assumed to contribute to modulating gene functions. However, computational identica tions of such functional cis-regulatory variants is a much greater challenge than just identifying consensus sequences, because cis-regulatory variants differ by only a few bases from the main consensus sequences, while they have important consequences for organismal phenotype. None of the previous studies have directly addressed this problem. We propose a novel discriminative detection method for precisely identifying transcription factor binding sites and their functional variants from both positive and negative samples (sets of upstream sequences of both bound and unbound genes by a transcription factor) based on the genome-wide location data. Our goal is to nd such discriminative substrings that best explain the location data in the sense that the substrings precisely discriminate the positive samples from the negative ones rather than nding the substrings that are simply over-represented among the positive ones. Our method consists of two steps: First, we apply a decision tree learning method to discover discriminative substrings and a hierarchical relationship among them. Second, we extract a main motif and further a second motif as a cis-regulatory variant by utilizing functional annotations. Our genome-wide experimental results on yeast Saccharomyces cerevisiae show that our method presented signicantly better performances for detecting experimentally veried consensus sequences than current motif detecting methods. In addition, our method has successfully discovered second motifs of putative functional cis-regulatory variants which are associated with genes of different functional annotations, and the correctness of those variants have been veried by expression prole analyses.
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