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Predicting functional transcription factor binding through alignment-free and affinity-based analysis of orthologous promoter sequences.

机译:通过直系同源启动子序列的无比对和基于亲和力的分析预测功能性转录因子结合。

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The identification of transcription factor (TF) binding sites and the regulatory circuitry that they define is currently an area of intense research. Data from whole-genome chromatin immunoprecipitation (ChIP-chip), whole-genome expression microarrays, and sequencing of multiple closely related genomes have all proven useful. By and large, existing methods treat the interpretation of functional data as a classification problem (between bound and unbound DNA), and the analysis of comparative data as a problem of local alignment (to recover phylogenetic footprints of presumably functional elements). Both of these approaches suffer from the inability to model and detect low-affinity binding sites, which have recently been shown to be abundant and functional. RESULTS: We have developed a method that discovers functional regulatory targets of TFs by predicting the total affinity of each promoter for those factors and then comparing that affinity across orthologous promoters in closely related species. At each promoter, we consider the minimum affinity among orthologs to be the fraction of the affinity that is functional. Because we calculate the affinity of the entire promoter, our method is independent of local alignment. By comparing with functional annotation information and gene expression data in Saccharomyces cerevisiae, we have validated that this biophysically motivated use of evolutionary conservation gives rise to dramatic improvement in prediction of regulatory connectivity and factor-factor interactions compared to the use of a single genome. We propose novel biological functions for several yeast TFs, including the factors Snt2 and Stb4, for which no function has been reported. Our affinity-based approach towards comparative genomics may allow a more quantitative analysis of the principles governing the evolution of non-coding DNA. AVAILABILITY: The MatrixREDUCE software package is available from http://www.bussemakerlab.org/software/MatrixREDUCE. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
机译:转录因子(TF)结合位点及其定义的调节电路的鉴定目前是一个深入研究的领域。来自全基因组染色质免疫沉淀(ChIP芯片),全基因组表达微阵列以及多个紧密相关的基因组的测序数据都被证明是有用的。总体而言,现有方法将功能数据的解释视为分类问题(在结合的和未结合的DNA之间),将比较数据的分析视为局部比对问题(以恢复可能的功能元件的系统发育足迹)。这两种方法都因无法建模和检测低亲和力结合位点而受到困扰,这些位点最近已被证明具有丰富的功能。结果:我们开发了一种方法,该方法可通过预测每个启动子对那些因子的总亲和力,然后比较紧密相关物种中直系同源启动子的亲和力来发现TF的功能调控靶标。在每个启动子处,我们认为直系同源物之间的最小亲和力是功能性亲和力的一部分。因为我们计算了整个启动子的亲和力,所以我们的方法与局部比对无关。通过与酿酒酵母中的功能注释信息和基因表达数据进行比较,我们已经证实,与使用单个基因组相比,这种以生物物理学为动机的进化保守性使用在预测调控连接性和因子间相互作用方面产生了显着改善。我们提出了几种酵母TF的新型生物学功能,包括因子Snt2和Stb4,但尚未报道其功能。我们对比较基因组学的基于亲和力的方法可能允许对控制非编码DNA进化的原理进行更定量的分析。可用性:MatrixREDUCE软件包可从http://www.bussemakerlab.org/software/MatrixREDUCE获得。补充信息:补充数据可从Bioinformatics在线获得。

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