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Utilizing gene pair orientations for HMM-based analysis of promoter array ChIP-chip data

机译:利用基因对方向进行基于HMM的启动子阵列ChIP芯片数据分析

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摘要

>Motivation: Array-based analysis of chromatin immunoprecipitation (ChIP-chip) data is a powerful technique for identifying DNA target regions of individual transcription factors. The identification of these target regions from comprehensive promoter array ChIP-chip data is challenging. Here, three approaches for the identification of transcription factor target genes from promoter array ChIP-chip data are presented. We compare (i) a standard log-fold-change analysis (LFC); (ii) a basic method based on a Hidden Markov Model (HMM); and (iii) a new extension of the HMM approach to an HMM with scaled transition matrices (SHMM) that incorporates information about the relative orientation of adjacent gene pairs on DNA.>Results: All three methods are applied to different promoter array ChIP-chip datasets of the yeast Saccharomyces cerevisiae and the important model plant Arabidopsis thaliana to compare the prediction of transcription factor target genes. In the context of the yeast cell cycle, common target genes bound by the transcription factors ACE2 and SWI5, and ACE2 and FKH2 are identified and evaluated using the Saccharomyces Genome Database. Regarding A.thaliana, target genes of the seed-specific transcription factor ABI3 are predicted and evaluate based on publicly available gene expression profiles and transient assays performed in the wet laboratory experiments. The application of the novel SHMM to these two different promoter array ChIP-chip datasets leads to an improved identification of transcription factor target genes in comparison to the two standard approaches LFC and HMM.>Availability: The software of LFC, HMM and SHMM, the ABI3 ChIP–chip dataset, and can be downloaded from .>Contact:
机译:>动机:基于阵列的染色质免疫沉淀(ChIP芯片)数据分析是一种用于识别单个转录因子DNA靶区域的强大技术。从全面的启动子阵列芯片芯片数据中识别这些目标区域具有挑战性。在这里,提出了三种从启动子阵列ChIP芯片数据中识别转录因子靶基因的方法。我们比较(i)标准对数变化分析(LFC); (ii)基于隐马尔可夫模型(HMM)的基本方法; (iii)将HMM方法新扩展为具有比例转换矩阵(SHMM)的HMM,其中包含有关DNA上相邻基因对的相对方向的信息。>结果:这三种方法均适用于酵母Saccharomyces cerevisiae和重要模型植物拟南芥的不同启动子阵列ChIP芯片数据集,以比较转录因子靶基因的预测。在酵母细胞周期的背景下,使用酵母菌基因组数据库鉴定并评估与转录因子ACE2和SWI5以及ACE2和FKH2结合的常见靶基因。关于拟南芥,基于公开可用的基因表达谱和在湿实验室实验中进行的瞬时测定,预测并评估了种子特异性转录因子ABI3的靶基因。与两种标准方法LFC和HMM相比,将新颖的SHMM应用于这两个不同的启动子阵列ChIP-chip数据集可改善对转录因子靶基因的识别。>可用性: ,HMM和SHMM(ABI3 ChIP芯片数据集),并且可以从以下位置下载。>联系方式:

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