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Rank-statistics based enrichment-site prediction algorithm developed for chromatin immunoprecipitation on chip experiments

机译:为芯片实验上的染色质免疫沉淀开发的基于秩统计的富集位置预测算法

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摘要

BackgroundHigh density oligonucleotide tiling arrays are an effective and powerful platform for conducting unbiased genome-wide studies. The ab initio probe selection method employed in tiling arrays is unbiased, and thus ensures consistent sampling across coding and non-coding regions of the genome. Tiling arrays are increasingly used in chromatin immunoprecipitation (IP) experiments (ChIP on chip). ChIP on chip facilitates the generation of genome-wide maps of in-vivo interactions between DNA-associated proteins including transcription factors and DNA. Analysis of the hybridization of an immunoprecipitated sample to a tiling array facilitates the identification of ChIP-enriched segments of the genome. These enriched segments are putative targets of antibody assayable regulatory elements. The enrichment response is not ubiquitous across the genome. Typically 5 to 10% of tiled probes manifest some significant enrichment. Depending upon the factor being studied, this response can drop to less than 1%. The detection and assessment of significance for interactions that emanate from non-canonical and/or un-annotated regions of the genome is especially challenging. This is the motivation behind the proposed algorithm.
机译:背景高密度寡核苷酸切片阵列是进行公正的全基因组研究的有效而强大的平台。平铺阵列中使用的从头开始探针选择方法无偏见,因此可确保在基因组的编码和非编码区域进行一致的采样。平铺阵列越来越多地用于染色质免疫沉淀(IP)实验(芯片上的ChIP)。芯片上的ChIP有助于生成与DNA相关的蛋白质(包括转录因子和DNA)之间的体内相互作用的全基因组图。免疫沉淀样品与平铺阵列杂交的分析有助于鉴定基因组中富含ChIP的片段。这些富集的区段是抗体可测定的调控元件的假定靶标。富集反应并非遍及基因组。通常,平铺探针的5%到10%表现出一些明显的富集。根据所研究的因素,此响应可能降至不到1%。从基因组的非规范和/或无注释的区域产生的相互作用的重要性的检测和评估尤其具有挑战性。这是提出算法的动机。

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