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A Global Clustering Algorithm to Identify Long Intergenic Non-Coding RNA - with Applications in Mouse Macrophages

机译:识别长的基因间非编码RNA的全局聚类算法-在小鼠巨噬细胞中的应用

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摘要

Identification of diffuse signals from the chromatin immunoprecipitation and high-throughput massively parallel sequencing (ChIP-Seq) technology poses significant computational challenges, and there are few methods currently available. We present a novel global clustering approach to enrich diffuse CHIP-Seq signals of RNA polymerase II and histone 3 lysine 4 trimethylation (H3K4Me3) and apply it to identify putative long intergenic non-coding RNAs (lincRNAs) in macrophage cells. Our global clustering method compares favorably to the local clustering method SICER that was also designed to identify diffuse CHIP-Seq signals. The validity of the algorithm is confirmed at several levels. First, 8 out of a total of 11 selected putative lincRNA regions in primary macrophages respond to lipopolysaccharides (LPS) treatment as predicted by our computational method. Second, the genes nearest to lincRNAs are enriched with biological functions related to metabolic processes under resting conditions but with developmental and immune-related functions under LPS treatment. Third, the putative lincRNAs have conserved promoters, modestly conserved exons, and expected secondary structures by prediction. Last, they are enriched with motifs of transcription factors such as PU.1 and AP.1, previously shown to be important lineage determining factors in macrophages, and 83% of them overlap with distal enhancers markers. In summary, GCLS based on RNA polymerase II and H3K4Me3 CHIP-Seq method can effectively detect putative lincRNAs that exhibit expected characteristics, as exemplified by macrophages in the study.
机译:来自染色质免疫沉淀和高通量大规模并行测序(ChIP-Seq)技术的弥散信号的鉴定带来了巨大的计算挑战,目前几乎没有可用的方法。我们提出了一种新颖的全球聚类方法,以丰富RNA聚合酶II和组蛋白3赖氨酸4三甲基化(H3K4Me3)的弥散CHIP-Seq信号,并将其应用于鉴定巨噬细胞中假定的长基因间非编码RNA(lincRNA)。与局部聚类方法SICER相比,我们的全局聚类方法优越,局部聚类方法SICER旨在识别扩散的CHIP-Seq信号。该算法的有效性在几个层次上得到了证实。首先,在原代巨噬细胞中总共11个选定的推定lincRNA区域中,有8个对脂多糖(LPS)处理产生了反应,正如我们的计算方法所预测的那样。其次,最接近lincRNA的基因在静止条件下富含与代谢过程有关的生物学功能,但在LPS处理下具有与发育和免疫相关的功能。第三,推定的lncRNA具有保守的启动子,适度保守的外显子和预期的二级结构。最后,它们富含转录因子的基序,例如PU.1和AP.1,以前被证明是巨噬细胞中重要的谱系决定因子,其中83%与远端增强子标记重叠。总之,基于RNA聚合酶II和H3K4Me3 CHIP-Seq方法的GCLS可以有效地检测出具有预期特征的推定lincRNA,如本研究中的巨噬细胞所示。

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