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The corrected gene proximity map for analyzing the 3D genome organization using Hi-C data

机译:使用Hi-C数据分析3D基因组机构的校正基因邻近图

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Genome-wide ligation-based assays such as Hi-C provide us with an unprecedented opportunity to investigate the spatial organization of the genome. Results of a typical Hi-C experiment are often summarized in a chromosomal contact map, a matrix whose elements reflect the co-location frequencies of genomic loci. To elucidate the complex structural and functional interactions between those genomic loci, networks offer a natural and powerful framework. We propose a novel graph-theoretical framework, the Corrected Gene Proximity (CGP) map to study the effect of the 3D spatial organization of genes in transcriptional regulation. The starting point of the CGP map is a weighted network, the gene proximity map, whose weights are based on the contact frequencies between genes extracted from genome-wide Hi-C data. We derive a null model for the network based on the signal contributed by the 1D genomic distance and use it to “correct” the gene proximity for cell type 3D specific arrangements. The CGP map, therefore, provides a network framework for the 3D structure of the genome on a global scale. On human cell lines, we show that the CGP map can detect and quantify gene co-regulation and co-localization more effectively than the map obtained by raw contact frequencies. Analyzing?the expression pattern of metabolic pathways of two hematopoietic cell lines, we find that the relative positioning of the genes, as captured and quantified by the CGP, is highly correlated with their expression change. We further show that the CGP map can be used to form an inter-chromosomal proximity map that allows large-scale abnormalities, such as chromosomal translocations, to be identified. The Corrected Gene Proximity map is a map of the 3D structure of the genome on a global scale. It allows the simultaneous analysis of intra- and inter- chromosomal interactions and of gene co-regulation and co-localization more effectively than the map obtained by raw contact frequencies, thus revealing hidden associations between global spatial positioning and gene expression. The flexible graph-based formalism of the CGP map can be easily generalized to study any existing Hi-C datasets.
机译:基于基于结扎的基于结扎的测定,例如Hi-C为我们提供了前所未有的机会来研究基因组的空间组织。典型Hi-C实验的结果通常在染色体接触图中总结,该矩阵,其元素反映基因组基因座的共同位置频率。为了阐明这些基因组基因座之间的复杂结构和功能相互作用,网络提供自然和强大的框架。我们提出了一种新颖的图形理论框架,校正的基因接近度(CGP)地图,以研究基因3D空间组织在转录调节中的影响。 CGP地图的起点是加权网络,该基因邻近图,其权重基于从基因组的Hi-C数据中提取的基因之间的接触频率。基于由1D基因组距离所贡献的信号,我们为网络获得了空模型,并使用它以“校正”细胞类型3D特定布置的基因接近。因此,CGP地图为全球规模提供了基因组的3D结构的网络框架。在人细胞系上,我们表明CGP地图可以比通过原始接触频率获得的地图更有效地检测和量化基因共调节和共定位。分析?两种造血细胞系代谢途径的表达模式,发现基因的相对定位,如CGP捕获和量化,与其表达变化高度相关。我们进一步表明,CGP地图可用于形成允许校正染色体易位的校准间隔图,该临界邻近地图,例如校正染色体易位性。校正的基因接近图是全球范围内基因组的3D结构的图。它允许比通过原始接触频率获得的地图更有效地同时分析内和染色体间相互作用和基因共调控和共定位,从而揭示全局空间定位和基因表达之间的隐藏关联。 CGP地图的柔性图形形式主义可以很容易地推广以研究任何现有的Hi-C数据集。

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