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Integrative Analysis of Transcriptomic and Epigenomic Data to Reveal Regulation Patterns for BMD Variation

机译:转录组学和表观基因组数据的综合分析揭示BMD变异的调控模式

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摘要

Integration of multiple profiling data and construction of functional gene networks may provide additional insights into the molecular mechanisms of complex diseases. Osteoporosis is a worldwide public health problem, but the complex gene-gene interactions, post-transcriptional modifications and regulation of functional networks are still unclear. To gain a comprehensive understanding of osteoporosis etiology, transcriptome gene expression microarray, epigenomic miRNA microarray and methylome sequencing were performed simultaneously in 5 high hip BMD (Bone Mineral Density) subjects and 5 low hip BMD subjects. SPIA (Signaling Pathway Impact Analysis) and PCST (Prize Collecting Steiner Tree) algorithm were used to perform pathway-enrichment analysis and construct the interaction networks. Through integrating the transcriptomic and epigenomic data, firstly we identified 3 genes (FAM50A, ZNF473 and TMEM55B) and one miRNA (hsa-mir-4291) which showed the consistent association evidence from both gene expression and methylation data; secondly in network analysis we identified an interaction network module with 12 genes and 11 miRNAs including AKT1, STAT3, STAT5A, FLT3, hsa-mir-141 and hsa-mir-34a which have been associated with BMD in previous studies. This module revealed the crosstalk among miRNAs, mRNAs and DNA methylation and showed four potential regulatory patterns of gene expression to influence the BMD status. In conclusion, the integration of multiple layers of omics can yield in-depth results than analysis of individual omics data respectively. Integrative analysis from transcriptomics and epigenomic data improves our ability to identify causal genetic factors, and more importantly uncover functional regulation pattern of multi-omics for osteoporosis etiology.
机译:多个分析数据的整合和功能基因网络的构建可能为复杂疾病的分子机制提供更多见解。骨质疏松症是一个全球性的公共卫生问题,但复杂的基因-基因相互作用,转录后修饰和功能网络调节仍不清楚。为了全面了解骨质疏松症的病因,在5例高髋BMD(骨矿物质密度)受试者和5例低髋BMD受试者中同时进行了转录组基因表达微阵列,表观基因组miRNA微阵列和甲基化组测序。使用SPIA(信号通路影响分析)和PCST(奖赏收集斯坦纳树)算法进行通路富集分析并构建交互网络。通过整合转录组和表观基因组数据,我们首先鉴定了3个基因(FAM50A,ZNF473和TMEM55B)和一个miRNA(hsa-mir-4291),这些基因从基因表达和甲基化数据中均显示出一致的关联证据。其次,在网络分析中,我们确定了一个具有12个基因和11个miRNA的相互作用网络模块,包括AKT1,STAT3,STAT5A,FLT3,hsa-mir-141和hsa-mir-34a,它们在先前的研究中与BMD相关。该模块揭示了miRNA,mRNA和DNA甲基化之间的串扰,并显示了四种可能的基因表达调控模式来影响BMD状态。总之,与分别分析单个组学数据相比,多层组学的集成可以产生更深入的结果。从转录组学和表观基因组学数据的综合分析提高了我们识别因果遗传因素的能力,更重要的是揭示了骨质疏松病学的多组学功能调节模式。

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