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SMITE: an R/Bioconductor package that identifies network modules by integrating genomic and epigenomic information

机译:SMITE:R / Bioconductor软件包,通过整合基因组和表观基因组信息来识别网络模块

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Background The molecular assays that test gene expression, transcriptional, and epigenetic regulation are increasingly diverse and numerous. The information generated by each type of assay individually gives an insight into the state of the cells tested. What should be possible is to add the information derived from separate, complementary assays to gain higher-confidence insights into cellular states. At present, the analysis of multi-dimensional, massive genome-wide data requires an initial pruning step to create manageable subsets of observations that are then used for integration, which decreases the sizes of the intersecting data sets and the potential for biological insights. Our Significance-based Modules Integrating the Transcriptome and Epigenome (SMITE) approach was developed to integrate transcriptional and epigenetic regulatory data without a loss of resolution. Results SMITE combines p -values by accounting for the correlation between non-independent values within data sets, allowing genes and gene modules in an interaction network to be assigned significance values. The contribution of each type of genomic data can be weighted, permitting integration of individually under-powered data sets, increasing the overall ability to detect effects within modules of genes. We apply SMITE to a complex genomic data set including the epigenomic and transcriptomic effects of Toxoplasma gondii infection on human host cells and demonstrate that SMITE is able to identify novel subnetworks of dysregulated genes. Additionally, we show that SMITE outperforms Functional Epigenetic Modules (FEM), the current paradigm of using the spin-glass algorithm to integrate gene expression and epigenetic data. Conclusions SMITE represents a flexible, scalable tool that allows integration of transcriptional and epigenetic regulatory data from genome-wide assays to boost confidence in finding gene modules reflecting altered cellular states.
机译:背景技术用于测试基因表达,转录和表观遗传调控的分子测定法日益多样化且众多。每种化验类型产生的信息都可以让您深入了解被测细胞的状态。应该有可能添加从单独的补充测定中获得的信息,以获得对细胞状态的更高置信度的洞察力。目前,多维,海量全基因组数据的分析需要一个初始的修剪步骤,以创建可管理的观测子集,然后将其用于整合,这将减少相交数据集的大小和生物学见解的潜力。我们整合了转录组和表观基因组(SMITE)方法的基于显着性的模块被开发用于整合转录和表观遗传调控数据,而不会降低分辨率。结果SMITE通过考虑数据集内非独立值之间的相关性来组合p值,从而为相互作用网络中的基因和基因模块分配显着性值。可以加权每种基因组数据的贡献,从而允许整合各个功能不足的数据集,从而提高了检测基因模块内效应的整体能力。我们将SMITE应用于复杂的基因组数据集,包括弓形虫感染人类宿主细胞的表观基因组学和转录组学效应,并证明SMITE能够识别失调基因的新型子网络。此外,我们显示SMITE优于功能表观遗传模块(FEM),后者是使用自旋玻璃算法整合基因表达和表观遗传数据的当前范例。结论SMITE代表了一种灵活,可扩展的工具,该工具可整合来自全基因组测定的转录和表观遗传调控数据,从而增强人们对发现反映细胞状态改变的基因模块的信心。

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