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Identification of functionally methylated regions based on discriminant analysis through integrating methylation and gene expression data

机译:通过区分甲基化和基因表达数据的判别分析,识别功能性甲基化区域

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摘要

DNA methylation is essential not only in cellular differentiation but also in diseases. Identification of differentially methylated patterns between case and control groups is important in understanding the mechanism and possible functionality of complex diseases. We propose a method to find possible functionally methylated regions which not only are differentially methylated but also have an effect on gene expression. It integrates methylation and gene expression data and is based on distance discriminant analysis (DDA). In the procedure of identifying differentially methylated regions (DMRs), we do not need to cluster methylation sites or partition the genome in advance. Therefore, the identified DMRs have a larger coverage than those of bump hunting and Ong's methods. Furthermore, through incorporating gene expression data as a complementary source, whether these DMRs are functional is determined through estimating the difference of the corresponding genes. Through a comparison of our approach with bump hunting and Ong's methods for simulation data, it is shown that our method is more powerful in identifying DMRs which have a larger distance in the genome, or only consist of a few sites and have higher sensitivity and specificity. Also, our method is more robust to heterogeneity of data. Applied to different real datasets, we find that most of the functional DMRs are hyper-methylated and located at CpG rich regions (e.g. islands, TSS200 and TSS1500), consistent with the fact that the methylation levels of CpG islands are higher in tumors than normal. Through comparing and analyzing the results of different datasets, we find that the change of methylation in some regions may be related to diseases through changing expression of the corresponding genes, and show the effectiveness of our method.
机译:DNA甲基化不仅在细胞分化中而且在疾病中都至关重要。病例组和对照组之间甲基化差异模式的识别对于理解复杂疾病的机制和可能的功能很重要。我们提出了一种寻找可能的功能甲基化区域的方法,该区域不仅被差异甲基化,而且对基因表达有影响。它整合了甲基化和基因表达数据,并且基于距离判别分析(DDA)。在识别差异甲基化区域(DMR)的过程中,我们不需要预先对甲基化位点进行聚类或对基因组进行分区。因此,所识别的DMR比起颠簸搜索和Ong的方法具有更大的覆盖范围。此外,通过合并基因表达数据作为补充来源,通过估计相应基因的差异来确定这些DMR是否起作用。通过将我们的方法与颠簸狩猎方法和Ong的模拟数据方法进行比较,结果表明,我们的方法在识别基因组中距离较大或仅由几个位点组成且灵敏度和特异性更高的DMR时更有效。 。而且,我们的方法对于数据的异构性更加鲁棒。应用于不同的真实数据集,我们发现大多数功能性DMR都是超甲基化的,并且位于CpG丰富的区域(例如,孤岛,TSS200和TSS1500),这与肿瘤中CpG孤岛的甲基化水平高于正常水平这一事实相吻合。 。通过比较和分析不同数据集的结果,我们发现某些区域的甲基化变化可能通过改变相应基因的表达而与疾病有关,从而证明了该方法的有效性。

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  • 来源
    《Molecular BioSystems》 |2015年第7期|1786-1793|共8页
  • 作者

    Yuanyuan Zhang; Junying Zhang;

  • 作者单位

    School of Computer Science and Technology, Xidian University, Xi'an 710071, Shaanxi, China;

    School of Computer Science and Technology, Xidian University, Xi'an 710071, Shaanxi, China;

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