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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >New variable selection strategy for analysis of high-dimensional DNA methylation data
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New variable selection strategy for analysis of high-dimensional DNA methylation data

机译:高维DNA甲基化数据分析的新变量选择策略

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摘要

In genetic association studies, regularization methods are often used due to their computational efficiency for analysis of high-dimensional genomic data. DNA methylation data generated from Infinium HumanMethylation450 BeadChip Kit have a group structure where an individual gene consists of multiple Cytosine-phosphate-Guanine (CpG) sites. Consequently, group-based regularization can precisely detect outcome-related CpG sites. Representative examples are sparse group lasso (SGL) and network-based regularization. The former is powerful when most of the CpG sites within the same gene are associated with a phenotype outcome. In contrast, the latter is preferred when only a few of the CpG sites within the same gene are related to the outcome. In this paper, we propose new variable selection strategy based on a selection probability that measures selection frequency of individual variables selected by both SGL and network-based regularization. In extensive simulation study, we demonstrated that the proposed strategy can show relatively outstanding selection performance under any situation, compared with both SGL and network-based regularization. Also, we applied the proposed strategy to identify differentially methylated CpG sites and their corresponding genes from ovarian cancer data.
机译:在基因关联研究中,由于正则化方法在高维基因组数据分析中的计算效率,经常使用正则化方法。Infinium HumanMethylization450 BeadChip试剂盒产生的DNA甲基化数据具有一个群体结构,其中单个基因由多个磷酸胞嘧啶鸟嘌呤(CpG)位点组成。因此,基于组的正则化可以精确检测与结果相关的CpG位点。典型的例子是稀疏群套索(SGL)和基于网络的正则化。当同一基因内的大多数CpG位点与表型结果相关时,前者是有效的。相比之下,当同一基因中只有少数CpG位点与结果相关时,后者是首选。在本文中,我们提出了一种新的基于选择概率的变量选择策略,该策略可以测量SGL和基于网络的正则化选择的单个变量的选择频率。在大量的仿真研究中,我们证明了与SGL和基于网络的正则化相比,该策略在任何情况下都能表现出相对优异的选择性能。此外,我们还应用所提出的策略从卵巢癌数据中识别差异甲基化CpG位点及其相应的基因。

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