Identification of thresholds for dichotomizing DNA methylation data.

Yihua Liu, Yuan Ji, Peng Qiu
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引用次数: 12

Abstract

: DNA methylation plays an important role in many biological processes by regulating gene expression. It is commonly accepted that turning on the DNA methylation leads to silencing of the expression of the corresponding genes. While methylation is often described as a binary on-off signal, it is typically measured using beta values derived from either microarray or sequencing technologies, which takes continuous values between 0 and 1. If we would like to interpret methylation in a binary fashion, appropriate thresholds are needed to dichotomize the continuous measurements. In this paper, we use data from The Cancer Genome Atlas project. For a total of 992 samples across five cancer types, both methylation and gene expression data are available. A bivariate extension of the StepMiner algorithm is used to identify thresholds for dichotomizing both methylation and expression data. Hypergeometric test is applied to identify CpG sites whose methylation status is significantly associated to silencing of the expression of their corresponding genes. The test is performed on either all five cancer types together or individual cancer types separately. We notice that the appropriate thresholds vary across different CpG sites. In addition, the negative association between methylation and expression is highly tissue specific.

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鉴定二分类DNA甲基化数据的阈值。
DNA甲基化通过调控基因表达在许多生物过程中起着重要作用。人们普遍认为,开启DNA甲基化会导致相应基因的表达沉默。虽然甲基化通常被描述为二进制开关信号,但它通常是使用来自微阵列或测序技术的β值来测量的,其值在0和1之间连续。如果我们想以二元方式解释甲基化,则需要适当的阈值来对连续测量进行二分类。在本文中,我们使用来自癌症基因组图谱项目的数据。对于五种癌症类型的992个样本,甲基化和基因表达数据都是可用的。一个二元扩展的StepMiner算法被用来识别二分类甲基化和表达数据的阈值。超几何测试用于鉴定甲基化状态与其相应基因表达沉默显著相关的CpG位点。该测试可以对所有五种癌症类型一起进行,也可以单独对个别癌症类型进行。我们注意到适当的阈值在不同的CpG位点有所不同。此外,甲基化和表达之间的负相关是高度组织特异性的。
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