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BayMeth: improved DNA methylation quantification for affinity capture sequencing data using a flexible Bayesian approach

机译:BayMeth:使用灵活的贝叶斯方法改进了用于亲和捕获测序数据的DNA甲基化定量

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Affinity capture of DNA methylation combined with high-throughput sequencing strikes a good balance between the high cost of whole genome bisulfite sequencing and the low coverage of methylation arrays. We present BayMeth, an empirical Bayes approach that uses a fully methylated control sample to transform observed read counts into regional methylation levels. In our model, inefficient capture can readily be distinguished from low methylation levels. BayMeth improves on existing methods, allows explicit modeling of copy number variation, and offers computationally efficient analytical mean and variance estimators. BayMeth is available in the Repitools Bioconductor package.
机译:DNA甲基化的亲和捕获与高通量测序相结合,在全基因组亚硫酸氢盐测序的高成本与甲基化阵列的低覆盖率之间取得了良好的平衡。我们介绍BayMeth,这是一种经验贝叶斯方法,它使用完全甲基化的对照样品将观察到的读数计数转换为区域甲基化水平。在我们的模型中,低效捕获很容易与低甲基化水平区分开。 BayMeth对现有方法进行了改进,允许对拷贝数变异进行显式建模,并提供计算有效的分析均值和方差估计量。 BayMeth可从Repitools Bioconductor软件包中获得。

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