首页> 外文会议>Asia-Pacific Bioinformatics Conference >A full Bayesian partition model for identifying ^ hypo- and hyper-methylated loci from single nucleotide resolution sequencing data
【24h】

A full Bayesian partition model for identifying ^ hypo- and hyper-methylated loci from single nucleotide resolution sequencing data

机译:来自单核苷酸分辨率测序数据的鉴定^β和超甲基化基因座的全贝叶斯分区模型

获取原文

摘要

Backgroud: DNA methylation is an epigenetic modification that plays important roles on gene regulation. Study of whole-genome bisulfite sequencing and reduced representation bisulfite sequencing brings the availability of DNA methylation at single CpGresolution. The main interest of study on DNA methylation data is to test the methylation difference under two conditions of biological samples. However, the high cost and complexity of this sequencing experiment limits the number of biological replicates, which brings challenges to the development of statistical methods.Results: Bayesian modeling is well known to be able to borrow strength across the genome, and hence is a powerfi tool for high-dimensional- low-sample-size data. In order to provide accurate identification of methylation loci, especially for low coveragedata, we propose a full Bayesian partition model to detect differentially methylated loci under two conditions of scientific study. Since hypo-methylation and hyper-methylation have distinct biological implication, it is desirable to differentiate thesetwo types of differential methylation. The advantage of our Bayesian model is that it can produce one-step output of each locus being either equal-, hypo- or hyper-methylated locus without further post-hoc analysis. An R package named as MethyBayes implementing the proposed full Bayesian partition model will be submitted to the bioconductor website upon publication of the manuscript.Conclusions: The proposed full Bayesian partition model outperforms existing methods in terms of power while maintaining a low false discovery rate based on simulation studies and real data analysis including bioinformatics analysis.
机译:Backgroud:DNA甲基化是一种表观遗传改性,其在基因调节中起重要作用。全基因组亚硫酸氢盐测序和降低表示亚硫酸氢盐测序为单一CPGRES求解的DNA甲基化的可用性。研究DNA甲基化数据的主要兴趣是在生物样品的两个条件下测试甲基化差异。然而,该测序实验的高成本和复杂性限制了生物复制的数量,这给统计方法带来了挑战。结果:贝叶斯建模是能够借用整个基因组的力量,因此是一个Powerfi高维 - 低样本尺寸数据的工具。为了提供准确鉴定甲基化基因座,特别是对于低覆盖物,我们提出了一种完整的贝叶斯分区模型,以在科学研究的两个条件下检测差异甲基化基因座。由于哌甲基化和超甲基化具有不同的生物意义,因此希望将差异的差异甲基化分化为不同。我们贝叶斯模型的优势在于它可以产生每种轨迹的一步输出,无需进一步的HOC分析而是等于,低甲基化基因座。一个R包命名为MethyBayes实现所提出的完整贝叶斯分区模型,将在发布稿件时向Biocumons网站提交给Biocumons网站。结论:提出的全贝叶斯分区模型在电力方面优于现有方法,同时保持基于的低假发现率模拟研究与实际数据分析,包括生物信息学分析。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号