Institute of Medical Informatics, University of Münster, Albert-Schweitzer-Campus 1, 48149 Münster, Germany.
Bioinformatics. 2013 Jul 1;29(13):1647-53. doi: 10.1093/bioinformatics/btt263. Epub 2013 May 8.
Bisulfite sequencing is currently the gold standard to obtain genome-wide DNA methylation profiles in eukaryotes. In contrast to the rapid development of appropriate pre-processing and alignment software, methods for analyzing the resulting methylation profiles are relatively limited so far. For instance, an appropriate pipeline to detect DNA methylation differences between cancer and control samples is still required.
We propose an algorithm that detects significantly differentially methylated regions in data obtained by targeted bisulfite sequencing approaches, such as reduced representation bisulfite sequencing. In a first step, this approach tests all target regions for methylation differences by taking spatial dependence into account. A false discovery rate procedure controls the expected proportion of incorrectly rejected regions. In a second step, the significant target regions are trimmed to the actually differentially methylated regions. This hierarchical procedure detects differentially methylated regions with increased power compared with existing methods.
R/Bioconductor package BiSeq.
Supplementary Data are available at Bioinformatics online.
亚硫酸氢盐测序目前是真核生物获得全基因组 DNA 甲基化图谱的金标准。与适当的预处理和对齐软件的快速发展相比,迄今为止,分析所得甲基化图谱的方法相对有限。例如,仍然需要一种合适的方法来检测癌症和对照样本之间的 DNA 甲基化差异。
我们提出了一种算法,用于检测靶向亚硫酸氢盐测序方法(如代表性降低的亚硫酸氢盐测序)获得的数据中显著的差异甲基化区域。在第一步中,该方法通过考虑空间相关性来测试所有目标区域的甲基化差异。错误发现率程序控制错误拒绝区域的预期比例。在第二步中,将显著的靶区域修剪到实际的差异甲基化区域。与现有方法相比,这种分层过程具有更高的检测差异甲基化区域的能力。
R/Bioconductor 包 BiSeq。
补充数据可在“Bioinformatics”在线获取。