Department of Biostatistics & Computational Biology, Dana-Farber Cancer Institute, 450 Brookline Ave, Boston, MA, USA and Department of Biostatistics, Harvard T.H. Chan School of Public Health, 677 Huntington Ave, Boston, MA, USA.
Novartis, Inorbit Mall Rd, Silpa Gram Craft Village, HITEC City, Hyderabad, Telangana, India.
Biostatistics. 2019 Jul 1;20(3):367-383. doi: 10.1093/biostatistics/kxy007.
With recent advances in sequencing technology, it is now feasible to measure DNA methylation at tens of millions of sites across the entire genome. In most applications, biologists are interested in detecting differentially methylated regions, composed of multiple sites with differing methylation levels among populations. However, current computational approaches for detecting such regions do not provide accurate statistical inference. A major challenge in reporting uncertainty is that a genome-wide scan is involved in detecting these regions, which needs to be accounted for. A further challenge is that sample sizes are limited due to the costs associated with the technology. We have developed a new approach that overcomes these challenges and assesses uncertainty for differentially methylated regions in a rigorous manner. Region-level statistics are obtained by fitting a generalized least squares regression model with a nested autoregressive correlated error structure for the effect of interest on transformed methylation proportions. We develop an inferential approach, based on a pooled null distribution, that can be implemented even when as few as two samples per population are available. Here, we demonstrate the advantages of our method using both experimental data and Monte Carlo simulation. We find that the new method improves the specificity and sensitivity of lists of regions and accurately controls the false discovery rate.
随着测序技术的最新进展,现在已经可以在整个基因组中测量数亿个位点的 DNA 甲基化。在大多数应用中,生物学家有兴趣检测差异甲基化区域,这些区域由多个具有不同甲基化水平的位点组成。然而,当前用于检测这些区域的计算方法无法提供准确的统计推断。报告不确定性的主要挑战在于,需要对涉及检测这些区域的全基因组扫描进行解释。另一个挑战是,由于技术相关成本,样本量有限。我们已经开发了一种新方法,可以克服这些挑战,并以严格的方式评估差异甲基化区域的不确定性。通过为感兴趣的效果拟合具有嵌套自回归相关误差结构的广义最小二乘回归模型,可以获得区域级别的统计信息。我们开发了一种基于汇总零假设分布的推断方法,即使每个群体只有两个样本也可以实现。在这里,我们使用实验数据和蒙特卡罗模拟演示了我们方法的优势。我们发现,新方法提高了区域列表的特异性和敏感性,并准确控制了假发现率。