CAS Key Laboratory of Computational Biology, CAS-MPG Partner Institute for Computational Biology, Shanghai Institute of Nutrition and Health, Shanghai Institutes for Biological Sciences, University of Chinese Academy of Sciences, Chinese Academy of Sciences, Shanghai, China.
Altius Institute for Biomedical Sciences, Seattle, WA, USA.
Nat Methods. 2018 Dec;15(12):1059-1066. doi: 10.1038/s41592-018-0213-x. Epub 2018 Nov 30.
An outstanding challenge of epigenome-wide association studies (EWASs) performed in complex tissues is the identification of the specific cell type(s) responsible for the observed differential DNA methylation. Here we present a statistical algorithm called CellDMC ( https://github.com/sjczheng/EpiDISH ), which can identify differentially methylated positions and the specific cell type(s) driving the differential methylation. We validated CellDMC on in silico mixtures of DNA methylation data generated with different technologies, as well as on real mixtures from epigenome-wide association and cancer epigenome studies. CellDMC achieved over 90% sensitivity and specificity in scenarios where current state-of-the-art methods did not identify differential methylation. By applying CellDMC to an EWAS performed in buccal swabs, we identified smoking-associated differentially methylated positions occurring in the epithelial compartment, which we validated in smoking-related lung cancer. CellDMC may be useful in the identification of causal DNA-methylation alterations in disease.
在复杂组织中进行的全基因组关联研究(EWAS)的一个突出挑战是确定导致观察到的 DNA 甲基化差异的特定细胞类型。在这里,我们提出了一种名为 CellDMC(https://github.com/sjczheng/EpiDISH)的统计算法,它可以识别差异甲基化位置和驱动差异甲基化的特定细胞类型。我们在使用不同技术生成的 DNA 甲基化数据的虚拟混合物以及来自全基因组关联和癌症表观基因组研究的真实混合物上验证了 CellDMC。在当前最先进的方法无法识别差异甲基化的情况下,CellDMC 在 90%以上的情况下实现了高灵敏度和特异性。通过将 CellDMC 应用于在口腔拭子中进行的 EWAS,我们鉴定了上皮细胞中与吸烟相关的差异甲基化位置,我们在与吸烟相关的肺癌中进行了验证。CellDMC 可能有助于鉴定疾病中因果性 DNA 甲基化改变。