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BIMMER: a novel algorithm for detecting differential DNA methylation regions from MBDCap-seq data

机译:BIMMER:一种用于检测MBDCAP-SEQ数据的差异DNA甲基化区域的新算法

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DNA methylation is a common epigenetic marker that regulates gene expression. A robust and cost-effective way for measuring whole genome methylation is Methyl-CpG binding domain-based capture followed by sequencing (MBDCap-seq). In this study, we proposed BIMMER, a Hidden Markov Model (HMM) for differential Methylation Regions (DMRs) identification, where HMMs were proposed to model the methylation status in normal and cancer samples in the first layer and another HMM was introduced to model the relationship between differential methylation and methylation statuses in normal and cancer samples. To carry out the prediction for BIMMER, an Expectation-Maximization algorithm was derived. BIMMER was validated on the simulated data and applied to real MBDCap-seq data of normal and cancer samples. BIMMER revealed that 8.83% of the breast cancer genome are differentially methylated and the majority are hypo-methylated in breast cancer.
机译:DNA甲基化是调节基因表达的常见表观遗传标记。用于测量全基因组甲基化的稳健和经济效益的方式是甲基-CPG结合结构域的捕获,然后进行测序(MBDCAP-SEQ)。在这项研究中,我们提出了Bimmer,用于差分甲基化区域(DMRS)鉴定的隐马尔可夫模型(HMM),其中提出了HMMS在第一层中模拟了正常和癌症样品中的甲基化状态,并将另一个HMM引入模拟差异甲基化与正常和癌症样本中甲基化状态的关系。为了执行对Bimmer的预测,推导出期望最大化算法。 Bimmer在模拟数据上验证并应用于正常和癌症样本的真实MBDCAP-SEQ数据。 Bimmer透露,8.83%的乳腺癌基因组差异甲基化,大多数是乳腺癌中的甲基化。

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