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Structuring supplemental materials in support of reproducibility

机译:构建辅助材料以支持可重复性

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Recent technological advances have enabled DNA methylation to be assayed at single-cell resolution. However, current protocols are limited by incomplete CpG coverage and hence methods to predict missing methylation states are critical to enable genome-wide analyses. We report DeepCpG, a computational approach based on deep neural networks to predict methylation states in single cells. We evaluate DeepCpG on single-cell methylation data from five cell types generated using alternative sequencing protocols. DeepCpG yields substantially more accurate predictions than previous methods. Additionally, we show that the model parameters can be interpreted, thereby providing insights into how sequence composition affects methylation variability.
机译:最近的技术进步使DNA甲基化能够以单细胞分辨率进行测定。但是,当前的方案受到不完整的CpG覆盖的限制,因此预测缺失甲基化状态的方法对于实现全基因组分析至关重要。我们报告DeepCpG,这是一种基于深度神经网络的计算方法,可以预测单个细胞中的甲基化状态。我们对使用替代测序协议生成的五种细胞类型的单细胞甲基化数据进行了DeepCpG评估。与以前的方法相比,DeepCpG产生的预测要准确得多。此外,我们表明可以解释模型参数,从而提供有关序列组成如何影响甲基化变异性的见解。

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