Uzun Yasin, Wu Hao, Tan Kai
Center for Childhood Cancer Research, The Children's Hospital of Philadelphia, Philadelphia, PA, USA.
Department of Biomedical and Health Informatics, The Children's Hospital of Philadelphia, Philadelphia, PA, USA.
Methods Mol Biol. 2023;2624:43-54. doi: 10.1007/978-1-0716-2962-8_4.
As a mechanism of epigenetic gene regulation, DNA methylation has crucial roles in developmental and differentiation programs. Thanks to the recently introduced bisulfite-sequencing-based methods, it is possible to profile the entire methylome at single-cell resolution. However, analysis of single-cell methylome data is challenging due to data sparsity and moderate correlation with transcript level. Our recently developed computational framework, MAPLE, addresses these challenges using supervised learning models. Using both genomic sequence and methylation information as the input, MAPLE predicts activity for each gene, which can be used to integrate with transcriptome data from the same cell types. Here, we provide an overview of our method and detailed guidance on how to use it for the integration of methylome and transcriptome data.
作为一种表观遗传基因调控机制,DNA甲基化在发育和分化程序中起着关键作用。得益于最近引入的基于亚硫酸氢盐测序的方法,现在有可能在单细胞分辨率下描绘整个甲基化组。然而,由于数据稀疏性以及与转录水平的适度相关性,单细胞甲基化组数据分析具有挑战性。我们最近开发的计算框架MAPLE使用监督学习模型来应对这些挑战。MAPLE以基因组序列和甲基化信息作为输入,预测每个基因的活性,可用于与来自相同细胞类型的转录组数据进行整合。在此,我们概述了我们的方法,并提供了有关如何将其用于甲基化组和转录组数据整合的详细指南。