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Imputing missing RNA-sequencing data from DNA methylation by using a transfer learning–based neural network

机译:使用基于转移学习的神经网络从DNA甲基化中估算缺失的RNA测序数据

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摘要

Gene expression plays a key intermediate role in linking molecular features at the DNA level and phenotype. However, owing to various limitations in experiments, the RNA-seq data are missing in many samples while there exist high-quality of DNA methylation data. Because DNA methylation is an important epigenetic modification to regulate gene expression, it can be used to predict RNA-seq data. For this purpose, many methods have been developed. A common limitation of these methods is that they mainly focus on a single cancer dataset and do not fully utilize information from large pan-cancer datasets.
机译:基因表达在连接DNA水平和表型的分子特征中起关键的中间作用。然而,由于实验中的各种限制,尽管存在高质量的DNA甲基化数据,但许多样品中缺少RNA-seq数据。由于DNA甲基化是调节基因表达的重要表观遗传修饰,因此可用于预测RNA序列数据。为此目的,已经开发了许多方法。这些方法的共同局限性在于它们主要集中于单个癌症数据集,而没有完全利用大型泛癌数据集的信息。

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