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Extracting a biologically latent space of lung cancer epigenetics with variational autoencoders

机译:用变形自身偏析提取肺癌表观遗传学的生物潜空间

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BACKGROUND:Lung cancer is one of the most malignant tumors, causing over 1,000,000 deaths each year worldwide. Deep learning has brought success in many domains in recent years. DNA methylation, an epigenetic factor, is used for model training in many studies. There is an opportunity for deep learning methods to analyze the lung cancer epigenetic data to determine their subtypes for appropriate treatment.RESULTS:Here, we employ variational autoencoders (VAEs), an unsupervised deep learning framework, on 450K DNA methylation data of TCGA-LUAD and TCGA-LUSC to learn latent representations of the DNA methylation landscape. We extract a biologically relevant latent space of LUAD and LUSC samples. It is showed that the bivariate classifiers on the further compressed latent features could classify the subtypes accurately. Through clustering of methylation-based latent space features, we demonstrate that the VAEs can capture differential methylation patterns about subtypes of lung cancer.CONCLUSIONS:VAEs can distinguish the original subtypes from manually mixed methylation data frame with the encoded features of latent space. Further applications about VAEs should focus on fine-grained subtypes identification for precision medicine.
机译:背景:肺癌是最恶劣的肿瘤之一,全世界每年造成超过1,000,000人死亡。深度学习在近年来在许多域中带来了成功。 DNA甲基化,表观遗传因子用于许多研究中的模型培训。有机会分析肺癌表观遗传数据的深度学习方法,以确定其适当治疗的亚型。结果:在这里,我们采用了一个无监督的深度学习框架,在TCGA-LUAD的450K DNA甲基化数据中采用变分性AutoEncoders(VAES)和TCGA-LUSC学习DNA甲基化景观的潜在表示。我们提取了拉德和LUSC样品的生物相关潜在空间。结果表明,进一步压缩潜在特征上的双变量分类可以准确地对亚型进行分类。通过聚集基于甲基化的潜伏空间特征,我们证明了VAES可以捕获关于肺癌亚型的差分甲基化模式。结论:VAE可以将原始亚型与手动甲基化数据帧区分开潜在空间的编码特征。关于VAE的进一步应用应专注于精密药物的细粒度亚型鉴定。

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