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Avocado: a multi-scale deep tensor factorization method learns a latent representation of the human epigenome

机译:鳄梨:多规模的深度张量分解方法学习人类表观组胺的潜在表示

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The human epigenome has been experimentally characterized by thousands of measurements for every basepair in the human genome. We propose a deep neural network tensor factorization method, Avocado, that compresses this epigenomic data into a dense, information-rich representation. We use this learned representation to impute epigenomic data more accurately than previous methods, and we show that machine learning models that exploit this representation outperform those trained directly on epigenomic data on a variety of genomics tasks. These tasks include predicting gene expression, promoter-enhancer interactions, replication timing, and an element of 3D chromatin architecture.
机译:人类表观组织已经通过实验表征了人类基因组中每一个基座的数千次测量。我们提出了一种深度神经网络张量因子分解方法,鳄梨,将这种表观胸部数据压缩成密集,信息丰富的代表。我们使用这一学习的表示来更准确地比以前的方法更准确地赋予表观群数据,并且我们展示了利用这种表示的机器学习模型优于直接培训的那些基因组织任务的表观群数据。这些任务包括预测基因表达,启动子 - 增强剂相互作用,复制正时和3D染色质架构的元素。

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