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DEEPSEN: a convolutional neural network based method for super-enhancer prediction

机译:深度:基于卷积神经网络的超强增强器预测方法

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BACKGROUND:Super-enhancers (SEs) are clusters of transcriptional active enhancers, which dictate the expression of genes defining cell identity and play an important role in the development and progression of tumors and other diseases. Many key cancer oncogenes are driven by super-enhancers, and the mutations associated with common diseases such as Alzheimer's disease are significantly enriched with super-enhancers. Super-enhancers have shown great potential for the identification of key oncogenes and the discovery of disease-associated mutational sites.RESULTS:In this paper, we propose a new computational method called DEEPSEN for predicting super-enhancers based on convolutional neural network. The proposed method integrates 36 kinds of features. Compared with existing approaches, our method performs better and can be used for genome-wide prediction of super-enhancers. Besides, we screen important features for predicting super-enhancers.CONCLUSION:Convolutional neural network is effective in boosting the performance of super-enhancer prediction.
机译:背景:超级增强剂(SES)是转录活性增强剂的簇,其决定了定义细胞身份的基因的表达,并在肿瘤和其他疾病的发展和进展中发挥重要作用。许多关键癌症癌素由超强增强剂驱动,与常见疾病如阿尔茨海默病相关的突变显着富集,具有超强增强剂。超级增强剂表明了鉴定关键癌症和疾病相关的突变站点的发现的巨大潜力。结果:本文提出了一种新的计算方法,称为基于卷积神经网络的超强增强器的升级。该方法集成了36种功能。与现有方法相比,我们的方法表现更好,可用于超强增强剂的全基因组预测。此外,我们屏蔽了预测超级增强器的重要功能。结论:卷积神经网络有效地提高超强增强剂预测的性能。

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