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Predict the Protein-protein Interaction between Virus and Host through Hybrid Deep Neural Network

机译:通过混合深神经网络预测病毒与宿主之间的蛋白质 - 蛋白质相互作用

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Viral infection has been considered as a threat to human health for many years, where protein-protein interactions (PPIs) between viruses and hosts is involved. Researching the PPI between the virus and the host is conducive to understanding the mechanism of virus infection and the development of new drugs. Currently, most of the existing studies based on sequence only focus on extracting sequence features from original amino acid sequences, whereas the redundancy and noise of the features are neglected.In this paper, we employed Ll-regularized logistic regression to obtain efficacious sequence features related to PPIs without losing accuracy and generalization. A hybrid deep learning framework which combines convolutional neural network together with a long short term memory network to extract more hidden high-level features was designed to extract more latent features. As it is demonstrated in experiments results, the proposed framework is superior to the current advanced framework in both benchmark data and independent testing and is promising for identifying virus-host interactions.
机译:病毒感染被认为是对人类健康的威胁多年来,其中涉及病毒和宿主之间的蛋白质 - 蛋白质相互作用(PPI)。研究病毒与宿主之间的PPI有利于理解病毒感染的机制和新药的发展。目前,基于序列的大多数现有研究仅关注从原始氨基酸序列中提取序列特征,而特征的冗余和噪声忽略。在本文中,我们采用了LL-Rengeary化的逻辑回归来获得相关的序列功能对于没有失去准确性和泛化的PPI。混合深度学习框架将卷积神经网络与长短短期内存网络相结合以提取更多隐藏的高级功能,以提取更潜在的特征。正如实验结果中的说明,所提出的框架优于基准数据和独立测试的当前先进框架,并且有希望识别病毒 - 主机交互。

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