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DeepACP: A Novel Computational Approach for Accurate Identification of Anticancer Peptides by Deep Learning Algorithm

机译:深度学习算法精确鉴定抗癌肽的新型计算方法

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摘要

Cancer is one of the most dangerous diseases to human health. The accurate prediction of anticancer peptides (ACPs) would be valuable for the development and design of novel anticancer agents. Current deep neural network models have obtained state-of-the-art prediction accuracy for the ACP classification task. However, based on existing studies, it remains unclear which deep learning architecture achieves the best performance. Thus, in this study, we first present a systematic exploration of three important deep learning architectures: convolutional, recurrent, and convolutional-recurrent networks for distinguishing ACPs from non-ACPs. We find that the recurrent neural network with bidirectional long short-term memory cells is superior to other architectures. By utilizing the proposed model, we implement a sequence-based deep learning tool (DeepACP) to accurately predict the likelihood of a peptide exhibiting anticancer activity. The results indicate that DeepACP outperforms several existing methods and can be used as an effective tool for the prediction of anticancer peptides. Furthermore, we visualize and understand the deep learning model. We hope that our strategy can be extended to identify other types of peptides and may provide more assistance to the development of proteomics and new drugs.
机译:癌症是人类健康最危险的疾病之一。对抗癌肽(ACPS)的准确预测对于新的抗癌剂的开发和设计是有价值的。目前的深度神经网络模型已经获得了ACP分类任务的最先进的预测准确性。然而,根据现有研究,仍然不清楚哪种深度学习架构实现了最佳性能。因此,在本研究中,我们首先对三个重要的深度学习架构进行了系统的探索:卷积,经常性和卷积复制网络,用于区分ACP的非ACP。我们发现,具有双向长短期存储器单元的经常性神经网络优于其他架构。通过利用所提出的模型,我们实施基于序列的深度学习工具(DeepacP),以准确地预测表现出抗癌活动的肽的可能性。结果表明,Deepacp优于几种现有方法,可用作预测抗癌肽的有效工具。此外,我们可视化和理解深度学习模式。我们希望我们的战略可以扩展以确定其他类型的肽,并可为蛋白质组学和新药的发展提供更多援助。

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