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首页> 外文期刊>BMC Bioinformatics >Protein remote homology detection based on bidirectional long short-term memory
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Protein remote homology detection based on bidirectional long short-term memory

机译:蛋白质远程同源性检测基于双向长期短期记忆

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摘要

Background Protein remote homology detection plays a vital role in studies of protein structures and functions. Almost all of the traditional machine leaning methods require fixed length features to represent the protein sequences. However, it is never an easy task to extract the discriminative features with limited knowledge of proteins. On the other hand, deep learning technique has demonstrated its advantage in automatically learning representations. It is worthwhile to explore the applications of deep learning techniques to the protein remote homology detection. Results In this study, we employ the Bidirectional Long Short-Term Memory (BLSTM) to learn effective features from pseudo proteins, also propose a predictor called ProDec-BLSTM : it includes input layer, bidirectional LSTM, time distributed dense layer and output layer. This neural network can automatically extract the discriminative features by using bidirectional LSTM and the time distributed dense layer. Conclusion Experimental results on a widely-used benchmark dataset show that ProDec-BLSTM outperforms other related methods in terms of both the mean ROC and mean ROC50 scores. This promising result shows that ProDec-BLSTM is a useful tool for protein remote homology detection. Furthermore, the hidden patterns learnt by ProDec-BLSTM can be interpreted and visualized, and therefore, additional useful information can be obtained.
机译:背景技术蛋白质偏远同源性检测在蛋白质结构和功能的研究中起着至关重要的作用。几乎所有传统的机器倾斜方法都需要固定长度特征来代表蛋白质序列。然而,提取蛋白质知识有限的辨别特征永远不是一项容易的任务。另一方面,深度学习技术已经证明其在自动学习陈述方面的优势。值得探讨深层学习技术对蛋白质偏远同源性检测的应用。结果在本研究中,我们采用双向长期内存(BLSTM)来学习伪蛋白的有效特征,还提出了一种称为Prodec-BLSTM的预测器:它包括输入层,双向LSTM,时间分布式致密层和输出层。该神经网络可以通过使用双向LSTM和时间分布式密集层自动提取辨别特征。结论在广泛使用的基准数据集中的实验结果表明,ProDec-BLSTM在平均ROC和均值ROC50分数方面胜过其他相关方法。这一有希望的结果表明,Prodec-Blstm是蛋白质遥控器的有用工具。此外,通过Prodec-BLSTM学习的隐藏模式可以被解释和可视化,因此,可以获得额外的有用信息。

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