Prediction of Protein Secondary Structure based on Multi-scale Convolutional Neural Network

Yu Xiao, Xiaozhou Chen
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Abstract

In the field of bioinformatics, the prediction of secondary structure of proteins is very important. It can be obtained from the prediction of primary structure (amino acid sequence) and can provide reference for the prediction of tertiary structure of proteins. Amino acid sequences of proteins are encoded with several features and then combined into the prediction network. Convolutional neural network has excellent performance in text and sequence information extraction. The amino acid sequence of protein is also a special sequence, so the convolutional neural network can be used to extract the information in the sequence. Moreover, the influence of amino acids on the formation of secondary structure varies with different distances, so in the experiment, convolutional neural networks with convolution nuclei of different sizes were used to form multi-scale convolution blocks to extract amino acid sequence information. At the same time, the sliding window technique is also used to show the interaction between the sequences, and a long amino acid sequence is divided into some amino acid fragments and input into the model. Finally, the accuracy of Q8 on the dataset CB6133_filtered reaches 71%.
基于多尺度卷积神经网络的蛋白质二级结构预测
在生物信息学领域,蛋白质二级结构的预测是非常重要的。它可以从一级结构(氨基酸序列)的预测中得到,并可以为蛋白质三级结构的预测提供参考。蛋白质的氨基酸序列被编码成若干特征,然后组合到预测网络中。卷积神经网络在文本和序列信息提取方面具有优异的性能。蛋白质的氨基酸序列也是一种特殊的序列,因此可以使用卷积神经网络来提取序列中的信息。此外,氨基酸对二级结构形成的影响随距离的不同而不同,因此在实验中,采用不同大小卷积核的卷积神经网络组成多尺度卷积块提取氨基酸序列信息。同时,利用滑动窗口技术显示序列之间的相互作用,将较长的氨基酸序列分割成若干氨基酸片段输入到模型中。最后,Q8在CB6133_filtered数据集上的准确率达到71%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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