A Deep Learning Approach for Prediction of Protein Secondary Structure

Muhammad Zubair, Muhammad Kashif Hanif, E. Alabdulkreem, Y. Ghadi, Muhammad Irfan Khan, Muhammad Umer Sarwar, A. Hanif
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引用次数: 0

Abstract

: The secondary structure of a protein is critical for establishing a link between the protein primary and tertiary structures. For this reason, it is important to design methods for accurate protein secondary structure prediction. Most of the existing computational techniques for protein structural and functional prediction are based on machine learning with shallow frameworks. Different deep learning architectures have already been applied to tackle protein secondary structure prediction problem. In this study, deep learning based models, i.e., convolutional neural network and long short-term memory for protein secondary structure prediction were proposed. The input to proposed models is amino acid sequences which were derived from CulledPDB dataset. Hyperparameter tuning with cross validation was employed to attain best parameters for the proposed models. The proposed models enables effective processing of amino acids and attain approximately 87.05% and 87.47% Q 3 accuracy of protein secondary structure prediction for convolutional neural network and long short-term memory models, respectively.
蛋白质二级结构预测的深度学习方法
蛋白质的二级结构对于建立蛋白质一级结构和三级结构之间的联系至关重要。因此,设计准确的蛋白质二级结构预测方法非常重要。现有的蛋白质结构和功能预测的计算技术大多是基于浅框架的机器学习。不同的深度学习架构已经被应用于解决蛋白质二级结构预测问题。本研究提出了基于深度学习的卷积神经网络和长短期记忆的蛋白质二级结构预测模型。该模型的输入是来自CulledPDB数据集的氨基酸序列。采用交叉验证的超参数整定来获得模型的最佳参数。所提出的模型能够有效地处理氨基酸,并且卷积神经网络和长短期记忆模型的蛋白质二级结构预测准确率分别达到约87.05%和87.47%。
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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