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Prediction of Protein Secondary Structure Using Improved Two-Level Neural Network Architecture

机译:改进的二级神经网络体系结构预测蛋白质二级结构

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摘要

In this paper we propose constructing an improved two-level neural network to predict protein secondary structure. Firstly, we code the whole protein composition information as the inputs to the first-level network besides the evolutionary information. Secondly, we calculate the reliability score for each residue position based on the output of the first-level network, and the role of the second-level network is to take full advantage of the residues with a higher reliability score to impact the neighboring residues with a lower one for improving the whole prediction accuracy. Thirdly, considering it is indeed a problem that the target protein can be lost in the multiple sequence alignment we propose to code single sequence into the second-level network. The experimental results show that our proposed method can efficiently improve the prediction accuracy.
机译:在本文中,我们建议构建一个改进的二级神经网络来预测蛋白质的二级结构。首先,我们将整个蛋白质组成信息编码为进化信息之外的第一级网络的输入。其次,我们根据一级网络的输出计算每个残基位置的可靠性得分,二级网络的作用是充分利用具有较高可靠性得分的残基来影响相邻残基。较低的用于提高整体预测精度。第三,考虑到靶蛋白确实可能在多序列比对中丢失是一个问题,我们建议将单个序列编码到二级网络中。实验结果表明,该方法可以有效地提高预测精度。

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