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Improved Protein Residue-Residue Contact Prediction Using Image Denoising Methods

机译:使用图像去噪方法改进的蛋白质残渣-残渣接触预测

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A protein contact map is a simplified matrix representation of the protein structure, where the spatial proximity of two amino acid residues is reflected. Although the accurate prediction of protein inter-residue contacts from the amino acid sequence is an open problem, considerable progress has been made in recent years. This progress has been driven by the development of contact predictors that identify the coevolutionary events occurring in a protein multiple sequence alignment (MSA). However, it has been shown that these methods introduce Gaussian noise in the estimated contact map, making its reduction necessary. In this paper, we propose the use of two different Gaussian denoising approximations in order to enhance the protein contact estimation. These approaches are based on (i) sparse representations over learned dictionaries, and (ii) deep residual convolutional neural networks. The results highlight that the residual learning strategy allows a better reconstruction of the contact map, thus improving contact predictions.
机译:蛋白质接触图是蛋白质结构的简化矩阵表示,其中反映了两个氨基酸残基的空间接近性。尽管从氨基酸序列准确预测蛋白质残基间的接触是一个未解决的问题,但近年来已经取得了长足的进步。接触预测器的发展推动了这一进展,接触预测器可识别蛋白质多序列比对(MSA)中发生的协同进化事件。但是,已经表明,这些方法在估计的接触图中引入了高斯噪声,因此有必要进行降低。在本文中,我们提出使用两种不同的高斯去噪近似来增强蛋白质接触估计。这些方法基于(i)学习词典的稀疏表示,以及(ii)深度残差卷积神经网络。结果表明,残差学习策略可以更好地重建联系地图,从而改善联系预测。

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