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Deep convolutional neural networks for detecting secondary structures in protein density maps from cryo-electron microscopy

机译:深度卷积神经网络,用于从电子显微镜检测蛋白质密度图中的二级结构

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The detection of secondary structure of proteins using three dimensional (3D) cryo-electron microscopy (cryo-EM) images is still a challenging task when the spatial resolution of cryo-EM images is at medium level (5-10Å). Prior researches focused on the usage of local features that may not capture the global information of image objects. In this study, we propose to use deep learning methods to extract high representative global features and then automatically detect secondary structures of proteins. In particular, we build a convolutional neural network (CNN) classifier that predicts the probability of label for every individual voxel in 3D cryo-EM image with respect to the secondary structure elements of proteins such as α-helix, β-sheet and background. To effectively incorporate the 3D spatial information in protein structures, we propose to perform 3D convolutions in the convolutional layers of CNNs. We show that the proposed CNN classifier can outperform existing SVM method on identifying the secondary structure elements of proteins from 3D cryo-EM medium resolution images.
机译:当三维图像(cryo-EM)的空间分辨率处于中等水平(5-10Å)时,使用三维(3D)低温电子显微镜(cryo-EM)图像检测蛋白质的二级结构仍然是一项艰巨的任务。先前的研究集中在可能无法捕获图像对象的全局信息的局部特征的使用上。在这项研究中,我们建议使用深度学习方法来提取高代表性的全局特征,然后自动检测蛋白质的二级结构。特别是,我们建立了卷积神经网络(CNN)分类器,该预测器针对3D冷冻EM图像中每个单个体素相对于蛋白质的二级结构元素(例如α-螺旋,β-折叠和背景)预测标记的可能性。为了有效地将3D空间信息整合到蛋白质结构中,我们建议在CNN的卷积层中执行3D卷积。我们表明,提出的CNN分类器在从3D冷冻EM中分辨率图像识别蛋白质的二级结构元素方面可以胜过现有的SVM方法。

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