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Analysis of deep learning methods for blind protein contact prediction in CASP12

机译:CASP12中用于盲目蛋白质接触预测的深度学习方法分析

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摘要

Here we present the results of protein contact prediction achieved in CASP12 by our RaptorX-Contact server, which is an early implementation of our deep learning method for contact prediction. On a set of 38 free-modeling target domains with a median family size of around 58 effective sequences, our server obtained an average top L/5 long- and medium-range contact accuracy of 47% and 44%, respectively (L=length). A more advanced implementation has an average accuracy of 59% and 57%, respectively. Our deep learning method formulates contact prediction as a pixel-level labeling problem and simultaneously predicts all residue pairs of a protein using a combination of two deep residual neural networks, taking as input the residue conservation information, predicted secondary structure and solvent accessibility, contact potential, and co-evolution information. Our approach differs from existing methods mainly in (1) formulating contact prediction as a pixel-level image labeling problem instead of an image-level classification problem; (2) simultaneously predicting all contacts of an individual protein to make effective use of contact occurrence patterns; and (3) integrating both 1D and 2D deep convolutional neural networks to effectively learn complex sequence-structure relationship including high-order residue correlation. This paper discusses the RaptorX-Contact pipeline, both contact prediction and contact-based folding results, and finally the strength and weakness of our method.
机译:在这里,我们介绍RaptorX-Contact服务器在CASP12中实现的蛋白质接触预测的结果,这是我们用于接触预测的深度学习方法的早期实现。在一组38个自由建模目标域中,其中一个家族的中位数约为58个有效序列,我们的服务器获得的平均最高L / 5长距离和中距离接触准确度分别为47%和44%(L =长度)。更高级的实现分别具有59%和57%的平均准确度。我们的深度学习方法将接触预测公式化为像素级标记问题,并使用两个深度残留神经网络的组合同时预测蛋白质的所有残基对,同时输入残基保守性信息,预测的二级结构和溶剂可及性,接触电位以及协同进化信息。我们的方法与现有方法的不同之处主要在于(1)将接触预测表述为像素级图像标注问题,而不是图像级分类问题; (2)同时预测单个蛋白质的所有接触,以有效利用接触发生方式; (3)整合一维和二维深层卷积神经网络以有效地学习复杂的序列结构关系,包括高阶残基相关性。本文讨论了RaptorX-Contact管道,接触预测和基于接触的折叠结果,最后讨论了我们方法的优缺点。

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