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Protein model accuracy estimation based on local structure quality assessment using 3D convolutional neural network

机译:基于局部结构质量评估的3D卷积神经网络蛋白质模型准确性评估

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摘要

In protein tertiary structure prediction, model quality assessment programs (MQAPs) are often used to select the final structural models from a pool of candidate models generated by multiple templates and prediction methods. The 3-dimensional convolutional neural network (3DCNN) is an expansion of the 2DCNN and has been applied in several fields, including object recognition. The 3DCNN is also used for MQA tasks, but the performance is low due to several technical limitations related to protein tertiary structures, such as orientation alignment. We proposed a novel single-model MQA method based on local structure quality evaluation using a deep neural network containing 3DCNN layers. The proposed method first assesses the quality of local structures for each residue and then evaluates the quality of whole structures by integrating estimated local qualities. We analyzed the model using the CASP11, CASP12, and 3D-Robot datasets and compared the performance of the model with that of the previous 3DCNN method based on whole protein structures. The proposed method showed a significant improvement compared to the previous 3DCNN method for multiple evaluation measures. We also compared the proposed method to other state-of-the-art methods. Our method showed better performance than the previous 3DCNN-based method and comparable accuracy as the current best single-model methods; particularly, in CASP11 stage2, our method showed a Pearson coefficient of 0.486, which was better than those of the best single-model methods (0.366–0.405). A standalone version of the proposed method and data files are available at .
机译:在蛋白质三级结构预测中,模型质量评估程序(MQAP)通常用于从由多种模板和预测方法生成的候选模型库中选择最终的结构模型。三维卷积神经网络(3DCNN)是2DCNN的扩展,已应用于包括对象识别在内的多个领域。 3DCNN也用于MQA任务,但是由于与蛋白质三级结构有关的若干技术限制(例如方向对齐),因此性能较低。我们使用包含3DCNN层的深度神经网络,提出了一种基于局部结构质量评估的新型单模型MQA方法。所提出的方法首先评估每个残基的局部结构的质量,然后通过整合估计的局部质量来评估整个结构的质量。我们使用CASP11,CASP12和3D-Robot数据集分析了该模型,并将该模型的性能与以前基于完整蛋白质结构的3DCNN方法的性能进行了比较。与以前的3DCNN方法相比,该方法在多项评估指标上显示出了显着的改进。我们还将提出的方法与其他最新方法进行了比较。我们的方法显示出比以前的基于3DCNN的方法更好的性能,并且具有与当前最佳的单模型方法相当的准确性;特别是在CASP11第二阶段,我们的方法的皮尔逊系数为0.486,优于最佳的单模型方法(0.366–0.405)。建议的方法和数据文件的独立版本位于。

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