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Protein secondary structure prediction with context convolutional neural network

机译:用上下文卷积神经网络预测蛋白质二次结构预测

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Protein secondary structure (SS) prediction is important for studying protein structure and function. Both traditional machine learning methods and deep learning neural networks have been utilized and great progress has been achieved in approaching the theoretical limit. Convolutional and recurrent neural networks are two major types of deep learning architectures with comparable prediction accuracy but different training procedures to achieve optimal performance. We are interested in seeking a novel architectural style with competitive performance and in understanding the performance of different architectures with similar training procedures. We constructed a context convolutional neural network (Contextnet) and compared its performance with popular models ( e.g. convolutional neural network, recurrent neural network, conditional neural fields…) under similar training procedures on a Jpred dataset. The Contextnet was proven to be highly competitive. Additionally, we retrained the network with the Cullpdb dataset and compared with Jpred, ReportX, Spider3 server and MUFold-SS method, the Contextnet was found to be more Q3 accurate on a CASP13 dataset. Training procedures were found to have significant impact on the accuracy of the Contextnet.
机译:蛋白质二级结构(SS)预测对于研究蛋白质结构和功能是重要的。在接近理论极限时,已经利用了传统的机器学习方法和深度学习的神经网络。卷积和经常性神经网络是两种主要类型的深度学习架构,具有可比的预测准确性,但不同的培训程序来实现最佳性能。我们有兴趣寻求具有竞争性能的新颖建筑风格,并在了解不同架构的表现,具有类似的培训程序。我们构建了一个上下文卷积神经网络(ContextNet),并将其性能与流行模型(例如卷积神经网络,经常性神经网络,条件神经领域......)进行了相似的Jpred DataSet上的类似训练程序。 ContextNet被证明是竞争力的。此外,我们将网络与CullPDB数据集重新启动,并与Jpred,ReportX,Spider3 Server和Mufold-SS方法进行比较,发现ContextNet在Casp13数据集上更准确Q3。发现培训程序对ContextNet的准确性产生重大影响。

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