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Protein Secondary Structure Prediction Using Cascaded Convolutional and Recurrent Neural Networks

机译:使用级联卷积和经常性神经网络的蛋白质二级结构预测

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Protein secondary structure prediction is an important problem in bioinformatics. Inspired by the recent successes of deep neural networks, in this paper, we propose an end-to-end deep network that predicts protein secondary structures from integrated local and global contextual features. Our deep architecture leverages convolutional neural networks with different kernel sizes to extract multiscale local contextual features. In addition, considering long-range dependencies existing in amino acid sequences, we set up a bidirectional neural network consisting of gated recurrent unit to capture global contextual features. Furthermore, multi-task learning is utilized to predict secondary structure labels and ammo-acid solvent accessibility simultaneously. Our proposed deep network demonstrates its effectiveness by achieving state-of-the-art performance, i.e., 69.7% Q8 accuracy on the public benchmark CB513, 76.9% Q8 accuracy on CASP10 and 73.1% Q8 accuracy on CASP11. Our model and results are publicly available1.
机译:蛋白质二级结构预测是生物信息学中的重要问题。在最近的深度神经网络成功的启发中,在本文中,我们提出了一种端到端的深度网络,其预测综合本地和全球背景特征的蛋白质二级结构。我们的深度建筑利用不同的内核大小利用卷积神经网络来提取多尺度本地上下文功能。此外,考虑到存在于氨基酸序列中存在的远程依赖性,我们建立了由门控复发单元组成的双向神经网络,以捕获全局上下文特征。此外,使用多任务学习以同时预测二次结构标签和弹药溶剂溶剂可接受。我们所提出的深度网络通过实现最先进的性能,即在公共基准CB513上的69.7%的Q8准确性,在CASP10和Casp11上的73.1%Q8精度上进行了76.7%的Q8准确度,展示了其有效性。我们的模型和结果是公开可用的1.

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