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CNNH_PSS: protein 8-class secondary structure prediction by convolutional neural network with highway

机译:CNNH_PSS:卷积神经网络与高速公路蛋白质8级二级结构预测

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Background: Protein secondary structure is the three dimensional form of local segments of proteins and its prediction is an important problem in protein tertiary structure prediction. Developing computational approaches for protein secondary structure prediction is becoming increasingly urgent.Results: We present a novel deep learning based model, referred to as CNNH_PSS, by using multi-scale CNN with highway. In CNNH_PSS, any two neighbor convolutional layers have a highway to deliver information from current layer to the output of the next one to keep local contexts. As lower layers extract local context while higher layers extract long-range interdependencies, the highways between neighbor layers allow CNNhLPSS to have ability to extract both local contexts and long-range interdependencies. We evaluate CNNH_PSS on two commonly used datasets: CB6133 and CB513. CNNH_PSS outperforms the multi-scale CNN without highway by at least 0.010 Q8 accuracy and also performs better than CNF, DeepCNF and SSpro8, which cannot extract long-range interdependencies, by at least 0.020 Q8 accuracy, demonstrating that both local contexts and long-range interdependencies are indeed useful for prediction. Furthermore, CNNH_PSS also performs better than GSM and DCRNN which need extra complex model to extract long-range interdependencies. It demonstrates that CNNH_PSS not only cost less computer resource, but also achieves better predicting performance.Conclusion: CNNH_PSS have ability to extracts both local contexts and long-range interdependencies by combing multi-scale CNN and highway network. The evaluations on common datasets and comparisons with state-of-the-art methods indicate that CNNH_PSS isan useful and efficient tool for protein secondary structure prediction.
机译:背景:蛋白质二级结构是蛋白质局部段的三维形式,其预测是蛋白质三级结构预测中的重要问题。开发蛋白质二级结构预测的计算方法越来越紧急。结果:我们通过使用高速公路的多尺度CNN提出了一种新的深度学习的基于CNNH_PSS的模型。在CNNH_PSS中,任何两个邻居卷积层都有一个高速公路,可以​​将信息从当前层传送到下一个待保留本地上下文的输出。由于较低层提取本地上下文,而较高的层提取远程相互依赖性,则邻居层之间的高速公路允许CNNHLPS具有提取本地上下文和远程相互依赖的能力。我们在两个常用的数据集中评估CNNH_PS:CB6133和CB513。 CNNH_PSSSS在没有高速公路的情况下优于多尺度CNN,至少0.010 Q8精度,并且也比CNF,DeepCNF和SSPro8更好地表现不提取远程相互依赖性,至少0.020 Q8精度,展示本地上下文和远程相互依赖性确实有用于预测。此外,CNNH_PSS也比GSM和DCRNN更好地执行,这需要额外的复杂模型以提取远程相互依赖性。它展示了CNNH_PSS不仅成本较低的计算机资源,而且还实现了更好的预测性能。结论:CNNH_PSS通过梳理多尺度CNN和公路网络来提取本地上下文和远程相互依赖性的能力。具有最先进的方法的常见数据集和比较的评估表明CNNH_PSSSISAN ISAN用于蛋白质二级结构预测的有用和有效的工具。

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