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Prediction of protein contact map by fully convolutional dilated residual network

机译:完全卷积扩张剩余网络预测蛋白质联系地图

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Residue contact maps contain important information for understanding the structure and function of proteins, thus contact map prediction is an important problem in the bioinformatics field. In recent years, deep learning has become a very popular tool in many research fields. However, the studies of using deep models to predict residue contact maps are very few. This work attempts to identify contact maps based on a recent breakthrough in deep learning, the residual network. The residual network distinguishes itself from other deep convolutional networks in that it incorporates a structure improvement called identity mapping to enable the neural network to go much deeper without consequent training difficulty. Moreover, dilated convolution is employed into this network to obtain a better performance by enlarging the receptive field of the network. A prediction is made based on the input features of a protein and all the features are input into the network at the same time. The experiments demonstrate that the dilated residual network outperforms the original residual network in contact map prediction. We test the networks on 3 test sets: CAMEO, CASP11 and a self-built independent test set. On top L/5 long-range contacts of the three test sets, the accuracy of the dilated network is higher than the non-dilated one by 5.2 %, 4.6% and 2.9%, respectively. Furthermore, it is confirmed that applying different networks on different features is a worse idea than taking them in together. The accuracy on top L/5 long-range contacts of the latter network is higher than the former one by 9.8% on the CAMEO set, 7.0% on the CASP11 set and 5.9% on the self-built independent test set.
机译:残留联系地图包含理解蛋白质结构和功能的重要信息,因此联系地图预测是生物信息学领域的重要问题。近年来,深入学习已成为许多研究领域的一个非常受欢迎的工具。然而,使用深层模型来预测残留物联系地图的研究很少。这项工作试图根据深度学习,剩余网络的最近突破来识别联系地图。残余网络将自身与其他深度卷积网络区分开来利用称为身份映射的结构改进,以使神经网络能够更深入地更深入而不会导致训练难度。此外,通过扩大网络的接收领域,采用扩张的卷积来获得更好的性能。基于蛋白质的输入特征进行预测,并且所有功能同时输入到网络中。实验表明,扩张的剩余网络优于接触地图预测中的原始残余网络。我们在3个测试集上测试网络:Careo,Casp11和自制独立测试集。在三个测试集的顶部L / 5远程触点上,扩张网络的准确性分别高于不扩张的1.2%,4.6%和2.9%。此外,证实,在不同的特征上应用不同的网络是比将它们共同采用更糟糕的想法。顶部L / 5的后续L / 5远程触点的准确性高于前者在Careo集中的9.8%,Casp11集中的7.0%,自建立独立测试集上有5.9%。

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