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An Enhanced Protein Fold Recognition for Low Similarity Datasets Using Convolutional and Skip-Gram Features With Deep Neural Network

机译:利用深神经网络的卷积和跳过革兰特征的低相似性数据集增强蛋白质折叠识别

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摘要

The protein fold recognition is one of the important tasks of structural biology, which helps in addressing further challenges like predicting the protein tertiary structures and its functions. Many machine learning works are published to identify the protein folds effectively. However, very few works have reported the fold recognition accuracy above 80% on benchmark datasets. In this study, an effective set of global and local features are extracted from the proposed Convolutional (Conv) and SkipXGram bi-gram (SXGbg) techniques, and the fold recognition is performed using the proposed deep neural network. The performance of the proposed model reported 91.4% fold accuracy on one of the derived low similarity (< 25%) datasets of latest extended version of SCOPe_2.07. The proposed model is further evaluated on three popular and publicly available benchmark datasets such as DD, EDD, and TG and obtained 85.9%, 95.8%, and 88.8% fold accuracies, respectively. This work is first to report fold recognition accuracy above 85% on all the benchmark datasets. The performance of the proposed model has outperformed the best state-of-the-art models by 5% to 23% on DD, 2% to 19% on EDD, and 3% to 30% on TG dataset.
机译:蛋白质折叠识别是结构生物学的重要任务之一,这有助于解决预测蛋白质三级结构及其功能的进一步挑战。许多机器学习作品被公布以有效地识别蛋白质。但是,很少有效报告了基准数据集上80%以上的折叠识别准确性。在本研究中,从所提出的卷积(CONV)和SKIPXGAGBIGRAM(SXGBG)技术中提取有效的全局和局部特征,并且使用所提出的深神经网络来执行折叠识别。所提出的模型的性能报告了最新扩展版范围的衍生低相似性(<25%)数据集的折叠精度为91.4%。所提出的模型进一步在三个流行的和公开的基准数据集上进行评估,例如DD,EDD和TG,并分别获得85.9%,95.8%和88.8%的折叠精度。这项工作首先在所有基准数据集上报告折叠识别准确性以上85%。所提出的模型的性能优于最佳最先进的模型在DD上的5%至23%,EDD的2%至19%,TG数据集上的3%至30%。

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