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宾厄姆深度神经网络与对抗性鱼群优化的蛋白质结构预测

Bingham deep neural and oppositional fish swarm optimized protein structure prediction.

作者信息

Nallasamy Varanavasi, S Malarvizhi

机构信息

Department of Computer Science, Periyar University, Salem, Tamil Nadu, India.

Department of Computer Science, Thiruvalluvar Government Arts College, Namakkal, Tamil Nadu, India.

出版信息

J Biomol Struct Dyn. 2022;40(19):8706-8724. doi: 10.1080/07391102.2021.1915181. Epub 2021 May 6.

DOI:10.1080/07391102.2021.1915181
PMID:33955323
Abstract

It is familiar that essential proteins take part in managing cellular activities in living organisms. Moreover, protein structure prediction from its amino acid sequence is advantageous to the comprehending of cellular functions. Formerly, several essential protein prediction methods have been proposed. However, those existing prediction methods were not satisfactory because to low sensitivity to imbalance characteristics. To address this issue, this paper presents a novel secondary protein structure prediction method, called, Bingham Deep Convolutional-based Oppositional Artificial Fish Optimized (BDC-OAFO). First, a protein structure identification framework, called, Bingham Distributed Deep Convolutional (BDDC) is designed to identify the essential proteins by eliminating the imbalanced learning issue. Next, secondary structure prediction framework, called, Oppositional Artificial Fish Swarm Optimization is proposed that obtain precise prediction results. Then, predicting secondary protein structure by emulating three biological behaviors of artificial fishes, including foraging behavior, following behavior, swarming behavior in which process, proximal count, oppositional function and Gaussian function are utilized. To evaluate the performance of BDC-OAFO method, we conduct experiments on Protein Data Bank dataset the experimental results show that our method BDC-OAFO achieves a better performance for identifying essential proteins and precise prediction in comparison with several other well-known prediction methods, which confirms the significance of BDC-OAFO.Communicated by Ramaswamy H. Sarma.

摘要

众所周知,必需蛋白质参与生物体细胞活动的管理。此外,从氨基酸序列预测蛋白质结构有利于理解细胞功能。以前,已经提出了几种必需蛋白质预测方法。然而,现有的预测方法并不令人满意,因为对不平衡特征的敏感性较低。为了解决这个问题,本文提出了一种新的二级蛋白质结构预测方法,称为基于宾汉深度卷积的对立人工鱼优化(BDC-OAFO)。首先,设计了一种称为宾汉分布深度卷积(BDDC)的蛋白质结构识别框架,通过消除不平衡学习问题来识别必需蛋白质。接下来,提出了称为对立人工鱼群优化的二级结构预测框架,以获得精确的预测结果。然后,通过模拟人工鱼的三种生物行为来预测二级蛋白质结构,包括觅食行为、跟随行为、群聚行为,在此过程中,利用了近端计数、对立函数和高斯函数。为了评估BDC-OAFO方法的性能,我们在蛋白质数据库数据集上进行了实验,实验结果表明,与其他几种著名的预测方法相比,我们的BDC-OAFO方法在识别必需蛋白质和精确预测方面取得了更好的性能,这证实了BDC-OAFO的重要性。由拉马斯瓦米·H·萨尔马通讯。

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