Development of hybrid model for improving the prediction of dengue-human protein interaction for anti-viral drug discovery

R. Revathy, A. Fathima, S. Balamurali, G. Murugaboopathi
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Abstract

Dengue fever is the most common viral disease caused by mosquitoes. Due to the lack of curable drugs, there is an urgent need to develop anti-viral against dengue disease. Several innovative computational approaches were incorporated for the discovery of a new lead molecule that acts on the dengue virus target. The target can be a viral or host protein. Predicting the type of interaction between the virus and human protein will give better knowledge in developing therapeutics against the dengue disease. The main objective of this study is to propose a hybrid model which combines feed forward back propagation neural network (FFBPNN) with firefly algorithm to predict the dengue-human protein interaction. The novelty in this study is to focus on optimising the weights and bias of the artificial neural network to improve the efficiency of algorithm. While comparing with existing C4.5 and FFBPNN classification algorithms, the results show that the proposed hybrid method fitted the interaction data efficiently and predicts the interaction type which leads to the development of anti-viral drugs. The accuracy of the classification gained by C4.5 is 88%, FFBPNN is 97% and hybrid FFBPNN is 99%.
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开发用于改进登革热-人蛋白相互作用预测的杂交模型,用于抗病毒药物的发现
登革热是由蚊子引起的最常见的病毒性疾病。由于缺乏可治愈的药物,迫切需要开发针对登革热的抗病毒药物。在发现一种作用于登革热病毒靶点的新先导分子时,采用了几种创新的计算方法。目标可以是病毒或宿主蛋白质。预测病毒与人类蛋白质之间相互作用的类型将为开发针对登革热的治疗方法提供更好的知识。本研究的主要目的是提出一种将前馈-反向传播神经网络(FFBPNN)与萤火虫算法相结合的混合模型来预测登革热-人蛋白质相互作用。本研究的新颖之处在于着重优化人工神经网络的权值和偏置,以提高算法的效率。与现有的C4.5和FFBPNN分类算法进行比较,结果表明,该混合方法能够有效地拟合相互作用数据,并预测相互作用类型,从而促进抗病毒药物的开发。C4.5的分类准确率为88%,FFBPNN为97%,混合FFBPNN为99%。
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
21
期刊介绍: Intelligent information systems and intelligent database systems are a very dynamically developing field in computer sciences. IJIIDS provides a medium for exchanging scientific research and technological achievements accomplished by the international community. It focuses on research in applications of advanced intelligent technologies for data storing and processing in a wide-ranging context. The issues addressed by IJIIDS involve solutions of real-life problems, in which it is necessary to apply intelligent technologies for achieving effective results. The emphasis of the reported work is on new and original research and technological developments rather than reports on the application of existing technology to different sets of data.
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