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iACP-GAEnsC: Evolutionary genetic algorithm based ensemble classification of anticancer peptides by utilizing hybrid feature space

机译:iACP-GAEnsC:利用进化特征空间的基于进化遗传算法的抗癌肽集合分类

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Cancer is a fatal disease, responsible for one-quarter of all deaths in developed countries. Traditional anticancer therapies such as, chemotherapy and radiation, are highly expensive, susceptible to errors and ineffective techniques. These conventional techniques induce severe side-effects on human cells. Due to perilous impact of cancer, the development of an accurate and highly efficient intelligent computational model is desirable for identification of anticancer peptides. In this paper, evolutionary intelligent genetic algorithm-based ensemble model, iACP-GAEnsC', is proposed for the identification of anticancer peptides. In this model, the protein sequences are formulated, using three different discrete feature representation methods, i.e., amphiphilic Pseudo amino acid composition, g-Gap dipeptide composition, and Reduce amino acid alphabet composition. The performance of the extracted feature spaces are investigated separately and then merged to exhibit the significance of hybridization. In addition, the predicted results of individual classifiers are combined together, using optimized genetic algorithm and simple majority technique in order to enhance the true classification rate. It is observed that genetic algorithm based ensemble classification outperforms than individual classifiers as well as simple majority voting base ensemble. The performance of genetic algorithm-based ensemble classification is highly reported on hybrid feature space, with an accuracy of 96.45%. In comparison to the existing techniques, 'iACP-GAEnsC' model has achieved remarkable improvement in terms of various performance metrics. Based on the simulation results, it is observed that 'iACP-GAEnsC' model might be a leading tool in the field of drug design and proteomics for researchers. (C) 2017 Elsevier B.V. All rights reserved.
机译:癌症是一种致命疾病,占发达国家所有死亡人数的四分之一。传统的抗癌疗法(例如化学疗法和放射疗法)非常昂贵,容易出错且技术无效。这些常规技术在人细胞上引起严重的副作用。由于癌症的危险影响,需要开发准确而高效的智能计算模型来鉴定抗癌肽。本文提出了基于进化智能遗传算法的集成模型iACP-GAEnsC',用于鉴定抗癌肽。在该模型中,使用三种不同的离散特征表示方法(即两亲性伪氨基酸组成,g-Gap二肽组成和Reduce氨基酸字母组成)来配制蛋白质序列。分别研究提取的特征空间的性能,然后将其合并以显示杂交的重要性。此外,使用优化的遗传算法和简单多数算法将各个分类器的预测结果结合在一起,以提高真实分类率。可以看出,基于遗传算法的集成分类比单个分类器以及简单的多数投票基础集成都要好。基于遗传算法的集成分类的性能在混合特征空间上得到了很高的报道,准确性为96.45%。与现有技术相比,“ iACP-GAEnsC”模型在各种性能指标方面取得了显着改善。根据模拟结果,可以发现“ iACP-GAEnsC”模型可能是研究人员在药物设计和蛋白质组学领域的领先工具。 (C)2017 Elsevier B.V.保留所有权利。

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