首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Evolutionary based ensemble framework for realizing transfer learning in HIV-1 Protease cleavage sites prediction
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Evolutionary based ensemble framework for realizing transfer learning in HIV-1 Protease cleavage sites prediction

机译:用于实现HIV-1蛋白酶切割位点的传感学习的进化基于合奏框架预测

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The role of human immunodeficiency virus (HIV) protease in viral maturation is indispensable as the drug therapy primarily targets the HIV protease for the treatment of human immunodeficiency virus infection. Protease inhibitors are designed to block the active site of the protease, thereby restraining the replication of the viral particle. However, designing efficient inhibitors is challenging due to little or no similarity of the sequence among the cleaved sites and availability of few experimentally-verified sites. In order to learn the sequence structure, support vector machines have been comprehensively used however insufficient training data degrades the performance. Thus, a cross-domain approach is adopted by the proposed ensemble model for predicting the HIV-1 protease cleavage sites. In this study, a method for combining multiple weighted classifiers optimally by incorporating the knowledge derived from various amino acid encoding techniques is proposed. As a result, each classifier pair with a specific type of heterogeneous information which is generated by the different encoding method, and the final prediction could be obtained by aggregating the locally trained classifiers. The optimally coupled sequence of features and classifiers that characterized the heterogeneous feature is achieved promptly by genetic algorithm. Furthermore, the efficiency of the model is verified by the tests conducted on the four HIV-1 protease datasets offered at UCI machine learning database. The performance parameters such as average accuracy, standard deviation, and area under curve have been evaluated on the proposed model to justify the advancements over the other state- of-the-art methods. In addition, Friedman and post hoc tests were conducted to show the significant improvement achieved by the proposed framework. These results quantified the enhancement of the proposed ensemble model performance.
机译:人免疫缺陷病毒(HIV)蛋白酶在病毒成熟中的作用是必不可少的,因为药物治疗主要靶向艾滋病毒蛋白酶治疗人免疫缺陷病毒感染。蛋白酶抑制剂设计用于阻断蛋白酶的活性位点,从而限制病毒颗粒的复制。然而,由于裂解部位之间的序列很少或没有相似性和少数实验验证的位点的可用性,设计有效抑制剂是挑战性的。为了学习序列结构,已经全面地使用了支持向量机,但是训练数据不足降低了性能。因此,所提出的集合模型采用跨域方法,用于预测HIV-1蛋白酶切割位点。在该研究中,提出了一种通过包含衍生自各种氨基酸编码技术的知识来最佳地结合多重加权分类器的方法。结果,每个分类器对具有由不同编码方法生成的特定类型的异构信息,以及通过聚合本地训练的分类器来获得最终预测。通过遗传算法迅速实现了表征异构特征的最佳耦合的特征和分类器序列。此外,通过在UCI机器学习数据库提供的四个HIV-1蛋白酶数据集上进行的测试验证了模型的效率。在所提出的模型上评估了曲线的平均精度,标准偏差和面积等性能参数,以证明对其他最先进的方法的进步辩护。此外,弗里德曼和后HOC测试进行了表现出通过提出的框架实现的显着改善。这些结果量化了提高建议的集合模型性能。

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