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Cancer data classification by quantum-inspired immune clone optimization-based optimal feature selection using gene expression data: deep learning approach

机译:癌症数据分类由量子激发。所文中针对免疫克隆优化功能选择使用基因表达数据:深学习方法

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Purpose Gene selection is considered as the fundamental process in the bioinformatics field. The existing methodologies pertain to cancer classification are mostly clinical basis, and its diagnosis capability is limited. Nowadays, the significant problems of cancer diagnosis are solved by the utilization of gene expression data. The researchers have been introducing many possibilities to diagnose cancer appropriately and effectively. This paper aims to develop the cancer data classification using gene expression data. Design/methodology/approach The proposed classification model involves three main phases: "(1) Feature extraction, (2) Optimal Feature Selection and (3) Classification". Initially, five benchmark gene expression datasets are collected. From the collected gene expression data, the feature extraction is performed. To diminish the length of the feature vectors, optimal feature selection is performed, for which a new meta-heuristic algorithm termed as quantum-inspired immune clone optimization algorithm (QICO) is used. Once the relevant features are selected, the classification is performed by a deep learning model called recurrent neural network (RNN). Finally, the experimental analysis reveals that the proposed QICO-based feature selection model outperforms the other heuristic-based feature selection and optimized RNN outperforms the other machine learning methods. Findings The proposed QICO-RNN is acquiring the best outcomes at any learning percentage. On considering the learning percentage 85, the accuracy of the proposed QICO-RNN was 3.2% excellent than RNN, 4.3% excellent than RF, 3.8% excellent than NB and 2.1% excellent than KNN for Dataset 1. For Dataset 2, at learning percentage 35, the accuracy of the proposed QICO-RNN was 13.3% exclusive than RNN, 8.9% exclusive than RF and 14.8% exclusive than NB and KNN. Hence, the developed QICO algorithm is performing well in classifying the cancer data using gene expression data accurately. Originality/value This paper introduces a new optimal feature selection model using QICO and QICO-based RNN for effective classification of cancer data using gene expression data. This is the first work that utilizes an optimal feature selection model using QICO and QICO-RNN for effective classification of cancer data using gene expression data.
机译:目的基因的选择被认为是生物信息学领域的基本过程。现有的方法属于癌症分类主要是临床基础,其诊断能力是有限的。癌症诊断的重要问题解决了利用基因表达数据。适当的可能性来诊断癌症和有效的。癌症基因表达数据分类使用数据。分类模型包括三个主要阶段:“(1)特征提取,(2)最优特性选择和(3)分类”。五个指标的基因表达数据集收集。数据,进行特征提取。降低特征向量的长度,执行最优特征选择,一个新的称为meta-heuristic算法量子激发免疫克隆优化所使用算法(QICO)。特征选择,分类由深学习模型递归神经网络(RNN)。实验分析表明,该优于QICO-based特征选择模型选择和其他heuristic-based特性优化RNN优于其他机器学习方法。获得最好的结果在任何学习吗百分比。85年,比例的准确性提出QICO-RNN比RNN的3.2%,4.3%优秀的射频,比NB和优秀的3.8%数据集1 2.1%优秀的资讯。数据集2,在学习35比例,拟议中的QICO-RNN精度为13.3%比RNN独家,独家比射频和8.9%14.8%比NB独家和资讯。开发QICO算法表现良好分类癌症使用基因表达数据数据准确。引入了一个新的最优特征选择模型使用QICO和QICO-based RNN的有效分类使用基因的癌症数据表达数据。利用最优特征选择模型使用QICO和QICO-RNN有效的分类癌症数据使用基因表达数据。

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