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A hybrid gene selection method for microarray recognition

机译:微阵列识别的杂交基因选择方法

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摘要

DNA microarray data is expected to be a great help in the development of efficient diagnosis and tumor classification. However, due to the small number of instances compared to a large number of genes, many of the computational learning methods encounter difficulties to select the low subgroups. In order to select significant genes from the high dimensional data for tumor classification, nowadays, several researchers are exploring microarray data using various gene selection methods. However, there is no agreement between existing gene selection techniques that produce the relevant gene subsets by which it improves the classification accuracy. This motivates us to invent a new hybrid gene selection method which helps to eliminate the misleading genes and classify a disease correctly in less computational time. The proposed method composes of two-stage, in the first stage, EGS method using multi-layer approach and f-score approach is applied to filter the noisy and redundant genes from the dataset. In the second stage, adaptive genetic algorithm (AGA) work as a wrapper to identify significant genes subsets from the reduced datasets produced by EGS that can contribute to detect cancer or tumor. AGA algorithm uses the support vector machine (SVM) and Naive Bayes (NB) classifier as a fitness function to select the highly discriminating genes and to maximize the classification accuracy. The experimental results show that the proposed framework provides additional support to a significant reduction of cardinality and outperforms the state-of-art gene selection methods regarding accuracy and an optimal number of genes. (C) 2018 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:DNA微阵列数据预计在高效诊断和肿瘤分类方面将有很大的帮助。但是,由于大量基因相比,由于大量基因少,因此许多计算学习方法遇到选择低子组的困难。为了从高尺寸数据中选择显着的基因,目前,几个研究人员正在使用各种基因选择方法探索微阵列数据。然而,现有的基因选择技术之间没有达成一致,其产生相关基因子集,其通过提高分类精度。这激发了我们发明一种新的杂交基因选择方法,有助于消除误导性基因,并在较少的计算时间内正确分类疾病。所提出的方法组成两阶段,在使用多层方法的第一阶段,EGS方法和F分数方法中,应用于从数据集中过滤噪声和冗余基因。在第二阶段,自适应遗传算法(AGA)作为包装器作为包装器,以识别来自例如可以有助于检测癌症或肿瘤产生的减少的数据集的重要基因子集。 AGA算法使用支持向量机(SVM)和NAIVE Bayes(NB)分类器作为选择高度辨别基因的健身功能,并最大限度地提高分类精度。实验结果表明,该框架提供了额外的支持,以显着降低基数,优于最先进的基因选择方法关于准确性和最佳基因的最佳基因。 (c)2018年纳雷斯州博士生物庭院研究所和波兰科学院的生物医学工程。 elsevier b.v出版。保留所有权利。

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