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A Hybrid Cancer Classification Model Based Recursive Binary Gravitational Search Algorithm in Microarray Data

机译:微阵列数据中基于混合癌症分类模型的递归二进制引力搜索算法

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Nowadays, in clinical medicine diagnosticians usually use DNA microarray datasets for diagnosis and classification of cancer. However, DNA microarray datasets typically have very large number of genes and less number of samples, therefore, before diagnosis and classification of cancer it is quite requisite to select most relevant genes. In this paper, we have developed a two phase classification model in which most relevant genes are selected by integrating ReliefF with Recursive Binary Gravitational Search Algorithm (RBGSA) in the help of a classifier of Multinomial Naive Bayes. The RBGSA recursively transforms a very raw gene space to an optimized one at each iteration while not degrading the accuracy. We evaluate our model by comparing it with 6 other known methods on 6 different microarray datasets of cancer. Comparison results show that our model gets substantial improvements in accuracy over other methods.
机译:如今,在临床医学中,诊断医生通常使用DNA微阵列数据集来诊断和分类癌症。但是,DNA微阵列数据集通常具有大量基因,而样本数量却很少,因此,在诊断和分类癌症之前,非常有必要选择最相关的基因。在本文中,我们开发了一个两阶段分类模型,其中在多项式朴素贝叶斯分类器的帮助下,通过将ReliefF与递归二进制引力搜索算法(RBGSA)集成来选择最相关的基因。 RBGSA在每次迭代时都会将非常原始的基因空间递归转换为优化的基因空间,而不会降低准确性。我们通过与6种不同的癌症微阵列数据集上的6种其他已知方法进行比较来评估模型。比较结果表明,与其他方法相比,我们的模型在准确性上有了很大的提高。

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