An Approach Using Hybrid Methods to Select Informative Genes from Microarray Data for Cancer Classification

M. S. Mohamad, S. Omatu, M. Yoshioka, S. Deris
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引用次数: 7

Abstract

Recent advances in microarray technology allow scientists to measure expression levels of thousands of genes simultaneously in human tissue samples. This technology has been increasingly used in cancer research because of its potential for classification of the tissue samples based only on gene expression levels. A major problem in these microarray data is that the number of genes greatly exceeds the number of tissue samples. Moreover, these data have a noisy nature. It has been shown from literature review that selecting a small subset of informative genes can lead to an improved classification accuracy. Thus, this paper aims to select a small subset of informative genes that is most relevant for the cancer classification. To achieve this aim, an approach using two hybrid methods has been proposed. This approach is assessed on two well-known microarray data. The experimental results have shown that the gene subsets are very small in size and yield better classification accuracy as compared with other previous works as well as four methods experimented in this work. In addition, a list of informative genes in the best subsets is also presented for biological usage.
利用杂交方法从微阵列数据中选择信息基因用于癌症分类
微阵列技术的最新进展使科学家能够同时测量人体组织样本中数千个基因的表达水平。这项技术越来越多地用于癌症研究,因为它有可能仅根据基因表达水平对组织样本进行分类。这些微阵列数据的一个主要问题是基因的数量大大超过了组织样本的数量。此外,这些数据具有噪声性质。文献综述表明,选择一小部分信息基因可以提高分类的准确性。因此,本文旨在选择一小部分与癌症分类最相关的信息基因。为了实现这一目标,提出了一种采用两种混合方法的方法。该方法在两个众所周知的微阵列数据上进行了评估。实验结果表明,基因子集的大小非常小,与以往的工作以及本工作中实验的四种方法相比,具有更好的分类精度。此外,还提供了最佳子集中的信息基因列表,以供生物学使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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