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Gene boosting for cancer classification based on gene expression profiles

机译:基于基因表达谱的基因分类促进癌症分类

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摘要

Gene selection is one of the important issues for cancer classification based on gene expression profiles. Filter and wrapper approaches are widely used for gene selection, where the former is hard to measure the relationship between genes and the latter requires lots of computation. We present a novel method, called gene boosting, to select relevant gene subsets by integrating filter and wrapper approaches. It repeatedly selects a set of top-ranked informative genes by a filtering algorithm with respect to a temporal training dataset constructed according to the classification result for the original training dataset. Empirical results on three microarray benchmark datasets have shown that the proposed method is effective and efficient in finding a relevant and concise gene subset. It achieved competitive performance with fewer genes in a reasonable time, as well as led to the identification of some genes frequently getting selected.
机译:基因选择是基于基因表达谱进行癌症分类的重要问题之一。过滤器和包装器方法广泛用于基因选择,前者难以测量基因之间的关系,而后者需要大量计算。我们提出了一种新的方法,称为基因增强,通过整合过滤器和包装器方法来选择相关的基因子集。对于根据原始训练数据集的分类结果构造的时间训练数据集,它通过过滤算法反复选择一组排名最高的信息基因。在三个微阵列基准数据集上的经验结果表明,所提出的方法在找到相关且简洁的基因子集方面是有效且高效的。它在合理的时间内用较少的基因获得了竞争优势,并导致鉴定了一些经常被选择的基因。

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