Feature selection for mining SNP from Leukaemia cancer using Genetic Algorithm with BCO

P. H. Prathibha, C. P. Chandran
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引用次数: 2

Abstract

Single Nucleotide Polymorphisms (SNPs) are the most common form of genetic variation in humans comprising nearly 1/1,000th of the average human genome. The intelligent analysis of databases may be affected by the presence of unimportant features, which motivates the application of feature selection. In this work, we have proposed a genetic based feature selection. Genetic algorithm (GA) is a search heuristic that mimics the process of natural selection. This heuristic is routinely used to generate useful solutions to optimization and search problems. Clustering is the task of grouping a set of objects in such a way that objects in the same group are more similar to each other than to those in other groups. Bee Colony optimization (BCO) algorithm is a population-based search algorithm. It mimics the food foraging behaviour of honey bee colonies. In its basic version the algorithm performs a kind of neighbourhood search combined with global search, and can be used for both combinatorial optimization and continuous optimization. In this paper the feature selection approach Genetic clustering with BCO was successfully applied to Leukamia cancer data sets. The feature selection approach has resulted in 80% reduction in number of features. The accuracy and specificity for the significant gene/SNP set was 70% and 82%, respectively. The number of features has been considerably reduced while the quality of knowledge was enhanced.
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基于BCO的遗传算法挖掘白血病SNP特征选择
单核苷酸多态性(SNPs)是人类最常见的遗传变异形式,占人类平均基因组的近千分之一。不重要特征的存在会影响数据库的智能分析,这就促使了特征选择的应用。在这项工作中,我们提出了一种基于遗传的特征选择。遗传算法(GA)是一种模拟自然选择过程的搜索启发式算法。这种启发式通常用于生成有用的优化和搜索问题的解决方案。聚类是对一组对象进行分组的任务,其方式是使同一组中的对象彼此之间比其他组中的对象更相似。蜂群优化(BCO)算法是一种基于群体的搜索算法。它模仿蜜蜂群体的食物觅食行为。该算法的基本版本是将邻域搜索与全局搜索相结合,既可用于组合优化,也可用于连续优化。本文将基于BCO的特征选择遗传聚类方法成功地应用于白血病数据集。特征选择方法使特征数量减少了80%。显著基因/SNP组的准确性和特异性分别为70%和82%。特征的数量大大减少,而知识的质量得到了提高。
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