A Self-Tuning Genetic Algorithm with Applications in Biomarker Discovery

D. Popovic, Charalampos N. Moschopoulos, Ryo Sakai, A. Sifrim, J. Aerts, Y. Moreau, B. Moor
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引用次数: 5

Abstract

Recent developments in the field of-omics technologies brought great potential for conducting biomedical research in very efficient manner, but also raised a plethora of new computational challenges to be addressed. Extremely high dimensionality accompanied with poor signal-to-noise ratio and small sample size of data resulting from high-throughput experiments pose previously unprecedented problem, creating an increasing demand for innovative analytical strategies. In this work we propose an island model-based genetic algorithm for multivariate feature selection in the context of-omics data, which accommodates to a particular classification scenario via dynamic tuning of its parameters. We demonstrate it on two publicly available data sets containing gene expression profiles corresponding to the two distinct biomedical questions. We show that the algorithm consistently outperforms two additional feature selection schemes across data sets, regardless to which method is used in the subsequent classification step.
自调整遗传算法在生物标志物发现中的应用
组学技术领域的最新发展为以非常有效的方式进行生物医学研究带来了巨大的潜力,但也提出了大量需要解决的新的计算挑战。高通量实验导致的极高的维数、较差的信噪比和较小的数据样本量带来了前所未有的问题,对创新分析策略的需求日益增加。在这项工作中,我们提出了一种基于岛屿模型的遗传算法,用于组学数据背景下的多变量特征选择,该算法通过动态调整其参数来适应特定的分类场景。我们在两个公开可用的数据集上展示了它,其中包含对应于两个不同生物医学问题的基因表达谱。我们表明,无论在随后的分类步骤中使用哪种方法,该算法在数据集上始终优于另外两种特征选择方案。
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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