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A survey on genetic algorithm based feature selection for disease diagnosis system

机译:基于遗传算法的疾病诊断系统特征选择研究

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Computer Aided Diagnosis (CAD) has been a rapidly growing, dynamic area of research in medical imaging. In recent years, significant and serious efforts have been made towards the development of the CAD system in diagnostic radiology. Machine learning (ML) plays a vital role in CAD because objects such as organs may not be signified precisely by a simple equation and therefore pattern recognition essentially involves learning from examples. In order to reduce the dimensions of the dataset and to increase the classification accuracy rate the feature selection has to be done. Feature Selection (FS) is an important issue in building classification systems. Evolutionary algorithms are an important emergent computing methodology. Genetic Algorithm (GA) being a heuristic search algorithm is generally used to detect important features for large dimensional datasets. This paper surveys the existing literature about the GA for the feature selection. This study also comprises a snapshot of GA from the author's perspective, including variations in the algorithm, modifications and refinements introduced to prevent the local convergence and hybridization of GA with other heuristic algorithms. In the last part of the paper, some of the topics within this field are listed that has to be considered as promising areas of future research.
机译:计算机辅助诊断(CAD)一直是医学成像研究中迅速发展的动态领域。近年来,在诊断放射学中的CAD系统的开发方面已经做出了巨大而认真的努力。机器学习(ML)在CAD中起着至关重要的作用,因为诸如器官之类的对象可能无法通过简单的方程式精确表示,因此模式识别本质上涉及从示例中学习。为了减小数据集的维数并提高分类准确率,必须进行特征选择。功能选择(FS)是建筑物分类系统中的重要问题。进化算法是一种重要的紧急计算方法。遗传算法(GA)是一种启发式搜索算法,通常用于检测大型数据集的重要特征。本文调查了有关遗传算法用于特征选择的现有文献。这项研究还从作者的角度对GA进行了概述,包括算法的变化,为防止GA与其他启发式算法进行局部收敛和混合而引入的修改和改进。在本文的最后一部分,列出了该领域内的一些主题,这些主题必须被视为未来研究的有希望的领域。

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