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A comparative analysis of feature selection algorithms on classification of gene microarray dataset

机译:特征选择算法在基因芯片数据集分类中的比较分析

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Analysis of gene expression is important in many fields of biological research in order to retrieve the required information. As the time advances, the illness in general and cancer in particular have become more and more complex and complicated, in detecting, analyzing and curing. Cancer research is one of the major research areas in the medical field. Accurate prediction of different tumor types has great value in providing better treatment and toxicity minimization on the patients. To minimize it, the data mining algorithms are important tool and the most extensively used approach to classify gene expression data and plays an important role for cancer classification. One of the major challenges is to discover how to extract useful information from datasets. This research is based on recent advances in the machine learning based microarray gene expression data analysis with three feature selection algorithms.
机译:为了检索所需的信息,基因表达的分析在生物学研究的许多领域中都很重要。随着时间的流逝,在检测,分析和治疗中,一般疾病尤其是癌症变得越来越复杂。癌症研究是医学领域的主要研究领域之一。对不同肿瘤类型的准确预测在为患者提供更好的治疗和最小化毒性方面具有重要价值。为了使其最小化,数据挖掘算法是重要的工具,也是对基因表达数据进行分类的最广泛使用的方法,并且在癌症分类中起着重要作用。主要挑战之一是发现如何从数据集中提取有用的信息。这项研究基于具有三种特征选择算法的基于机器学习的微阵列基因表达数据分析的最新进展。

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