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Usage Of Class Dependency Based Feature Selection And Fuzzy Weighted Pre-processing Methods On Classification Of Macular Disease

机译:基于分类依赖的特征选择和模糊加权预处理方法在黄斑疾病分类中的应用

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In this paper,we propose a new feature selection method called class dependency based feature selection for dimensionality reduction of the macular disease dataset from pattern electroretinography (PERG) signals.In order to diagnosis of macular disease,we have used class dependency based feature selection as feature selection process,fuzzy weighted pre-processing as weighted process and decision tree classifier as decision making.The proposed system consists of three parts.First,we have reduced to 9 features number of features of macular disease dataset that has 63 features using class dependency based feature selection,which is first developed by ours.Second,the macular disease dataset that has 9 features is weighted by using fuzzy weighted pre-processing.And finally,decision tree classifier was applied to PERG signals to distinguish between healthy eye and diseased eye (macula diseases).The employed class dependency based feature selection,fuzzy weighted pre-processing and decision tree classifier have reached to 96.22%,96.27% and 96.30% classification accuracies using 5-10-15-fold cross-validation,respectively.The results confirmed that the medical decision making system based on the class dependency based feature selection,fuzzy weighted pre-processing and decision tree classifier has potential in detecting the macular disease.The stated results show that the proposed method could point out the ability of design of a new intelligent assistance diagnosis system.
机译:在本文中,我们提出了一种新的特征选择方法,称为基于类别依赖性的特征选择,用于从模式视网膜电图(PERG)信号中减少黄斑疾病数据集的维数。为了诊断黄斑疾病,我们使用了基于类别依赖性的特征选择作为特征。特征选择过程,模糊加权预处理作为加权过程,决策树分类器作为决策。提出的系统由三部分组成。首先,利用类相关性,将具有63个特征的黄斑疾病数据集的特征数量减少到9个第二,利用模糊加权预处理对具有9个特征的黄斑疾病数据集进行加权。最后,将决策树分类器应用于PERG信号,以区分健康眼和患病眼(黄斑病)。基于类别依赖的特征选择,模糊加权预处理和决策t ree分类器通过5-10-15倍交叉验证分别达到了96.22%,96.27%和96.30%的分类精度。结果证明,基于分类依赖的特征选择,模糊加权预判的医疗决策系统处理和决策树分类器在黄斑疾病的检测中具有潜力。所述结果表明,该方法可以指出一种新型智能辅助诊断系统的设计能力。

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