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A Comparison of Feature Selection Methods for the Detection of Breast Cancers in Mammograms: Adaptive Sequential Floating Search vs. Genetic Algorithm

机译:乳房图中乳腺癌检测特征选择方法的比较:自适应顺序浮动搜索与遗传算法

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This paper presents a comparison of feature selection methods for a unified detection of breast cancers in mammograms. A set of features, including curvilinear features, texture features, Gabor features, and multi-resolution features, were extracted from a region of 512×512 pixels containing normal tissue or breast cancer. Adaptive floating search and genetic algorithm were used for the feature selection, and a linear discriminant analysis (LDA) was used for the classification of cancer regions from normal regions. The performance is evaluated using A{sub}D the area under ROC curve. On a dataset consisting 296 normal regions and 164 cancer regions (53 masses, 56 spiculated lesions, and 55 calcifications), adaptive floating search achieved A{sub}z=0.96 with comparison to A{sub}z=0.93 of CHC genetic algorithm and A{sub}z=0.90 of simple genetic algorithm.
机译:本文介绍了乳房X线图中乳腺癌统一检测的特征选择方法的比较。从包含正常组织或乳腺癌的512×512像素的区域中提取了一组特征,包括曲线特征,纹理特征,Gabor特征和多分辨率特征。自适应浮动搜索和遗传算法用于特征选择,并且线性判别分析(LDA)用于癌症区的分类来自普通区域。使用ROC曲线下的区域进行评估性能。在组成的数据集和164个癌症区(53质量群,56个刺激病变和55次钙化)上,与CHC遗传算法的{sub} z = 0.93相比,实现了自适应浮动搜索{sub} z = 0.96简单遗传算法的{sub} z = 0.90。

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