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The effect of feature selection methods on computer-aided detection of masses in mammograms.

机译:特征选择方法对计算机辅助检测乳房X线照片质量的影响。

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摘要

In computer-aided diagnosis (CAD) research, feature selection methods are often used to improve generalization performance of classifiers and shorten computation times. In an application that detects malignant masses in mammograms, we investigated the effect of using a selection criterion that is similar to the final performance measure we are optimizing, namely the mean sensitivity of the system in a predefined range of the free-response receiver operating characteristics (FROC). To obtain the generalization performance of the selected feature subsets, a cross validation procedure was performed on a dataset containing 351 abnormal and 7879 normal regions, each region providing a set of 71 mass features. The same number of noise features, not containing any information, were added to investigate the ability of the feature selection algorithms to distinguish between useful and non-useful features. It was found that significantly higher performances were obtained using feature sets selected by the general test statistic Wilks' lambda than using feature sets selected by the more specific FROC measure. Feature selection leads to better performance when compared to a system in which all features were used.
机译:在计算机辅助诊断(CAD)研究中,特征选择方法通常用于提高分类器的泛化性能并缩短计算时间。在检测乳房X光照片中恶性肿块的应用中,我们研究了使用与我们正在优化的最终性能指标类似的选择标准的效果,即在预定范围内自由响应接收机工作特性下系统的平均灵敏度(FROC)。为了获得所选特征子集的泛化性能,对包含351个异常区域和7879个正常区域的数据集执行了交叉验证程序,每个区域提供一组71个质量特征。添加了相同数量的噪声特征(不包含任何信息),以研究特征选择算法区分有用特征和无效特征的能力。结果发现,使用一般测试统计数据Wilksλ选择的特征集比使用更具体的FROC度量选择的特征集获得了更高的性能。与使用所有功能的系统相比,功能选择可带来更好的性能。

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