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Classification of Masses on Mammograms using Support Vector Machine

机译:支持向量机在乳腺X线照片上的质量分类

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Mammography is the most effective method for early detection of breast cancer. However, the positive predictive value for classification of malignant and benign lesion from mammographic images is not very high. Clinical studies have shown that most biopsies for cancer are very low, between 15% and 30%. It is important to increase the diagnostic accuracy by improving the positive predictive value to reduce the number of unnecessary biopsies. In this paper, a new classification method was proposed to distinguish malignant from benign masses in mammography by Support Vector Machine (SVM) method. Thirteen features were selected based on receiver operating characteristic (ROC) analysis of classification using individual feature. These features include four shape features, two gradient features and seven Laws features. With these features, SVM was used to classify the masses into two categories, benign and malignant, in which a Gaussian kernel and sequential minimal optimization learning technique are performed. The data set used in this study consists of 193 cases, in which there are 96 benign cases and 97 malignant cases. The leave-one-out evaluation of SVM classifier was taken. The results show that the positive predict value of the presented method is 81.6% with the sensitivity of 83.7% and the false-positive rate of 30.2%. It demonstrated that the SVM-based classifier is effective in mass classification.
机译:乳房X线照相术是早期发现乳腺癌的最有效方法。然而,根据乳腺X线摄影图像对恶性和良性病变进行分类的阳性预测值不是很高。临床研究表明,大多数癌症活检率很低,在15%至30%之间。重要的是,通过改善阳性预测值来减少不必要的活检次数,以提高诊断准确性。本文提出了一种新的分类方法,通过支持向量机(SVM)方法来区分乳腺X线摄影中的良恶性肿块。基于使用单个功能的分类的接收器操作特性(ROC)分析,选择了13个功能。这些特征包括四个形状特征,两个渐变特征和七个定律特征。利用这些功能,SVM被用于将质量分为良性和恶性两类,其中执行了高斯核和顺序最小优化学习技术。本研究使用的数据集包括193例病例,其中有96例良性病例和97例恶性病例。进行了SVM分类器的留一法评估。结果表明,该方法的阳性预测值为81.6%,灵敏度为83.7%,假阳性率为30.2%。这表明基于SVM的分类器在质量分类中是有效的。

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