基于数字乳房x线图像的多支持向量机分类器有效检测肿块异常并进行分类

G. Jothilakshmi, A. Raaza
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引用次数: 21

摘要

乳腺癌是最常见的癌症之一,也是女性死亡率上升的主要原因。乳房x光检查是早期发现乳腺癌的有效方法。数字乳房x光检查已经成为检测乳腺癌最有效的来源。本文提出了一种基于多支持向量机分类器的数字乳房x线图像肿块异常检测与分类方法。本研究的目的是为了提高影像处理的诊断准确性和肿块区良恶性异常的最佳分类,减少乳房影像的误分类。使用基于区域的分割方法从分割后的图像中检测出恶性和良性异常,这些异常对应于感兴趣区域(roi)或异常区域。利用灰度共生矩阵(glcm)从ROI样本中提取基于纹理的特征。为了在恶性和良性样本之间进行分类,使用多支持向量机(SVM)对纹理特征的最佳子集进行分类。本文的有效性是用分类精度来检验的,它产生了94%的准确率。
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Effective detection of mass abnormalities and its classification using multi-SVM classifier with digital mammogram images
Breast cancer is one of the most common kind of cancer, as well as it's the major cause in increasing mortality rate in women. Mammography is the effective method that is used for the early detection of breast cancer. Digital mammograms have become the most effective source for the detection of breast cancer. This paper proposes a method for the detection and classification of mass abnormalities in digital mammogram images using multi SVM classifier. The goal of this research is to increase the diagnostic accuracy of image processing and optimum classification between malignant and benign abnormalities in mass region which reduces the misclassification of breast images. Malignant and benign abnormalities are detected from the segmented images using region based segmentation, which correspond to the Regions of Interest (ROIs) or abnormal regions. Texture based features are extracted from the ROI samples using Gray Level Co-Occurrence Matrices (GLCMs). For the purpose of classification between malignant and benign samples, the optimum subset of texture features are classified using a Multi-Support Vector Machine (SVM). The effectiveness of this paper is examined using classification accuracy, which produced an accuracy of 94%.
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