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Wavelet and Symmetric Stochastic Neighbor Embedding based Computer Aided Analysis for Breast Cancer

机译:基于小波和对称随机邻域嵌入的乳腺癌计算机辅助分析

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Mammography is the most perceptive method for the detection of early breast cancer. The abnormalities of breast are analyzed by digital mammogram images and the most important indicators of breast malignancy are microcalcifications and masses. An efficient Computer Aided Diagnosis (CAD) system for breast cancer classification is proposed in this study based on Discrete Wavelet Transform (DWT), Symmetric Stochastic Neighbor Embedding (SSNE) and Support Vector Machine (SVM) using digital mammogram images. Two technical approaches are employed for feature selection from the wavelet decomposed mammogram for classification. They are based on the application of SSNE over the decomposed image. At first, SSNE is applied to the whole wavelet decomposed image whereas in the second technique it is applied to individual sub band of the wavelet decomposed image. The whole mammogram classification system is implemented in two consecutive stages. The first stage of the proposed system classifies the mammogram image into normal or abnormal. The severity of the predicted abnormality is further classified either it is benign or malignant associated with mass or microcalcification images. The performance of the proposed mammogram classification system is evaluated using Mammographic Image Analysis Society (MIAS) database images.
机译:乳房X线照相术是检测早期乳腺癌的最有感知力的方法。乳腺异常通过数字化乳腺X线照片进行分析,乳腺恶性肿瘤最重要的指标是微钙化和肿块。基于离散小波变换(DWT),对称随机邻域嵌入(SSNE)和支持向量机(SVM),使用数字乳房X线照片,提出了一种有效的乳腺癌分类计算机辅助诊断(CAD)系统。从小波分解的乳房X线照片选择特征的两种技术方法用于分类。它们基于SSNE在分解图像上的应用。首先,SSNE被应用于整个小波分解图像,而在第二种技术中,它被应用于小波分解图像的各个子带。整个乳房X线照片分类系统分两个连续阶段实施。所提出系统的第一阶段将乳房X线照片图像分类为正常或异常。预测异常的严重程度可进一步分为与质量或微钙化图像相关的良性或恶性。建议的乳房X线照片分类系统的性能是使用乳房X线图像分析协会(MIAS)数据库图像进行评估的。

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