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Using Wavelet-Based Features to Identify Masses in Dense Breast Parenchyma

机译:使用基于小波的特征来识别密集的乳房实质中的群众

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Automated detection of masses on mammograms is challenged by the presence of dense breast parenchyma. The aim of this study is to investigate the feasibility of wavelet-based feature analysis in identifying spiculated and circumscribed masses in dense breast parenchyma. The method includes an edge detection step for breast border identification and employs Gaussian mixture modeling for dense parenchyma labeling. Subsequently, wavelet decomposition is performed and intensity as well as orientation features are extracted from approximation and detail subimages, respectively. Logistic regression analysis (LRA) is employed to differentiate spiculated and circumscribed masses from normal dense parenchyma. The proposed method is tested in 90 dense mammograms containing spiculated masses (30), circumscribed masses (30) and normal parenchyma (30). Free-response receiver operating characteristic (FROC) analysis is used to evaluate the performance of the method, achieving 83.3% sensitivity at 1.5 and 1.8 false positives per image for identifying spiculated and circumscribed masses, respectively.
机译:通过致密的乳房实质存在致密地攻击乳房X线图的自动检测。本研究的目的是探讨小波的特征分析的可行性,以识别密集的乳房实质中的皮刺和外接块。该方法包括用于乳房边界识别的边缘检测步骤,并采用高斯混合模拟的致密实质标记。随后,执行小波分解,并且分别从近似和细节子图像中提取强度以及取向特征。使用逻辑回归分析(LRA)用于将刺激和外接的质量与正常致密的实质分解。该方法在90次致密的乳房X线照片中测试了含有刺激物(30),外部肿块(30)和正常的实质(30)。自由响应接收器操作特性(FROC)分析用于评估该方法的性能,每张图像的1.5和1.8误报的灵敏度分别为识别刺激和外接的肿块,实现了83.3%的灵敏度。

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