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A fully-automated computer-aided breast lesion detection and classification system

机译:一种全自动的计算机辅助乳房病变检测和分类系统

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摘要

This study presents an automatic computer-aided detection and diagnosis system which consists of two parts. The first part is for breast lesion characterization developed in pattern recognition framework (K-means clustering method) which is important to provide useful information for breast lesion characterization. Characterization of the detected lesion areas is done based on 6 parameters that are: (1) histogram, (2) shape, (3) gray level co-occurrence matrix, (4) gray level run length matrix, (5) neighboring gray tone difference matrix, and (6) gray level dependence matrix features. The second part of the system is developed based on machine learning algorithms and serves for the classification of localized breast lesions as benign and malignant. For classification, 4 different machine learning algorithms were investigated: (1) support vector, (2) k-nearest neighbors, (3) random forest, and (4) naive Bayes classifiers. 84 histopathologically proven breast lesions were analyzed in the study. The proposed system compensates the motion artifacts, segments breast lesions, and classifies the lesions as benign and malignant. The results prove that the developed comprehensive system can detect and classifies breast lesions without any intervention. The best accuracy, sensitivity, specificity, and precision values to decide the tumor aggressiveness are 90.36%, 96.25%, 83.33%, and 92%, respectively.
机译:本研究提出了一种自动的计算机辅助检测和诊断系统,由两部分组成。第一部分是在模式识别框架(K-MEARY聚类方法)中开发的乳房病变表征,这对于提供乳房病变表征的有用信息非常重要。检测到的病变区域的表征是基于6个参数完成的:(1)直方图,(2)形,(3)灰度共发生矩阵,(4)灰度级运行长度矩阵,(5)相邻灰度差分矩阵,和(6)灰度级依赖性矩阵特征。该系统的第二部分是基于机器学习算法开发的,并且用于分类局部乳房病变作为良性和恶性。对于分类,研究了4种不同的机器学习算法:(1)支持载体,(2)K-最近邻居,(3)随机森林,(4)天真贝叶斯分类器。 84在研究中分析了组织病理学上经过验证的乳房病变。所提出的系统补偿运动伪影,区段乳腺病变,并将病变分类为良性和恶性。结果证明,发达的综合系统可以检测和分类乳房病变而没有任何干预。决定肿瘤侵袭性的最佳准确性,敏感性,特异性和精度值分别为90.36%,96.25%,83.33%和92%。

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