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Computer-aided Diagnosis of Breast Color Elastography

机译:计算机辅助诊断乳腺彩色弹性造影

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Ultrasound has been an important imaging technique for detecting breast tumors. As opposed to the conventional B-mode image, the ultrasound elastography is a new technique for imaging the elasticity and applied to detect the stiffness of tissues. The red region of color elastography indicates the soft tissue and the blue one indicates the hard tissue, and the harder tissue usually is classified to malignancy. In this paper, we proposed a CAD system on elastography to measure whether this system is effective and accurate to classify the tumor into benign and malignant. According to the features of elasticity, the color elastography was transferred to HSV color space and extracted meaningful features from hue images. Then the neural network was utilized in multiple features to distinguish tumors. In this experiment, there are 180 pathology-proven cases including 113 benign and 67 malignant cases used to examine the classification. The results of the proposed system showed an accuracy of 83.89%, a sensitivity of 85.07% and a specificity of 83.19%. Compared with the physician's diagnosis, an accuracy of 78.33%, a sensitivity of 53.73% and a specificity of 92.92%, the proposed CAD system had better performance. Moreover, the agreement of the proposed CAD system and the physician's diagnosis was calculated by kappa statistics, the kappa 0.54 indicated there is a moderate agreement of observers.
机译:超声波是检测乳腺肿瘤的重要成像技术。与传统的B模式图像相反,超声弹性显影是一种用于成像弹性并施加以检测组织刚度的新技术。彩色弹性造影的红色区域表示软组织和蓝色表示硬组织,并且较硬的组织通常被归类为恶性肿瘤。在本文中,我们提出了一种关于弹性造影的CAD系统,以衡量该系统是否有效准确,以将肿瘤分类为良性和恶性。根据弹性的特征,彩色弹性造影被转移到HSV颜色空间并从色调图像中提取有意义的特征。然后,神经网络用于多种特征以区分肿瘤。在该实验中,有180例病理证明的病例,包括113个良性和67例恶性病例,用于检查分类。所提出的系统的结果表明,精度为83.89%,敏感性为85.07%,特异性为83.19%。与医生的诊断相比,准确性为78.33%,灵敏度为53.73%,特异性为92.92%,拟议的CAD系统具有更好的性能。此外,拟议的CAD系统和医生诊断的协议由喀珀赛统计计算,Kappa 0.54表示观察者的中等协议。

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