Selvan Shirley, Kavitha M, Devi S Shenbaga, Suresh S
Department of Medical Electronics, College of Engineering, Anna University, Chennai, India.
Ultrasound Q. 2012 Sep;28(3):159-67. doi: 10.1097/RUQ.0b013e318262594a.
Common breast lesions have different elasticity properties. Segmentation of contours of breast lesions from elastography and B mode images by incorporating variational level set method is involved in the proposed work. After segmentation, strain and shape features, such as differences in area, perimeter, and contour and width to height difference and solidity, as well as texture features like contrast, entropy, standard deviation, dissimilarity, homogeneity and energy, are estimated. A nonlinear fuzzy inference system is applied for classifying the breast lesions as benign cyst, benign solid mass, or malignant solid mass. Detection of malignant solid masses is our primary objective. A classification accuracy of 83% is obtained. One hundred percent sensitivity is reported. It can be concluded that the proposed fuzzy-based classification technique can be used as an aid for the automated detection of breast lesions.
常见的乳腺病变具有不同的弹性特性。本研究工作涉及通过结合变分水平集方法从弹性成像和B模式图像中分割乳腺病变的轮廓。分割后,估计应变和形状特征,如面积、周长、轮廓差异以及宽高比和紧实度,还有纹理特征,如对比度、熵、标准差、相异性、同质性和能量。应用非线性模糊推理系统将乳腺病变分类为良性囊肿、良性实性肿块或恶性实性肿块。检测恶性实性肿块是我们的主要目标。获得了83%的分类准确率。报告的灵敏度为100%。可以得出结论,所提出的基于模糊的分类技术可作为乳腺病变自动检测的辅助手段。