Iran University of Science and Technology, Tehran, Iran.
J Med Syst. 2012 Jun;36(3):1621-7. doi: 10.1007/s10916-010-9624-7. Epub 2010 Nov 17.
The purpose of this research was evaluating novel shape and texture feature' efficiency in classification of benign and malignant breast masses in sonography images. First, mass regions were extracted from the region of interest (ROI) sub-image by implementing a new hybrid segmentation approach based on level set algorithms. Then two left and right side areas of the masses are elicited. After that, six features (Eccentricity_feature, Solidity_feature, DeferenceArea_Hull_Rectangular, DeferenceArea_Mass_Rectangular, Cross-correlation-left and Cross-correlation-right) based on shape, texture and region characteristics of the masses were extracted for further classification. Finally a support vector machine (SVM) classifier was utilized to classify breast masses. The leave-one-case-out protocol was utilized on a database of eighty pathologically-proven breast sonographic images of patients (forty-seven benign cases and thirty-three malignant cases) to evaluate our method. The classification results showed an overall accuracy of 95.00%, sensitivity of 90.91%, specificity of 97.87%, positive predictive value of 96.77%, negative predictive value of 93.88%, and Matthew's correlation coefficient of 89.71%. The experimental results declare that our proposed method is actually a beneficial tool for the diagnosis of the breast cancer and can provide a second opinion for a physician's decision or can be used for the medicine training especially when coupled with other modalities.
本研究旨在评估新型形状和纹理特征在超声图像中良恶性乳腺肿块分类中的效率。首先,通过实施一种新的基于水平集算法的混合分割方法,从感兴趣区域(ROI)子图像中提取肿块区域。然后,引出肿块的左右两侧区域。之后,提取了基于肿块形状、纹理和区域特征的六个特征(偏心特征、实性特征、Hull 矩形差异面积、Mass 矩形差异面积、左侧和右侧的互相关),用于进一步分类。最后,使用支持向量机(SVM)分类器对乳腺肿块进行分类。在一个包含八十张经病理证实的乳腺超声图像的数据库上,采用逐一病例排除协议(四十七个良性病例和三十三个恶性病例)对我们的方法进行评估。分类结果显示总体准确率为 95.00%,敏感度为 90.91%,特异性为 97.87%,阳性预测值为 96.77%,阴性预测值为 93.88%,马修相关系数为 89.71%。实验结果表明,我们提出的方法实际上是一种用于诊断乳腺癌的有益工具,可以为医生的决策提供第二个意见,也可以用于医学培训,特别是与其他模态结合使用时。