Department of Electrical Engineering, Iran University of Science and Technology (IUST), Narmak, Tehran, Iran.
Comput Biol Med. 2011 Aug;41(8):726-35. doi: 10.1016/j.compbiomed.2011.06.009. Epub 2011 Jul 1.
In mammography diagnosis systems, high False Negative Rate (FNR) has always been a significant problem since a false negative answer may lead to a patient's death. This paper is directed towards the development of a novel Computer-aided Diagnosis (CADx) system for the diagnosis of breast masses. It aims at intensifying the performance of CADx algorithms as well as reducing the FNR by utilizing Zernike moments as descriptors of shape and margin characteristics. The input Regions of Interest (ROIs) are segmented manually and further subjected to a number of preprocessing stages. The outcomes of preprocessing stage are two processed images containing co-scaled translated masses. Besides, one of these images represents the shape characteristics of the mass, while the other describes the margin characteristics. Two groups of Zernike moments have been extracted from the preprocessed images and applied to the feature selection stage. Each group includes 32 moments with different orders and iterations. Considering the performance of the overall CADx system, the most effective moments have been chosen and applied to a Multi-layer Perceptron (MLP) classifier, employing both generic Back Propagation (BP) and Opposition-based Learning (OBL) algorithms. The Receiver Operational Characteristics (ROC) curve and the performance of resulting CADx systems are analyzed for each group of features. The designed systems yield Az=0.976, representing fair sensitivity, and Az=0.975 demonstrating fair specificity. The best achieved FNR and FPR are 0.0% and 5.5%, respectively.
在乳腺摄影诊断系统中,高假阴性率(FNR)一直是一个重大问题,因为假阴性的结果可能导致患者死亡。本文旨在开发一种新的计算机辅助诊断(CADx)系统,用于诊断乳腺肿块。该系统旨在通过利用 Zernike 矩作为形状和边界特征的描述符,增强 CADx 算法的性能并降低 FNR。输入的感兴趣区域(ROI)是手动分割的,并进一步经过多个预处理阶段。预处理阶段的结果是两个经过预处理的包含缩放平移肿块的图像。此外,其中一个图像表示肿块的形状特征,另一个描述边界特征。从预处理图像中提取了两组 Zernike 矩,并将其应用于特征选择阶段。每组包含 32 个具有不同阶数和迭代的矩。考虑到整个 CADx 系统的性能,选择了最有效的矩并应用于多层感知器(MLP)分类器,同时使用通用的反向传播(BP)和基于对立学习(OBL)算法。分析了每组特征的 ROC 曲线和所得 CADx 系统的性能。设计的系统的 Az=0.976,代表了良好的灵敏度,Az=0.975 表示了良好的特异性。最佳的 FNR 和 FPR 分别为 0.0%和 5.5%。