Sun Xuejun, Qian Wei, Song Dansheng
Department of Interdisciplinary Oncology, College of Medicine, H. Lee Moffitt Cancer Center and Research Institute, University of South Florida, 12902 Magnolia Drive, Tampa, FL 33612-9497, USA.
Comput Med Imaging Graph. 2004 Apr;28(3):151-8. doi: 10.1016/j.compmedimag.2003.11.004.
In this paper, an ipsilateral multi-view computer-aided detection (CAD) scheme is presented for mass detection in digital mammograms by exploiting correlative information of suspicious lesions between mammograms of the same breast. After nonlinear tree-structured filtering for image noise suppression, two wavelet-based methods, directional wavelet transform and tree-structured wavelet transform for image enhancement, and adaptive fuzzy C-means algorithm for segmentation are employed on each mammograms of the same breast, respectively, concurrent analysis is developed for iterative analysis of ipsilateral multi-view mammograms by inter-projective feature matching analysis. A supervised artificial neural network is developed as a classifier, in which the back-propagation algorithm combined with Kalman filtering is used as training algorithm, and free-response receiver operating characteristic analysis is used to test the performance of the developed unilateral CAD system. Performance comparison has been conducted between the final ipsilateral multi-view CAD system and our previously developed single-mammogram-based CAD system. The study results demonstrate the advantages of ipsilateral multi-view CAD method combined with concurrent analysis over current single-view CAD system on false positive reduction.
本文提出了一种同侧多视角计算机辅助检测(CAD)方案,用于通过利用同一乳房乳腺造影片之间可疑病变的相关信息在数字乳腺造影片中检测肿块。在对图像噪声抑制进行非线性树状结构滤波后,分别对同一乳房的每张乳腺造影片采用两种基于小波的方法(用于图像增强的方向小波变换和树状结构小波变换)以及用于分割的自适应模糊C均值算法,通过投影间特征匹配分析对同侧多视角乳腺造影片进行迭代分析以开展并行分析。开发了一种监督式人工神经网络作为分类器,其中将结合卡尔曼滤波的反向传播算法用作训练算法,并使用自由响应接收器操作特性分析来测试所开发的单侧CAD系统的性能。已在最终的同侧多视角CAD系统与我们先前开发的基于单乳腺造影片的CAD系统之间进行了性能比较。研究结果表明,同侧多视角CAD方法结合并行分析相对于当前的单视角CAD系统在减少假阳性方面具有优势。