Wang Hesheng, Fei Baowei
Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH 44106, USA.
Med Image Anal. 2009 Apr;13(2):193-202. doi: 10.1016/j.media.2008.06.014. Epub 2008 Jul 5.
A fully automatic, multiscale fuzzy C-means (MsFCM) classification method for MR images is presented in this paper. We use a diffusion filter to process MR images and to construct a multiscale image series. A multiscale fuzzy C-means classification method is applied along the scales from the coarse to fine levels. The objective function of the conventional fuzzy C-means (FCM) method is modified to allow multiscale classification processing where the result from a coarse scale supervises the classification in the next fine scale. The method is robust for noise and low-contrast MR images because of its multiscale diffusion filtering scheme. The new method was compared with the conventional FCM method and a modified FCM (MFCM) method. Validation studies were performed on synthesized images with various contrasts and on the McGill brain MR image database. Our MsFCM method consistently performed better than the conventional FCM and MFCM methods. The MsFCM method achieved an overlap ratio of greater than 90% as validated by the ground truth. Experiments results on real MR images were given to demonstrate the effectiveness of the proposed method. Our multiscale fuzzy C-means classification method is accurate and robust for various MR images. It can provide a quantitative tool for neuroimaging and other applications.
本文提出了一种用于磁共振成像(MR)的全自动多尺度模糊C均值(MsFCM)分类方法。我们使用扩散滤波器对MR图像进行处理并构建多尺度图像序列。从粗到细的尺度上应用多尺度模糊C均值分类方法。对传统模糊C均值(FCM)方法的目标函数进行了修改,以允许进行多尺度分类处理,其中粗尺度的结果用于指导下一精细尺度的分类。由于其多尺度扩散滤波方案,该方法对噪声和低对比度MR图像具有鲁棒性。将该新方法与传统FCM方法和改进的FCM(MFCM)方法进行了比较。在具有各种对比度的合成图像和麦吉尔脑MR图像数据库上进行了验证研究。我们的MsFCM方法始终比传统FCM和MFCM方法表现更好。经地面真值验证,MsFCM方法实现了大于90%的重叠率。给出了真实MR图像的实验结果以证明所提方法的有效性。我们的多尺度模糊C均值分类方法对各种MR图像准确且鲁棒。它可为神经成像和其他应用提供一种定量工具。