Lee S K, Vannier M W
Mallinckrodt Institute of Radiology, Washington University School of Medicine, St. Louis, Missouri, USA.
Magn Reson Med. 1996 Aug;36(2):275-86. doi: 10.1002/mrm.1910360215.
Signal inhomogeneities in volumetric head MR scans are a major obstacle to segmentation and neuromorphometry. The fuzzy c-means (FCM) statistical clustering algorithm was extended to estimate and retrospectively correct a multiplicative inhomogeneity field in T1-weighted head MR scans. The method was tested on a mathematically simulated object and on seven whole head 3D MR scans. Once initial parameters governing operation of the algorithm were chosen for this class of images, results were obtained without intervention for individual MR studies. Post-acquisition inhomogeneity correction by extended FCM clustering improved overall image uniformity and separability of gray and white matter intensities.
头部容积磁共振扫描中的信号不均匀性是分割和神经形态测量的主要障碍。模糊c均值(FCM)统计聚类算法被扩展用于估计和回顾性校正T1加权头部磁共振扫描中的乘性不均匀性场。该方法在一个数学模拟对象和七例全脑3D磁共振扫描上进行了测试。一旦为这类图像选择了控制算法操作的初始参数,无需对单个磁共振研究进行干预即可获得结果。通过扩展FCM聚类进行采集后不均匀性校正改善了整体图像均匀性以及灰质和白质强度的可分离性。