Suckling J, Sigmundsson T, Greenwood K, Bullmore E T
Department of Health Care of the Elderly, King's College School Medicine and Dentistry, London, UK.
Magn Reson Imaging. 1999 Sep;17(7):1065-76. doi: 10.1016/s0730-725x(99)00055-7.
Methods for brain tissue classification or segmentation of structural magnetic resonance imaging (MRI) data should ideally be independent of human operators for reasons of reliability and tractability. An algorithm is described for fully automated segmentation of dual echo, fast spin-echo MRI data. The method is used to assign fuzzy-membership values for each of four tissue classes (gray matter, white matter, cerebrospinal fluid and dura) to each voxel based on partition of a two dimensional feature space. Fuzzy clustering is modified for this application in two ways. First, a two component normal mixture model is initially fitted to the thresholded feature space to identify exemplary gray and white matter voxels. These exemplary data protect subsequently estimated cluster means against the tendency of unmodified fuzzy clustering to equalize the number of voxels in each class. Second, fuzzy clustering is implemented in a moving window scheme that accommodates reduced image contrast at the axial extremes of the transmitting/receiving coil. MRI data acquired from 5 normal volunteers were used to identify stable values for three arbitrary parameters of the algorithm: feature space threshold, relative weight of exemplary gray and white matter voxels, and moving window size. The modified algorithm incorporating these parameter values was then used to classify data from simulated images of the brain, validating the use of fuzzy-membership values as estimates of partial volume. Gray:white matter ratios were estimated from 20 twenty normal volunteers (mean age 32.8 years). Processing time for each three-dimensional image was approximately 30 min on a 170 MHz workstation. Mean cerebral gray and white matter volumes estimated from these automatically segmented images were very similar to comparable results previously obtained by operator dependent methods, but without their inherent unreliability.
出于可靠性和易处理性的考虑,用于脑组织分类或结构磁共振成像(MRI)数据分割的方法理想情况下应独立于人工操作。本文描述了一种用于双回波快速自旋回波MRI数据全自动分割的算法。该方法基于二维特征空间的划分,为每个体素分配四个组织类别(灰质、白质、脑脊液和硬脑膜)中每一类的模糊隶属度值。针对此应用,对模糊聚类进行了两方面的改进。首先,最初将双分量正态混合模型拟合到阈值化特征空间,以识别示例性灰质和白质体素。这些示例性数据可防止后续估计的聚类均值出现未修改的模糊聚类使每类体素数量均等的趋势。其次,在移动窗口方案中实施模糊聚类,以适应发射/接收线圈轴向两端图像对比度降低的情况。从5名正常志愿者获取的MRI数据用于确定该算法三个任意参数的稳定值:特征空间阈值、示例性灰质和白质体素的相对权重以及移动窗口大小。然后,将包含这些参数值的改进算法用于对大脑模拟图像的数据进行分类,验证将模糊隶属度值用作部分容积估计的有效性。从20名正常志愿者(平均年龄32.8岁)估计灰质与白质的比例。在一台170 MHz的工作站上,处理每幅三维图像的时间约为30分钟。从这些自动分割图像估计的大脑灰质和白质平均体积与先前通过人工依赖方法获得的可比结果非常相似,但没有其固有的不可靠性。