Kovacevic N, Lobaugh N J, Bronskill M J, Levine B, Feinstein A, Black S E
Sunnybrook and Women's College Health Sciences Centre, Toronto, Ontario, Canada.
Neuroimage. 2002 Nov;17(3):1087-100. doi: 10.1006/nimg.2002.1221.
A new protocol is introduced for brain extraction and automatic tissue segmentation of MR images. For the brain extraction algorithm, proton density and T2-weighted images are used to generate a brain mask encompassing the full intracranial cavity. Segmentation of brain tissues into gray matter (GM), white matter (WM), and cerebral spinal fluid (CSF) is accomplished on a T1-weighted image after applying the brain mask. The fully automatic segmentation algorithm is histogram-based and uses the Expectation Maximization algorithm to model a four-Gaussian mixture for both global and local histograms. The means of the local Gaussians for GM, WM, and CSF are used to set local thresholds for tissue classification. Reproducibility of the extraction procedure was excellent, with average variation in intracranial capacity (TIC) of 0.13 and 0.66% TIC in 12 healthy normal and 33 Alzheimer brains, respectively. Repeatability of the segmentation algorithm, tested on healthy normal images, indicated scan-rescan differences in global tissue volumes of less than 0.30% TIC. Reproducibility at the regional level was established by comparing segmentation results within the 12 major Talairach subdivisions. Accuracy of the algorithm was tested on a digital brain phantom, and errors were less than 1% of the phantom volume. Maximal Type I and Type II classification errors were low, ranging between 2.2 and 4.3% of phantom volume. The algorithm was also insensitive to variation in parameter initialization values. The protocol is robust, fast, and its success in segmenting normal as well as diseased brains makes it an attractive clinical application.
本文介绍了一种用于磁共振成像(MR)脑提取和自动组织分割的新协议。对于脑提取算法,利用质子密度和T2加权图像生成一个包含整个颅腔的脑掩码。在应用脑掩码后,在T1加权图像上完成将脑组织分割为灰质(GM)、白质(WM)和脑脊液(CSF)。全自动分割算法基于直方图,并使用期望最大化算法对全局和局部直方图建立四高斯混合模型。GM、WM和CSF局部高斯的均值用于设置组织分类的局部阈值。提取过程的可重复性极佳,在12例健康正常脑和33例阿尔茨海默病脑中,颅内容量(TIC)的平均变化分别为0.13%和0.66% TIC。在健康正常图像上测试的分割算法的重复性表明,全局组织体积的扫描-重扫差异小于0.30% TIC。通过比较12个主要Talairach分区内的分割结果,确定了区域水平的可重复性。在数字脑模型上测试了算法的准确性,误差小于模型体积的1%。最大I型和II型分类误差较低,在模型体积的2.2%至4.3%之间。该算法对参数初始化值的变化也不敏感。该协议稳健、快速,并且在分割正常和患病脑方面的成功使其成为一个有吸引力的临床应用。