Kikinis R, Guttmann C R, Metcalf D, Wells W M, Ettinger G J, Weiner H L, Jolesz F A
Department of Radiology, Brigham and Women's Hospital and Harvard Medical School, Boston, Massachusetts 02115, USA.
J Magn Reson Imaging. 1999 Apr;9(4):519-30. doi: 10.1002/(sici)1522-2586(199904)9:4<519::aid-jmri3>3.0.co;2-m.
A highly reproducible automated procedure for quantitative analysis of serial brain magnetic resonance (MR) images was developed for use in patients with multiple sclerosis (MS). The intracranial cavity (ICC) was identified on standard dual-echo spin-echo brain MR images using a supervised automated procedure. MR images obtained from one MS patient at 24 time points in the course of a 1-year follow-up were aligned with the images of one of the time points. Next, the contents of the ICC in each MR exam were segmented into four tissues, using a self-adaptive statistical algorithm. Misclassifications due to partial voluming were corrected using a combination of morphologic operators and connectivity criteria. Finally, a connectivity detection algorithm was used to separate the tissue classified as lesions into individual entities. Registration, classification of the contents of the ICC, and identification of individual lesions are fully automatic. Only identification of the ICC requires operator interaction. In each MR exam, the program estimated volumes for the ICC, gray matter (GM), white matter (WM), white matter lesions (WML), and cerebrospinal fluid (CSF). The reproducibility of the system was superior to that of supervised segmentation, as evidenced by the coefficient of variation: CSF supervised 45.9% vs. automated 7.7%, GM 16.0% vs. 1.4%, WM 15.7% vs. 1.3%, and WML 39.5% vs 52.0%. Our results demonstrate that this computerized procedure allows routine reproducible quantitative analysis of large serial MRI data sets.
我们开发了一种高度可重复的自动化程序,用于对多发性硬化症(MS)患者的脑部磁共振(MR)序列图像进行定量分析。使用一种有监督的自动化程序,在标准双回波自旋回波脑部MR图像上识别颅内腔(ICC)。从一名MS患者在1年随访过程中的24个时间点获得的MR图像与其中一个时间点的图像进行配准。接下来,使用自适应统计算法将每次MR检查中ICC的内容分割为四种组织。使用形态学算子和连通性标准的组合来校正由于部分容积效应导致的错误分类。最后,使用连通性检测算法将分类为病变的组织分离为单个实体。配准、ICC内容的分类以及单个病变的识别都是完全自动的。只有ICC的识别需要操作人员的交互。在每次MR检查中,该程序估计ICC、灰质(GM)、白质(WM)、白质病变(WML)和脑脊液(CSF)的体积。变异系数表明,该系统的可重复性优于有监督分割:CSF有监督为45.9%,自动化为7.7%;GM有监督为16.0%,自动化为1.4%;WM有监督为15.7%,自动化为1.3%;WML有监督为39.5%,自动化为52.0%。我们的结果表明,这种计算机化程序允许对大型MR序列数据集进行常规的可重复定量分析。