Zaidi Habib, Ruest Torsten, Schoenahl Frederic, Montandon Marie-Louise
Division of Nuclear Medicine, Geneva University Hospital, CH-1211 Geneva 4, Switzerland.
Neuroimage. 2006 Oct 1;32(4):1591-607. doi: 10.1016/j.neuroimage.2006.05.031. Epub 2006 Jul 7.
Magnetic resonance imaging (MRI)-guided partial volume effect correction (PVC) in brain positron emission tomography (PET) is now a well-established approach to compensate the large bias in the estimate of regional radioactivity concentration, especially for small structures. The accuracy of the algorithms developed so far is, however, largely dependent on the performance of segmentation methods partitioning MRI brain data into its main classes, namely gray matter (GM), white matter (WM), and cerebrospinal fluid (CSF). A comparative evaluation of three brain MRI segmentation algorithms using simulated and clinical brain MR data was performed, and subsequently their impact on PVC in 18F-FDG and 18F-DOPA brain PET imaging was assessed. Two algorithms, the first is bundled in the Statistical Parametric Mapping (SPM2) package while the other is the Expectation Maximization Segmentation (EMS) algorithm, incorporate a priori probability images derived from MR images of a large number of subjects. The third, here referred to as the HBSA algorithm, is a histogram-based segmentation algorithm incorporating an Expectation Maximization approach to model a four-Gaussian mixture for both global and local histograms. Simulated under different combinations of noise and intensity non-uniformity, MR brain phantoms with known true volumes for the different brain classes were generated. The algorithms' performance was checked by calculating the kappa index assessing similarities with the "ground truth" as well as multiclass type I and type II errors including misclassification rates. The impact of image segmentation algorithms on PVC was then quantified using clinical data. The segmented tissues of patients' brain MRI were given as input to the region of interest (RoI)-based geometric transfer matrix (GTM) PVC algorithm, and quantitative comparisons were made. The results of digital MRI phantom studies suggest that the use of HBSA produces the best performance for WM classification. For GM classification, it is suggested to use the EMS. Segmentation performed on clinical MRI data show quite substantial differences, especially when lesions are present. For the particular case of PVC, SPM2 and EMS algorithms show very similar results and may be used interchangeably. The use of HBSA is not recommended for PVC. The partial volume corrected activities in some regions of the brain show quite large relative differences when performing paired analysis on 2 algorithms, implying a careful choice of the segmentation algorithm for GTM-based PVC.
磁共振成像(MRI)引导的脑正电子发射断层扫描(PET)中的部分容积效应校正(PVC)是一种成熟的方法,用于补偿区域放射性浓度估计中的大偏差,特别是对于小结构。然而,到目前为止开发的算法的准确性在很大程度上取决于将MRI脑数据划分为主要类别(即灰质(GM)、白质(WM)和脑脊液(CSF))的分割方法的性能。使用模拟和临床脑MR数据对三种脑MRI分割算法进行了比较评估,随后评估了它们对18F-FDG和18F-DOPA脑PET成像中PVC的影响。两种算法,第一种包含在统计参数映射(SPM2)软件包中,另一种是期望最大化分割(EMS)算法,它们结合了从大量受试者的MR图像中导出的先验概率图像。第三种算法,这里称为HBSA算法,是一种基于直方图的分割算法,结合了期望最大化方法,用于对全局和局部直方图进行四高斯混合建模。在不同噪声和强度不均匀性的组合下进行模拟,生成了具有不同脑类别已知真实体积的MR脑模型。通过计算评估与“真实情况”相似性的kappa指数以及包括错误分类率在内的多类I型和II型错误来检查算法的性能。然后使用临床数据量化图像分割算法对PVC的影响。将患者脑MRI的分割组织作为基于感兴趣区域(RoI)的几何传递矩阵(GTM)PVC算法的输入,并进行定量比较。数字MRI模型研究结果表明,使用HBSA在WM分类方面表现最佳。对于GM分类,建议使用EMS。对临床MRI数据进行的分割显示出相当大的差异,尤其是当存在病变时。对于PVC的特定情况,SPM2和EMS算法显示出非常相似的结果,可以互换使用。不建议将HBSA用于PVC。在对两种算法进行配对分析时,脑的某些区域中经部分容积校正的活性显示出相当大的相对差异,这意味着对于基于GTM的PVC,需要仔细选择分割算法。