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Evaluation of automatic striatal segmentation for the ECAT HRRT images

机译:ECAT HRRT图像自动纹状体分割的评估

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In quantitative positron emission tomography (PET) brain studies, the temporal dynamics of the radiopharmaceutical are usually analyzed separately for different brain structures. In a clinical environment, the delineation of brain structures is still often performed manually by human experts. In this study, we concentrate on automatic segmentation of the striatal brain structures (caudate, posterior and anterior putamen and ventral striatum) from the binding potential (BPND) images derived based on [11C]-raclopride studies. Previously, a method for the automatic segmentation of the striatal structures was proposed for the ECAT high resolution research tomograph (HRRT, CTI PET Systems, Knoxville, TN, USA) BPND images. The method is based on clustering the affinity matrix (containing the features as intensity values, spatial connectivity and distance) of the striatum which is extracted by using a deformable surface model. In clustering, the method uses weighted kernel k-means algorithm. In this study, we evaluate the segmentation method with a test-retest dataset. We studied the segmentation differences between the analytical (3D-RP) and iterative (3D-OPOSEM) reconstructions of the ECAT HRRT data. In addition to visual comparisons, for different reconstruction methods, normalized absolute differences (NAD) between the segmented regions of test-retest BPND images were calculated. We observed that NAD values were within acceptable limits in most cases. However, the ventral striatum segmentation failed to some extent. Furthermore, it is obvious that robustness of this kind of brain structure extraction methods should be tested with various reconstruction methods.
机译:在定量正电子发射断层扫描(PET)脑研究中,通常针对不同的脑结构分别分析放射性药物的时间动态。在临床环境中,大脑结构的描绘仍然经常由人类专家手动执行。在这项研究中,我们专注于根据[ 11 < / sup> C]-雷氯必利研究。以前,人们提出了一种用于ECAT高分辨率研究断层扫描仪(HRRT,CTI PET Systems,诺克斯维尔,田纳西州,美国)的BP ND 图像的纹状体结构自动分割的方法。该方法基于对通过使用可变形表面模型提取的纹状体的亲和力矩阵(包含强度,空间连通性和距离等特征)进行聚类。在聚类中,该方法使用加权内核k均值算法。在这项研究中,我们使用重测数据集评估了分割方法。我们研究了ECAT HRRT数据的解析(3D-RP)和迭代(3D-OPOSEM)重构之间的细分差异。除了视觉比较之外,对于不同的重建方法,还计算了重测BP ND 图像的分割区域之间的归一化绝对差(NAD)。我们观察到在大多数情况下NAD值都在可接受的范围内。然而,腹侧纹状体分割在某种程度上失败了。此外,很明显,应该使用各种重建方法来测试这种大脑结构提取方法的鲁棒性。

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