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Segmentation of VOI From Multidimensional Dynamic PET Images by Integrating Spatial and Temporal Features

机译:集成时空特征的多维动态PET图像VOI分割

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Segmentation of multidimensional dynamic positron emission tomography (PET) images into volumes of interest (VOIs) exhibiting similar temporal behavior and spatial features is a challenging task due to inherently poor signal-to-noise ratio and spatial resolution. In this study, we propose VOI segmentation of dynamic PET images by utilizing both the three-dimensional (3-D) spatial and temporal domain information in a hybrid technique that integrates two independent segmentation techniques of cluster analysis and region growing. The proposed technique starts with a cluster analysis that partitions the image based on temporal similarities. The resulting temporal partitions, together with the 3-D spatial information are utilized in the region growing segmentation. The technique was evaluated with dynamic 2-[$^hbox18$F] fluoro-2-deoxy-D-glucose PET simulations and clinical studies of the human brain and compared with the$k$-means and fuzzy$c$-means cluster analysis segmentation methods. The quantitative evaluation with simulated images demonstrated that the proposed technique can segment the dynamic PET images into VOIs of different kinetic structures and outperforms the cluster analysis approaches with notable improvements in the smoothness of the segmented VOIs with fewer disconnected or spurious segmentation clusters. In clinical studies, the hybrid technique was only superior to the other techniques in segmenting the white matter. In the gray matter segmentation, the other technique tended to perform slightly better than the hybrid technique, but the differences did not reach significance. The hybrid technique generally formed smoother VOIs with better separation of the background. Overall, the proposed technique demonstrated potential usefulness in the diagnosis and evaluation of dynamic PET neurological imaging studies.
机译:由于固有的较差的信噪比和空间分辨率,将多维动态正电子发射断层扫描(PET)图像分割成表现出类似时间行为和空间特征的感兴趣体积(VOI)是一项艰巨的任务。在这项研究中,我们提出了在混合技术中利用三维(3-D)时空信息的动态PET图像的VOI分割技术,该技术融合了聚类分析和区域增长这两种独立的分割技术。所提出的技术从基于时间相似性对图像进行分区的聚类分析开始。在区域增长分割中利用所得的时间分区以及3D空间信息。该技术已通过动态2-[$ ^ hbox18 $ F]氟-2-脱氧-D-葡萄糖PET模拟和人脑临床研究进行了评估,并与$ k $ -means和Fuzzy $ c $ -means簇进行了比较。分析细分方法。仿真图像的定量评估表明,所提出的技术可以将动态PET图像分割为具有不同动力学结构的VOI,并且其性能优于聚类分析方法,并且在分割后的VOI的平滑度方面有了显着的改善,具有更少的不连续或虚假的分割簇。在临床研究中,混合技术仅在分割白质方面优于其他技术。在灰质分割中,另一种技术的性能往往比混合技术要好一些,但差异并不明显。混合技术通常形成更平滑的VOI,并具有更好的背景分离效果。总体而言,提出的技术证明了在动态PET神经影像学研究的诊断和评估中的潜在有用性。

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