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Exercises in PET Image Reconstruction

机译:宠物图像重建练习

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摘要

These exercises are complementary to the theoretical lectures about positron emission tomography (PET) image reconstruction. They aim at providing some hands on experience in PET image reconstruction and focus on demonstrating the different data preprocessing steps and reconstruction algorithms needed to obtain high quality PET images. Normalisation, geometric-, attenuation- and scatter correction are introduced. To explain the necessity of those some basics about PET scanner hardware, data acquisition and organisation are reviewed. During the course the students use a software application based on the STIR (software for tomographic image reconstruction) library 1,2 which allows them to dynamically select or deselect corrections and reconstruction methods as well as to modify their most important parameters. Following the guided tutorial, the students get an impression on the effect the individual data precorrections have on image quality and what happens if they are forgotten. Several data sets in sinogram format are provided, such as line source data, Jaszczak phantom data sets with high and low statistics and NEMA whole body phantom data. The two most frequently used reconstruction algorithms in PET image reconstruction, filtered back projection (FBP) and the iterative OSEM (ordered subset expectation maximation) approach are used to reconstruct images. The exercise should help the students gaining an understanding what the reasons for inferior image quality and artefacts are and how to improve quality by a clever choice of reconstruction parameters.
机译:这些练习是互补的关于正电子发射断层扫描(PET)图像重建的理论讲座。他们旨在提供一些手在PET图像重建方面的经验,并专注于证明获得高质量PET图像所需的不同数据预处理步骤和重建算法。介绍了归一化,几何,衰减和散射校正。为了解释这些关于宠物扫描仪硬件的基础知识的必要性,综述了数据采集和组织。在课程中,学生使用基于搅拌(用于断层图像重建软件)库1,2的软件应用程序,其允许它们动态地选择或取消选择校正和重建方法以及修改其最重要的参数。在引导教程之后,学生们对效果产生了印象,即如果忘记了图像质量,因此个人数据的预腐误对图像质量有关。提供了诸如线路源数据的若干数据集,例如线路源数据,jaszczak幻像数据集,具有高低统计和NEMA整体幻像数据。 PET图像重建中最常用的两个最常用的重建算法,过滤后投影(FBP)和迭代OSEM(有序的子集期望最大化)方法用于重建图像。练习应该帮助学生获得理解劣质图像质量和人工制品的原因以及如何通过巧妙选择的重建参数来提高质量。

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