首页> 美国卫生研究院文献>Journal of Cerebral Blood Flow Metabolism >Optimization of supervised cluster analysis for extracting reference tissue input curves in (R)-11CPK11195 brain PET studies
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Optimization of supervised cluster analysis for extracting reference tissue input curves in (R)-11CPK11195 brain PET studies

机译:(R)-11C PK11195脑PET研究中提取参考组织输入曲线的监督聚类分析的优化

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摘要

Performance of two supervised cluster analysis (SVCA) algorithms for extracting reference tissue curves was evaluated to improve quantification of dynamic (R)-[11C]PK11195 brain positron emission tomography (PET) studies. Reference tissues were extracted from images using both a manually defined cerebellum and SVCA algorithms based on either four (SVCA4) or six (SVCA6) kinetic classes. Data from controls, mild cognitive impairment patients, and patients with Alzheimer's disease were analyzed using various kinetic models including plasma input, the simplified reference tissue model (RPM) and RPM with vascular correction (RPMVb). In all subject groups, SVCA-based reference tissue curves showed lower blood volume fractions (Vb) and volume of distributions than those based on cerebellum time-activity curve. Probably resulting from the presence of specific signal from the vessel walls that contains in normal condition a significant concentration of the 18 kDa translocation protein. Best contrast between subject groups was seen using SVCA4-based reference tissues as the result of a lower number of kinetic classes and the prior removal of extracerebral tissues. In addition, incorporation of Vb in RPM improved both parametric images and binding potential contrast between groups. Incorporation of Vb within RPM, together with SVCA4, appears to be the method of choice for analyzing cerebral (R)-[11C]PK11195 neurodegeneration studies.
机译:评估了两种监督聚类分析(SVCA)算法提取参考组织曲线的性能,以改进对动态(R)-[ 11 C] PK11195脑正电子发射断层扫描(PET)研究的量化。使用基于四个(SVCA4)或六个(SVCA6)动力学类别的手动定义的小脑和SVCA算法从图像中提取参考组织。使用各种动力学模型,包括血浆输入,简化的参考组织模型(RPM)和带有血管矫正的RPM(RPMVb),分析了来自对照组,轻度认知障碍患者和阿尔茨海默氏病患者的数据。在所有受试者组中,基于SVCA的参考组织曲线显示的血容量分数(Vb)和分布体积均比基于小脑时间活动曲线的曲线低。可能是由于在正常情况下血管壁中存在特定信号所致,该信号在正常情况下含有高浓度的18 kDa转运蛋白。使用较低的动力学类别和事先去除脑外组织的结果是,使用基于SVCA4的参考组织可以看到受试者组之间的最佳对比。此外,在RPM中加入Vb可以改善参数图像和组之间的结合电位对比。在RPM中掺入Vb以及SVCA4,似乎是分析脑(R)-[ 11 C] PK11195神经变性研究的首选方法。

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