首页> 外文会议>Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC), 2011 IEEE >Quantitative analysis framework for SPECT·CT Tc-99m bone scintigraphy
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Quantitative analysis framework for SPECT·CT Tc-99m bone scintigraphy

机译:SPECT·CT Tc-99m骨闪烁显像定量分析框架

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Clinical SPECT routine uses tedious manual image evaluation using simplistic region of interest statistical analysis without taking the quantification aspect into account. We introduce a software framework for quantitative analysis of 3D/4D SPECT·CT Tc-99m bone scintigraphy data that incorporates automatic analysis and osseous tissue healthiness classification based on a patient database annotated by an experienced physician. The usage workflow of our framework starts with the input of SPECT and CT data registered on each other. Using CT information we segment osseous tissue also in the co-registered SPECT dataset. Patient weight, injected dose and system calibration factor are read out of the input datasets in order to estimate tracer activity concentration (AC) in kBq/ml and standardized uptake value (SUV). Support vector machine method is used to classify tissue based on the reference patient database that contains quantitative data for normal and abnormal tissue. Evaluation of the framework was done on patient data acquired 3 hours post injection on a SPECT/CT Symbia T6 system using protocol for quantitative estimation of tracer activity. The acquired projection data was reconstructed using Ordered Subset Expectation Maximization with 3D resolution recovery (OSEM-3D) with attenuation and scatter correction. Data analysis showed a significant correlation between AC and bone density measured in Hounsfield Units (HU) for both male and female patients. The proposed methods demonstrate the ability to automatically quantify and distinguish abnormal tissue from healthy one and to increase physicians'' diagnostic confidence.
机译:临床SPECT例程使用繁琐的手动图像评估,使用简单的目标区域统计分析,而没有考虑量化方面。我们引入了一个用于对3D / 4D SPECT·CT Tc-99m骨闪烁显像数据进行定量分析的软件框架,该框架结合了自动分析和骨组织健康性分类,并由经验丰富的医生标注了患者数据库。我们框架的使用工作流程始于彼此注册的SPECT和CT数据的输入。使用CT信息,我们还可以在共同注册的SPECT数据集中分割骨组织。从输入数据集中读取患者体重,注射剂量和系统校准因子,以便以kBq / ml和标准摄取值(SUV)估算示踪剂活性浓度(AC)。支持向量机方法用于基于参考患者数据库对组织进行分类,该参考患者数据库包含正常和异常组织的定量数据。框架的评估是在SPECT / CT Symbia T6系统上,在注射后3小时获得的患者数据中进行的,使用的是定量追踪示踪剂活性的方案。使用带有衰减和散射校正的3D分辨率恢复(OSEM-3D)的有序子集期望最大化来重建获取的投影数据。数据分析显示,男性和女性患者的AC和以Hounsfield Units(HU)测量的骨密度之间存在显着相关性。所提出的方法展示了自动量化和区分异常组织与健康组织的能力,并增加了医生的诊断信心。

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