首页> 外文会议>Conference on Medical Imaging 2008: Computer-Aided Diagnosis; 20080219-21; San Diego,CA(US) >Automatic lesion tracking for a PET/CT based computer aided cancer therapy monitoring system
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Automatic lesion tracking for a PET/CT based computer aided cancer therapy monitoring system

机译:基于PET / CT的计算机辅助癌症治疗监测系统的自动病变跟踪

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Response assessment of cancer therapy is a crucial component towards a more effective and patient individualized cancer therapy. Integrated PET/CT systems provide the opportunity to combine morphologic with functional information. However, dealing simultaneously with several PET/CT scans poses a serious workflow problem. It can be a difficult and tedious task to extract response criteria based upon an integrated analysis of PET and CT images and to track these criteria over time. In order to improve the workflow for serial analysis of PET/CT scans we introduce in this paper a fast lesion tracking algorithm. We combine a global multi-resolution rigid registration algorithm with a local block matching and a local region growing algorithm. Whenever the user clicks on a lesion in the base-line PET scan the course of standardized uptake values (SUV) is automatically identified and shown to the user as a graph plot. We have validated our method by a data collection from 7 patients. Each patient underwent two or three PET/CT scans during the course of a cancer therapy. An experienced nuclear medicine physician manually measured the courses of the maximum SUVs for altogether 18 lesions. As a result we obtained that the automatic detection of the corresponding lesions resulted in SUV measurements which are nearly identical to the manually measured SUVs. Between 38 measured maximum SUVs derived from manual and automatic detected lesions we observed a correlation of 0.9994 and a average error of 0.4 SUV units.
机译:癌症治疗的反应评估是实现更有效和患者个性化癌症治疗的关键组成部分。集成的PET / CT系统提供了将形态学与功能信息相结合的机会。但是,同时处理多个PET / CT扫描带来了严重的工作流程问题。基于PET和CT图像的综合分析来提取响应标准并随时间跟踪这些标准可能是一项艰巨而繁琐的任务。为了改善PET / CT扫描序列分析的工作流程,我们在本文中介绍了一种快速的病变跟踪算法。我们将全局多分辨率刚性配准算法与局部块匹配和局部区域增长算法结合在一起。每当用户在基线PET扫描中单击病变时,就会自动识别标准化摄取值(SUV)的过程,并以图表形式显示给用户。我们已经从7位患者的数据收集中验证了我们的方法。在癌症治疗过程中,每个患者都要进行两次或三次PET / CT扫描。一位经验丰富的核医学医师手动测量了总共18个病变的最大SUV的进程。结果,我们获得了对相应病变的自动检测导致的SUV测量结果与手动测量的SUV几乎相同。在从手动和自动检测到的病变中测得的38个最大SUV之间,我们观察到相关性为0.9994,平均误差为0.4 SUV单位。

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