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Performance evaluation of the channelized Hotelling observer using bootstrap list-mode PET studies

机译:使用引导程序列表模式PET研究对通道化Hotelling观察者的性能评估

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This study investigated whether list-mode PET data generated using the bootstrap method can be used to predict lesion detectability as assessed by the channelized Hotelling observer (CHO). A Monte-Carlo simulator was used to generate 2D PET list-mode data set acquisitions of a disk object. One of these list-mode sets was then used to create an ensemble of bootstrap list-mode sets. A randomly positioned signal (lesion) was introduced into half of the list-mode sets to create an ensemble of signal-present and signal-absent list-mode sets. These sets were then reconstructed using the OSEM list-mode algorithm. The CHO was computed from the ensemble of reconstructed images generated from the bootstrap data sets as well as from independent noisy data sets. The F-test and the student t-test found no significant difference (confidence level 5%) in the areas under the LROC curve generated using the independent noisy list-mode sets and the bootstrap list-mode sets for clinical count levels. It is also shown how bootstrap images can be used to implement a patient-specific, CHO-based stopping-rule criterion for ordered-subset expectation-maximization (OSEM) list-mode iterative reconstruction. An example of applying the CHO-based stopping-rule criterion for list-mode reconstruction of the MCAT phantom showed an optimal detectability index at iterations 7 using 2 subsets respectively. Results from this study suggest that the bootstrap approach can be used to conduct numerical observer studies with more realistic backgrounds by generating them from a patient study (with the introduction of simulated lesions), and allows the possibility of applying a patient-specific, CHO-based stopping-rule criterion for list-mode iterative reconstruction.
机译:这项研究调查了使用引导法生成的列表模式PET数据是否可用于预测病变的可检测性,如通道化的Hotelling观察者(CHO)所评估的那样。使用Monte-Carlo模拟器生成磁盘对象的2D PET列表模式数据集获取。然后使用这些列表模式集之一创建一组引导列表模式集。将随机定位的信号(病变)引入到列表模式集的一半中,以创建信号存在和信号不存在的列表模式集的集合。然后使用OSEM列表模式算法重建这些集合。 CHO是从自举数据集以及独立的有噪数据集生成的重建图像的集合中计算得出的。 F检验和学生t检验发现,使用独立的噪声列表模式集和自举列表模式集生成的LROC曲线下区域的临床计数水平无显着差异(置信度5%)。还显示了引导图像如何可用于实现针对患者的,基于CHO的停止规则标准,以进行有序子集期望最大化(OSEM)列表模式迭代重构。将基于CHO的停止规则标准应用于MCAT体模的列表模式重构的示例显示了在迭代7处分别使用2个子集的最佳可检测性指标。这项研究的结果表明,自举方法可以通过从患者研究中产生(通过引入模拟病灶)生成具有更现实背景的数值观察者研究,并允许应用针对患者的CHO-列表模式迭代重构的基于停止规则的准则。

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