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A new fast and fully automated software based algorithm for extracting respiratory signal from raw PET data and its comparison to other methods.

机译:一种基于软件的新型快速,完全自动化的算法,可从原始PET数据中提取呼吸信号,并将其与其他方法进行比较。

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PURPOSE: Respiratory gating in PET is an approach used to minimize the negative effects of respiratory motion on spatial resolution. It is based on an initial determination of a patient's respiratory movements during a scan, typically using hardware based systems. In recent years, several fully automated databased algorithms have been presented for extracting a respiratory signal directly from PET data, providing a very practical strategy for implementing gating in the clinic. In this work, a new method is presented for extracting a respiratory signal from raw PET sinogram data and compared to previously presented automated techniques. METHODS: The acquisition of respiratory signal from PET data in the newly proposed method is based on rebinning the sinogram data into smaller data structures and then analyzing the time activity behavior in the elements of these structures. From this analysis, a 1D respiratory trace is produced, analogous to a hardware derived respiratory trace. To assess the accuracy of this fully automated method, respiratory signal was extracted from a collection of 22 clinical FDG-PET scans using this method, and compared to signal derived from several other software based methods as well as a signal derived from a hardware system. RESULTS: The method presented required approximately 9 min of processing time for each 10 min scan (using a single 2.67 GHz processor), which in theory can be accomplished while the scan is being acquired and therefore allowing a real-time respiratory signal acquisition. Using the mean correlation between the software based and hardware based respiratory traces, the optimal parameters were determined for the presented algorithm. The mean/median/range of correlations for the set of scans when using the optimal parameters was found to be 0.58/0.68/0.07-0.86. The speed of this method was within the range of real-time while the accuracy surpassed the most accurate of the previously presented algorithms. CONCLUSIONS: PET data inherently contains information about patient motion; information that is not currently being utilized. We have shown that a respiratory signal can be extracted from raw PET data in potentially real-time and in a fully automated manner. This signal correlates well with hardware based signal for a large percentage of scans, and avoids the efforts and complications associated with hardware. The proposed method to extract a respiratory signal can be implemented on existing scanners and, if properly integrated, can be applied without changes to routine clinical procedures.
机译:目的:PET中的呼吸门控是一种用于最小化呼吸运动对空间分辨率的负面影响的方法。它基于对扫描期间患者呼吸运动的初步确定,通常使用基于硬件的系统。近年来,已经提出了几种全自动数据库算法,这些算法可直接从PET数据中提取呼吸信号,从而为在临床中实施门控提供了非常实用的策略。在这项工作中,提出了一种新方法,用于从原始PET正弦图数据中提取呼吸信号,并将其与先前介绍的自动化技术进行比较。方法:在新提出的方法中从PET数据中获取呼吸信号是基于将正弦图数据重新绑定为较小的数据结构,然后分析这些结构元素中的时间活动行为。通过此分析,将生成一维呼吸轨迹,类似于硬件派生的呼吸轨迹。为了评估此全自动方法的准确性,使用此方法从22项临床FDG-PET扫描的集合中提取了呼吸信号,并将其与源自其他几种基于软件的方法的信号以及源自硬件系统的信号进行了比较。结果:提出的方法每10分钟扫描(使用一个2.67 GHz处理器)大约需要9分钟的处理时间,理论上可以在采集扫描时完成,因此可以实时采集呼吸信号。利用基于软件和基于硬件的呼吸道之间的平均相关性,确定了所提出算法的最佳参数。使用最佳参数时,一组扫描的相关性的平均/中位数/范围被发现为0.58 / 0.68 / 0.07-0.86。该方法的速度在实时范围内,而准确性超过了先前提出的算法中最准确的。结论:PET数据固有地包含有关患者运动的信息。当前未使用的信息。我们已经表明,可以潜在地实时和完全自动化地从原始PET数据中提取呼吸信号。对于大部分扫描,此信号与基于硬件的信号相关性很好,并且避免了与硬件相关的工作和复杂性。所提出的提取呼吸信号的方法可以在现有的扫描仪上实施,并且如果正确集成,则可以在不更改常规临床程序的情况下应用。

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