基于TOF信息的PET呼吸门控回顾性数据驱动。

Mengdie Wang, Ning Guo, Hui Zhang, Georges Elfhakri, Guangshu Hu, Quanzheng Li
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引用次数: 7

摘要

传统的数据驱动呼吸门控方法能够直接从正电子发射断层扫描(PET)数据中检测呼吸周期,但在低信噪比下,特别是在低剂量PET/CT研究中,通常无法实现。飞行时间(TOF) PET具有提高信噪比的潜力。为了利用TOF信息降低统计噪声,提高呼吸门控的性能,提出了一种基于TOF信息的鲁棒数据驱动呼吸门控方法,该方法从采集的TOF- pet数据中回溯导出呼吸信号。PET数据以列表模式获取,并在正弦图空间中进行分析。该方法通过TOF PET/CT系统获得的患者数据集进行了验证。采用质心(COM)和主成分分析(PCA)算法分别对非TOF PET和TOF PET数据集进行了数据驱动门控。为了评估数据驱动的呼吸信号的准确性,采集了一个基于硬件的信号进行比较。研究表明,使用TOF图的回溯呼吸门控提高了信噪比,并且在COM和PCA算法下都优于非TOF门控。
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Retrospective data-driven respiratory gating for PET using TOF information.
Traditional data-driven respiratory gating method is capable of detecting breathing cycles directly from positron emission tomography (PET) data, but usually fails at low SNR, particularly at low dose PET/CT study. Time-of-flight (TOF) PET has the potential to improve the SNR. In order for TOF information to reduce the statistical noise and boost the performance of respiratory gating, we present a robust data-driven respiratory gating method using TOF information, which retrospectively derived the respiratory signal from the acquired TOF-PET data. The PET data was acquired in list mode format and analyzed in sinogram space. The method was demonstrated with patient datasets acquired on a TOF PET/CT system. Data-driven gating methods by center of mass (COM) and principle component analysis (PCA) algorithm were successfully performed on nonTOF PET and TOF PET dataset. To assess the accuracy of the data-driven respiratory signal, a hardware-based signal was acquired for comparison. The study showed that retrospectively respiratory gating using TOF sinograms has improved the SNR, and outperforms the non-TOF gating under both COM and PCA algorithms.
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