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Extracting a respiratory signal from raw dynamic PET data that contain tracer kinetics

机译:从包含示踪动力学的原始动态PET数据中提取呼吸信号

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Data driven gating (DOG) methods provide an alternative to hardware based respiratory gating for PET imaging. Several existing DDG approaches obtain a respiratory signal by observing the change in PET-counts within specific regions of acquired PET data. Currently, these methods do not allow for tracer kinetics which can contribute to the respiratory signal and introduce error. In this work, we produced a DDG method for dynamic PET studies that exhibit tracer kinetics. This was based on an existing approach that uses spectral analysis to locate regions within raw PET data that are subject to respiratory motion. In the new approach, overlapping short-time Fourier transforms were used to create a time-varying 4D map of motion affected regions. Additional processing was required to ensure that the relationship between the sign of the respiratory signal and the physical direction of movement remained consistent for each temporal segment of the 4D map. The change in PET-counts within the 4D map during the acquisition were then used to generate a respiratory curve. Using 26 min dynamic cardiac NH3 PET acquisitions which included a hardware derived respiratory measurement, we show that tracer kinetics can severely degrade the respiratory signal generated by the original DDG method. In sollie cases, the transition of tracer from the liver to the lungs caused the respiratory signal to invert. The new approach successfully compensated for tracer kinetics and improved the correlation between the data-driven and hardware based signals. On average, good correlation was maintained throughout the PET acquisitions.
机译:数据驱动门控(DOG)方法为PET成像提供了基于硬件的呼吸门控的替代方法。几种现有的DDG方法是通过观察所获取的PET数据的特定区域内PET计数的变化来获得呼吸信号。当前,这些方法不允许示踪剂动力学,其可有助于呼吸信号并引入误差。在这项工作中,我们制作了用于动态PET研究的DDG方法,该方法具有示踪动力学。这是基于现有的方法,该方法使用频谱分析来定位原始PET数据中受呼吸运动影响的区域。在新方法中,重叠的短时傅立叶变换用于创建运动受影响区域的时变4D地图。需要额外的处理以确保4D映射的每个时间段的呼吸信号的符号与运动的物理方向之间的关系保持一致。然后将采集过程中4D图内PET计数的变化用于生成呼吸曲线。使用26分钟的动态心脏NH3 PET采集(包括硬件得出的呼吸测量结果),我们显示出示踪剂动力学会严重降低由原始DDG方法生成的呼吸信号。在SOLLIE病例中,示踪剂从肝脏到肺的转变导致呼吸信号反转。新方法成功地补偿了示踪剂动力学,并改善了数据驱动信号与基于硬件的信号之间的相关性。平均而言,在整个PET采购中都保持了良好的相关性。

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