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Improvement of the Sign Determination Method for Data-Driven respiratory signal in TOF-PET

机译:TOF-PET中数据驱动呼吸信号标志测定方法的改进

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Respiratory gating and motion correction can increase resolution in PET chest imaging, but require a respiratory signal. Data-Driven (DD) methods aim to produce a respiratory signal from PET data, avoiding the use of external devices. Principal Component Analysis (PCA) is an easy to implement DD algorithm whose signals, however, are determined up to an arbitrary factor. The direction of the motion represented by its signal has to be determined. In this work we present the extension to TOF data of a previously presented sign-determination method. Furthermore, we propose the application of a selection process in sinogram space, to automatically select the areas of the data mostly affected by respiratory motion. The performance of the updated sign-determination method is evaluated on patient data, and the effect of TOF information and masking process is investigated also in terms of quality of the PCA respiratory signal.
机译:呼吸门控和运动校正可以增加PET胸部成像中的分辨率,但需要呼吸信号。数据驱动(DD)方法旨在产生来自PET数据的呼吸信号,避免使用外部设备。主成分分析(PCA)是一种易于实现的DD算法,其信号被确定为任意因子。必须确定由其信号表示的运动的方向。在这项工作中,我们将扩展到先前呈现的标志确定方法的TOF数据。此外,我们建议在据据思想空间中应用选择过程,以自动选择受呼吸运动影响的数据的区域。对患者数据评估更新的符号确定方法的性能,并在PCA呼吸信号的质量方面研究了TOF信息和掩蔽过程的效果。

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