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Patient-dependent count-rate adaptive normalization for PET detector efficiency with delayed-window coincidence events

机译:与患者相关的计数率自适应归一化,用于延迟窗口重合事件的PET检测器效率

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摘要

Quantitative PET imaging is widely used in clinical diagnosis in oncology and neuroimaging. Accurate normalization correction for the efficiency of each line-of-response is essential for accurate quantitative PET image reconstruction. In this paper, we propose a normalization calibration method by using the delayed-window coincidence events from the scanning phantom or patient. The proposed method could dramatically reduce the 'ring' artifacts caused by mismatched system count-rates between the calibration and phantom/patient datasets. Moreover, a modified algorithm for mean detector efficiency estimation is proposed, which could generate crystal efficiency maps with more uniform variance. Both phantom and real patient datasets are used for evaluation. The results show that the proposed method could lead to better uniformity in reconstructed images by removing ring artifacts, and more uniform axial variance profiles, especially around the axial edge slices of the scanner. The proposed method also has the potential benefit to simplify the normalization calibration procedure, since the calibration can be performed using the on-the-fly acquired delayed-window dataset.
机译:定量PET成像广泛应用于肿瘤学和神经影像学的临床诊断。对每个响应线的效率进行准确的归一化校正对于准确的定量PET图像重建至关重要。在本文中,我们提出了一种使用来自扫描体模或患者的延迟窗口重合事件的归一化校准方法。所提出的方法可以大大减少由校准和幻像/患者数据集之间的系统计数率不匹配引起的“环”伪影。此外,提出了一种改进的平均探测器效率估计算法,该算法可以生成方差更均匀的晶体效率图。幻像和真实患者数据集均用于评估。结果表明,所提出的方法可以消除环伪影,从而在重构图像中实现更好的均匀性,并且可以使轴向方差分布更均匀,尤其是在扫描仪的轴向边缘切片周围。由于可以使用即时获取的延迟窗口数据集执行校准,因此所提出的方法还具有简化归一化校准过程的潜在优势。

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