G. Angelis, J. Gillam, W. Ryder, A. Kyme, R. Fulton, S. Meikle
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引用次数: 3
摘要
对自由运动的小动物进行精确的运动补偿图像重建,需要精确计算时间加权灵敏度校正因子。对每个记录姿势的所有可能的响应线进行反向投影是一项计算密集型任务,需要非常长的重建时间。在这项工作中,我们研究了一种加速这项任务的方法,通过随机采样响应线和用于计算时间平均灵敏度图像的姿态。在microPET Focus220扫描仪上获得的两个幻影数据集用于量化随机采样灵敏度图像中引入的误差,并传播到最终的重建图像中。此外,通过重建自由移动的大鼠采集来评估所提出方法的定性性能。结果表明,随机化会严重放大重构图像中的噪声,特别是当LORs采样较少时。然而,这种误差可以通过在重建之前对随机化的灵敏度图像进行后滤波来抑制(例如2 mm FHWM)。这种方法可以大大减少运动补偿图像重建中估计时间平均灵敏度图像所涉及的计算时间。
Efficient time-weighted sensitivity image calculation for motion compensated list mode reconstruction
Accurate motion compensated image reconstruction of freely moving small animals requires the exact calculation of the time-weighted sensitivity correction factors. Back-projection of all possible lines of response for every recorded pose is a computationally intensive task, which requires impractically long reconstruction times. In this work we investigated an approach to accelerate this task, by randomly sampling the lines of response and the poses that are used to calculate the time-averaged sensitivity image. Two phantom datasets, acquired on the microPET Focus220 scanner, were used to quantify errors introduced in the randomly sampled sensitivity images and propagated to the final reconstructed images. In addition, the qualitative performance of the proposed methodology was assessed by reconstructing a freely moving rat acquisition. Results showed that randomisation can severely amplify the noise in the reconstructed images, especially when few LORs are sampled. However, such errors can be suppressed by post-filtering the randomised sensitivity images prior to reconstruction (e.g. 2 mm FHWM). Such an approach can substantially reduce the computational time involved during the estimation of the time-averaged sensitivity image for motion compensated image reconstruction.