Iterative image reconstruction with random correction for PET studies

SPIE Proceedings Pub Date : 2000-06-06 DOI:10.1117/12.387629
Jyh-Cheng Chen, Ren-Shyan Liu, K. Tu, Henry Horng-Shing Lu, Tai-Been Chen, K. Chou
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引用次数: 1

Abstract

A maximum likelihood-expectation maximization (ML-EM) reconstruction algorithm has been developed that allows random coincidence correction for the phantom we used and the reconstructed images are better than those obtained by convolution backprojection (CBP) for positron emission tomography (PET) studies in terms of spatial resolution, image artifacts and noise. With our algorithm reconstruct the true coincidence events and random coincidence events were reconstructed separately. We also calculated the random ratio from the measured projection data (singles) using line and cylindrical phantoms, respectively. From cylindrical phantom experiments, the random event ratio was 41.8% to 49.1% in each ring. These results are close to the ratios obtained from geometric calculation, which range from 45.0% to 49.5%. The random ratios and the patterns of random events provide insightful information for random correction. This information is particularly valuable when the delay window correction is not available as in the case of our PET system.
PET研究中随机校正的迭代图像重建
一种最大似然期望最大化(ML-EM)重建算法允许对我们使用的幻影进行随机重合校正,并且在空间分辨率,图像伪影和噪声方面,重建图像优于卷积反投影(CBP)获得的正电子发射断层扫描(PET)研究。该算法分别对真实巧合事件和随机巧合事件进行了重构。我们还从测量的投影数据(单个)中分别使用线形和圆柱形幻影计算了随机比率。圆柱形幻像实验中,每个环的随机事件比为41.8% ~ 49.1%。这些结果与几何计算的比率接近,其范围为45.0% ~ 49.5%。随机比率和随机事件的模式为随机校正提供了有见地的信息。在我们的PET系统中,当延迟窗口校正不可用时,此信息特别有价值。
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