Department of Biomedical Engineering, King's College London, UK.
Med Phys. 2012 Oct;39(10):6474-83. doi: 10.1118/1.4754586.
Although there have been various proposed methods for positron emission tomography (PET) motion correction, there is not sufficient evidence to answer which method is better in practice. This investigation aims to characterize the behavior of the two main motion-correction approaches in terms of convergence and image properties.
For the first method, reconstruct-transform-average (RTA), reconstructions of each gate are transformed to a reference gate and averaged. In the second method, motion-compensated image reconstruction (MCIR), motion information is incorporated within the reconstruction. Both techniques studied were based on the ordered subsets expectation maximization algorithm. Motion information was obtained from a dynamic MR acquisition performed on a human volunteer and concurrent PET data were simulated from the dynamic MR data. The two approaches were assessed statistically using multiple realizations to accurately define the noise properties of the reconstructed images.
MCIR successfully recovers the true values of all regions, whereas RTA has high bias due to the limited count-statistics and interpolation errors during the transformation step. In addition, RTA noise is very small and stabilized, whereas in MCIR noise becomes progressively greater with the number of iterations and therefore MCIR outperforms RTA in terms of MSE only if noise is treated. For example, MCIR with postfiltering results in MSE up to 42% lower than RTA.
This study indicates that MCIR may provide superior performance overall to RTA if noise is minimized. However, in applications where quantification is not the main objective RTA can be a practical and simple method to correct for motion.
尽管已经提出了各种用于正电子发射断层扫描(PET)运动校正的方法,但没有足够的证据来回答哪种方法在实践中更好。本研究旨在从收敛性和图像特性方面描述两种主要运动校正方法的行为。
对于第一种方法,重建-变换-平均(RTA),每个门控的重建都转换为参考门控并进行平均。在第二种方法中,运动补偿图像重建(MCIR),运动信息被纳入重建中。所研究的两种技术都是基于有序子集期望最大化算法。运动信息是从人类志愿者进行的动态 MR 采集获得的,并且从动态 MR 数据模拟了并发的 PET 数据。使用多次实现对这两种方法进行了统计学评估,以准确定义重建图像的噪声特性。
MCIR 成功地恢复了所有区域的真实值,而 RTA 由于在转换步骤中的有限计数统计和插值误差,存在高偏差。此外,RTA 的噪声非常小且稳定,而在 MCIR 中,随着迭代次数的增加,噪声会逐渐增加,因此只有在处理噪声的情况下,MCIR 才会在均方误差方面优于 RTA。例如,带有后滤波的 MCIR 可使均方误差降低高达 42%。
本研究表明,如果最小化噪声,MCIR 可能总体上提供优于 RTA 的性能。然而,在定量不是主要目标的应用中,RTA 可以是一种实用且简单的运动校正方法。