Doll J, Zaers J, Trojan H, Bellemann M E, Adam L E, Haberkorn U, Brix G
Forschungsschwerpunkt Radiologische Diagnostik und Therapie, Deutsches Krebsforschungszentrum (DKFZ), Heidelberg, Deutschland.
Nuklearmedizin. 1998 Mar;37(2):62-7.
In the recent past, several algorithms have been developed in order to transform 3D sinograms acquired at volume PET systems into 2D data sets. These methods offer the possibility to combine the high sensitivity of the 3D measurement with the advantages of iterative 2D image reconstruction. The purpose of our study was the assessment of this approach by using phantom measurements and patient examinations.
The experiments were performed at the latest-generation whole-body PET system ECAT EXACT HR+. For 2D data acquisition, a collimator of thin tungsten septa was positioned in the field-of-view. Prior to image reconstruction, the measured 3D data were sorted into 2D sinograms by suing the Fourier rebinning (FORE) algorithm developed by M. Defrise. The standard filtered backprojection (FBP) method and an optimized ML/EM algorithm with overrelaxation for accelerated convergence were employed for image reconstruction. The spatial resolution of both methods as well as the convergence and noise properties of the ML/EM algorithm were studied in phantom measurements. Furthermore, patient data were acquired in the 2D mode as well as in the 3D mode and reconstructed with both techniques.
At the same spatial resolution, the ML/EM-reconstructed images showed fewer and less prominent artefacts than the FBP-reconstructed images. The resulting improved detail conspicuously was achieved for the data acquired in the 2D mode as well as in the 3D mode. The best image quality was obtained by iterative 2D reconstruction of 3D data sets which were previously rebinned into 2D sinograms with help of the FORE algorithm. The phantom measurements revealed that 50 iteration steps with the optimized ML/EM algorithm were sufficient to keep the relative quantitation error below 5%.
Our measurements show that the image quality in 3D PET can be improved by using iterative reconstruction techniques. The concept of 3D data acquisition and combining the FORE algorithm with 2D ML/EM reconstruction can readily be employed in clinical practice since the computation time is not considerably longer than that in iterative reconstruction of true 2D data.
最近,已经开发了几种算法,用于将在容积PET系统中采集的3D正弦图转换为2D数据集。这些方法提供了将3D测量的高灵敏度与迭代2D图像重建的优势相结合的可能性。我们研究的目的是通过使用体模测量和患者检查来评估这种方法。
实验在最新一代的全身PET系统ECAT EXACT HR+上进行。对于2D数据采集,将薄钨隔板准直器放置在视野中。在图像重建之前,通过使用M. Defrise开发的傅里叶重排(FORE)算法将测量的3D数据分类为2D正弦图。图像重建采用标准滤波反投影(FBP)方法和具有过松弛以加速收敛的优化ML/EM算法。在体模测量中研究了这两种方法的空间分辨率以及ML/EM算法的收敛和噪声特性。此外,以2D模式和3D模式采集患者数据,并使用这两种技术进行重建。
在相同的空间分辨率下,ML/EM重建的图像比FBP重建的图像显示出更少且不太明显的伪影。对于在2D模式和3D模式下采集的数据,都明显实现了细节的改善。通过对先前借助FORE算法重新分类为2D正弦图的3D数据集进行迭代2D重建,获得了最佳图像质量。体模测量表明,使用优化的ML/EM算法进行50次迭代步骤足以将相对定量误差保持在5%以下。
我们的测量表明,使用迭代重建技术可以提高3D PET中的图像质量。3D数据采集以及将FORE算法与2D ML/EM重建相结合的概念可以很容易地应用于临床实践,因为计算时间并不比真正2D数据的迭代重建长得多。