Baran Jakub, Chen Zhaolin, Sforazzini Francesco, Ferris Nicholas, Jamadar Sharna, Schmitt Ben, Faul David, Shah Nadim Jon, Cholewa Marian, Egan Gary F
Monash Biomedical Imaging, Monash University, Melbourne, Australia.
Department of Biophysics, Faculty of Mathematics and Natural Sciences, University of Rzeszow, Rzeszow, Poland.
BMC Med Imaging. 2018 Nov 6;18(1):41. doi: 10.1186/s12880-018-0283-3.
Attenuation correction is one of the most crucial correction factors for accurate PET data quantitation in hybrid PET/MR scanners, and computing accurate attenuation coefficient maps from MR brain acquisitions is challenging. Here, we develop a method for accurate bone and air segmentation using MR ultrashort echo time (UTE) images.
MR UTE images from simultaneous MR and PET imaging of five healthy volunteers was used to generate a whole head, bone and air template image for inclusion into an improved MR derived attenuation correction map, and applied to PET image data for quantitative analysis. Bone, air and soft tissue were segmented based on Gaussian Mixture Models with probabilistic tissue maps as a priori information. We present results for two approaches for bone attenuation coefficient assignments: one using a constant attenuation correction value; and another using an estimated continuous attenuation value based on a calibration fit. Quantitative comparisons were performed to evaluate the accuracy of the reconstructed PET images, with respect to a reference image reconstructed with manually segmented attenuation maps.
The DICE coefficient analysis for the air and bone regions in the images demonstrated improvements compared to the UTE approach, and other state-of-the-art techniques. The most accurate whole brain and regional brain analyses were obtained using constant bone attenuation coefficient values.
A novel attenuation correction method for PET data reconstruction is proposed. Analyses show improvements in the quantitative accuracy of the reconstructed PET images compared to other state-of-the-art AC methods for simultaneous PET/MR scanners. Further evaluation is needed with radiopharmaceuticals other than FDG, and in larger cohorts of participants.
衰减校正是混合PET/MR扫描仪中准确进行PET数据定量分析的关键校正因素之一,从MR脑部采集数据计算准确的衰减系数图具有挑战性。在此,我们开发了一种利用MR超短回波时间(UTE)图像进行准确的骨骼和空气分割的方法。
使用来自五名健康志愿者的同步MR和PET成像的MR UTE图像生成一个全脑、骨骼和空气模板图像,将其纳入改进的基于MR的衰减校正图,并应用于PET图像数据进行定量分析。基于高斯混合模型,以概率性组织图作为先验信息对骨骼、空气和软组织进行分割。我们展示了两种骨骼衰减系数赋值方法的结果:一种使用恒定的衰减校正值;另一种使用基于校准拟合估计的连续衰减值。进行定量比较以评估重建PET图像相对于使用手动分割衰减图重建的参考图像的准确性。
图像中空气和骨骼区域的DICE系数分析表明,与UTE方法和其他现有技术相比有改进。使用恒定的骨骼衰减系数值获得了最准确的全脑和区域脑分析结果。
提出了一种用于PET数据重建的新型衰减校正方法。分析表明,与用于同步PET/MR扫描仪的其他现有AC方法相比,重建PET图像的定量准确性有所提高。需要使用除FDG之外的放射性药物,并在更大的参与者队列中进行进一步评估。