Fung Edward K, Planeta-Wilson Beata, Mulnix Tim, Carson Richard E
PET center, Yale University, New Haven, CT 06511 USA.
IEEE Nucl Sci Symp Conf Rec (1997). 2009 Oct 24;2009:2710-2714. doi: 10.1109/NSSMIC.2009.5401977.
Many methods have been proposed for generating an image-derived input function (IDIF) exclusively from PET images. The purpose of this study was to assess the viability of a multimodality approach utilizing registered MR images. 3T-MR and HRRT-PET data were acquired from human subjects. Segmentation of both the left and right carotid arteries was performed in MR images using a 3D level sets method. Vessel centerlines were extracted by parameterization of the segmented voxel coordinates with either a single polynomial curve or a B-spline curve fitted to the segmented data. These centerlines were subsequently re-registered to static PET data to maximize the accurate classification of PET voxels in the ROI. The accuracy of this approach was assessed by comparison of the area under the curve (AUC) of the IDIF to that measured from conventional automated arterial blood sampling.Our method produces curves similar in shape to that of blood sampling. The mean AUC ratio of the centerline region was 0.40±0.19 before re-registration and 0.69±0.26 after re-registration. Increasing the diameter of the carotid ROI produced a smooth reduction in AUC. Thus, even with the high resolution of the HRRT, partial volume correction is still necessary. This study suggests that the combination of PET information with MR segmented regions will demonstrate an improvement over regions based solely on MR or PET alone.
已经提出了许多仅从PET图像生成图像衍生输入函数(IDIF)的方法。本研究的目的是评估利用配准的MR图像的多模态方法的可行性。从人体受试者获取了3T-MR和HRRT-PET数据。使用3D水平集方法在MR图像中对左右颈动脉进行分割。通过用拟合到分割数据的单个多项式曲线或B样条曲线对分割的体素坐标进行参数化来提取血管中心线。这些中心线随后重新配准到静态PET数据,以最大限度地准确分类ROI中的PET体素。通过将IDIF的曲线下面积(AUC)与从传统自动动脉血采样测量的AUC进行比较来评估该方法的准确性。我们的方法产生的曲线形状与血样采集的曲线相似。重新配准前中心线区域的平均AUC比率为0.40±0.19,重新配准后为0.69±0.26。增加颈动脉ROI的直径会使AUC平滑降低。因此,即使具有HRRT的高分辨率,部分容积校正仍然是必要的。本研究表明,PET信息与MR分割区域的组合将比仅基于MR或PET的区域表现出改进。