Glatting Gerhard, Werner Christoph, Reske Sven N, Bellemann Matthias E
Department of Nuclear Medicine, University of Ulm, 89070 Ulm, Germany.
Med Phys. 2003 Sep;30(9):2315-9. doi: 10.1118/1.1595600.
Image quality in positron emission tomography (PET) can be assessed with physical parameters, as spatial resolution and signal-to-noise ratio, or using psychophysical approaches, which include the observer performance and the considered task (ROC analysis). For PET in oncology, such a task is the detection of hot lesions. The aim of the present study was to assess the lesion detection performance due to adequate modeling of the scanner and the measurement process in the image reconstruction process. We compared the standard OSEM software of the manufacturer with a sophisticated fully 3D iterative reconstruction technique (USC MAP). A rectangular phantom with 6 oblique line sources in a homogeneous background (2.6 kBq/ml 18F) was imaged dynamically with an ECAT EXACT HR+ scanner in 3D mode. Reconstructed activity contrasts varied between 15 and 0, as the line sources were filled with 11C (3.2 MBq/ml). Measured attenuation and standard randoms, dead time, and scatter corrections of the manufacturer were employed. For the ROC analysis, a software tool presented a cut-out of the phantom (15 x 15 pixels) to two observers. These cut-outs were rated (5 classes) and the area Az under the ROC curve was determined as a measure of detection performance. The improvement for Az with USC MAP compared to the OSEM reconstructions ranged between 0.02 and 0.23 for signal-to-noise ratios of the background between 2.8 and 3.1 and lesion contrast between 2.1 and 4.2. This study demonstrates that adequate modeling of the measurement process in the reconstruction algorithm improves the detection of small hot lesions markedly.
正电子发射断层扫描(PET)中的图像质量可以通过物理参数来评估,如空间分辨率和信噪比,也可以使用心理物理学方法,包括观察者表现和所考虑的任务(ROC分析)。对于肿瘤学中的PET,这样的任务是检测热病灶。本研究的目的是在图像重建过程中,通过对扫描仪和测量过程进行适当建模,来评估病灶检测性能。我们将制造商的标准OSEM软件与一种先进的全三维迭代重建技术(USC MAP)进行了比较。使用ECAT EXACT HR+扫描仪在三维模式下对一个在均匀背景(2.6 kBq/ml 18F)中有6个斜线源的矩形体模进行动态成像。由于线源填充的是11C(3.2 MBq/ml),重建的活性对比度在15到0之间变化。采用了制造商测量的衰减、标准随机数、死时间和散射校正。对于ROC分析,一个软件工具向两名观察者展示了体模的一个剪裁区域(15×15像素)。这些剪裁区域被评级(分为5类),并确定ROC曲线下的面积Az作为检测性能的衡量指标。对于背景信噪比在2.8到3.1之间且病灶对比度在2.1到4.2之间的情况,与OSEM重建相比,USC MAP在Az上的改善范围在0.02到0.23之间。这项研究表明,在重建算法中对测量过程进行适当建模可显著提高对小热病灶的检测能力。