Lorsakul Auranuch, Li Quanzheng, Trott Cathryn M, Hoog Christopher, Petibon Yoann, Ouyang Jinsong, Laine Andrew F, El Fakhri Georges
Center for Advanced Medical Imaging Sciences, Division of Nuclear Medicine and Molecular Imaging, Massachusetts General Hospital, Boston, Massachusetts 02114 and Department of Biomedical Engineering, Columbia University, New York, New York 10027.
Center for Advanced Medical Imaging Sciences, Division of Nuclear Medicine and Molecular Imaging, Massachusetts General Hospital, Boston, Massachusetts 02114 and Department of Radiology, Harvard Medical School, Boston, Massachusetts 02115.
Med Phys. 2014 Oct;41(10):102504. doi: 10.1118/1.4895975.
Respiratory-gated positron emission tomography (PET)/computed tomography protocols reduce lesion smearing and improve lesion detection through a synchronized acquisition of emission data. However, an objective assessment of image quality of the improvement gained from respiratory-gated PET is mainly limited to a three-dimensional (3D) approach. This work proposes a 4D numerical observer that incorporates both spatial and temporal informations for detection tasks in pulmonary oncology.
The authors propose a 4D numerical observer constructed with a 3D channelized Hotelling observer for the spatial domain followed by a Hotelling observer for the temporal domain. Realistic (18)F-fluorodeoxyglucose activity distributions were simulated using a 4D extended cardiac torso anthropomorphic phantom including 12 spherical lesions at different anatomical locations (lower, upper, anterior, and posterior) within the lungs. Simulated data based on Monte Carlo simulation were obtained using geant4 application for tomographic emission (GATE). Fifty noise realizations of six respiratory-gated PET frames were simulated by GATE using a model of the Siemens Biograph mMR scanner geometry. PET sinograms of the thorax background and pulmonary lesions that were simulated separately were merged to generate different conditions of the lesions to the background (e.g., lesion contrast and motion). A conventional ordered subset expectation maximization (OSEM) reconstruction (5 iterations and 6 subsets) was used to obtain: (1) gated, (2) nongated, and (3) motion-corrected image volumes (a total of 3200 subimage volumes: 2400 gated, 400 nongated, and 400 motion-corrected). Lesion-detection signal-to-noise ratios (SNRs) were measured in different lesion-to-background contrast levels (3.5, 8.0, 9.0, and 20.0), lesion diameters (10.0, 13.0, and 16.0 mm), and respiratory motion displacements (17.6-31.3 mm). The proposed 4D numerical observer applied on multiple-gated images was compared to the conventional 3D approach applied on the nongated and motion-corrected images.
On average, the proposed 4D numerical observer improved the detection SNR by 48.6% (p < 0.005), whereas the 3D methods on motion-corrected images improved by 31.0% (p < 0.005) as compared to the nongated method. For all different conditions of the lesions, the relative SNR measurement (Gain = SNRObserved/SNRNongated) of the 4D method was significantly higher than one from the motion-corrected 3D method by 13.8% (p < 0.02), where Gain4D was 1.49 ± 0.21 and Gain3D was 1.31 ± 0.15. For the lesion with the highest amplitude of motion, the 4D numerical observer yielded the highest observer-performance improvement (176%). For the lesion undergoing the smallest motion amplitude, the 4D method provided superior lesion detectability compared with the 3D method, which provided a detection SNR close to the nongated method. The investigation on a structure of the 4D numerical observer showed that a Laguerre-Gaussian channel matrix with a volumetric 3D function yielded higher lesion-detection performance than one with a 2D-stack-channelized function, whereas a different kind of channels that have the ability to mimic the human visual system, i.e., difference-of-Gaussian, showed similar performance in detecting uniform and spherical lesions. The investigation of the detection performance when increasing noise levels yielded decreasing detection SNR by 27.6% and 41.5% for the nongated and gated methods, respectively. The investigation of lesion contrast and diameter showed that the proposed 4D observer preserved the linearity property of an optimal-linear observer while the motion was present. Furthermore, the investigation of the iteration and subset numbers of the OSEM algorithm demonstrated that these parameters had impact on the lesion detectability and the selection of the optimal parameters could provide the maximum lesion-detection performance. The proposed 4D numerical observer outperformed the other observers for the lesion-detection task in various lesion conditions and motions.
The 4D numerical observer shows substantial improvement in lesion detectability over the 3D observer method. The proposed 4D approach could potentially provide a more reliable objective assessment of the impact of respiratory-gated PET improvement for lesion-detection tasks. On the other hand, the 4D approach may be used as an upper bound to investigate the performance of the motion correction method. In future work, the authors will validate the proposed 4D approach on clinical data for detection tasks in pulmonary oncology.
呼吸门控正电子发射断层扫描(PET)/计算机断层扫描协议通过同步采集发射数据减少病变模糊并提高病变检测能力。然而,对呼吸门控PET所带来的图像质量改善的客观评估主要局限于三维(3D)方法。这项工作提出了一种四维数值观测器,它结合了空间和时间信息,用于肺部肿瘤学中的检测任务。
作者提出了一种四维数值观测器,它由一个用于空间域的三维通道化霍特林观测器和一个用于时间域的霍特林观测器构成。使用一个四维扩展心脏躯干拟人化体模模拟真实的(18)F-氟脱氧葡萄糖活性分布,该体模在肺内不同解剖位置(下、上、前和后)包含12个球形病变。基于蒙特卡罗模拟的数据使用用于断层发射的geant4应用程序(GATE)获得。GATE使用西门子Biograph mMR扫描仪几何模型对六个呼吸门控PET帧的五十种噪声实现进行了模拟。分别模拟的胸部背景和肺部病变的PET正弦图被合并,以生成病变与背景的不同条件(例如,病变对比度和运动)。使用传统的有序子集期望最大化(OSEM)重建(5次迭代和6个子集)来获得:(1)门控的、(2)非门控的和(3)运动校正的图像体积(总共3200个子图像体积:2400个门控的、400个非门控的和400个运动校正的)。在不同的病变与背景对比度水平(3.5、8.0、9.0和20.0)、病变直径(10.0、13.0和16.0毫米)以及呼吸运动位移(17.6 - 31.3毫米)下测量病变检测信噪比(SNR)。将应用于多门控图像的所提出的四维数值观测器与应用于非门控和运动校正图像的传统三维方法进行比较。
平均而言,所提出 的四维数值观测器将检测SNR提高了48.6%(p < 0.005),而运动校正图像上的三维方法与非门控方法相比提高了31.0%(p < 0.005)。对于所有不同的病变条件,四维方法的相对SNR测量值(增益 = 观测到的SNR/非门控的SNR)比运动校正的三维方法的相对SNR测量值显著高13.8%(p < 0.02),其中四维增益为1.49 ± 0.21,三维增益为1.31 ± 0.15。对于运动幅度最大的病变,四维数值观测器产生了最高的观测器性能提升(176%)。对于运动幅度最小的病变,与三维方法相比,四维方法提供了更好的病变可检测性,三维方法提供的检测SNR接近非门控方法。对四维数值观测器结构的研究表明,具有体积三维函数的拉盖尔 - 高斯通道矩阵比具有二维堆叠通道化函数的矩阵产生更高的病变检测性能,而另一种能够模拟人类视觉系统的通道,即高斯差分通道,在检测均匀和球形病变时表现出相似的性能。对增加噪声水平时检测性能的研究表明,对于非门控和门控方法,检测SNR分别降低了27.6%和41.5%。对病变对比度和直径的研究表明,所提出的四维观测器在存在运动时保持了最优线性观测器的线性特性。此外,对OSEM算法的迭代次数和子集中的研究表明,这些参数对病变可检测性有影响,选择最优参数可以提供最大的病变检测性能。在所提出的四维数值观测器在各种病变条件和运动下的病变检测任务中优于其他观测器。
四维数值观测器在病变可检测性方面比三维观测器方法有显著提高。所提出的四维方法可能潜在地为呼吸门控PET对病变检测任务的改善影响提供更可靠的客观评估。另一方面,四维方法可以用作研究运动校正方法性能的上限。在未来的工作中,作者将在肺部肿瘤学检测任务的临床数据上验证所提出的四维方法。