Department of Medical Physics, University of Wisconsin School of Medicine and Public Health, 1111 Highland Ave, Madison, WI 53705, USA.
Phys Med Biol. 2010 Jan 7;55(1):221-36. doi: 10.1088/0031-9155/55/1/013.
Tumor heterogeneities observed in positron emission tomography (PET) imaging are frequently compromised by partial volume effects which may affect treatment prognosis, assessment or future implementations such as biologically optimized treatment planning (dose painting). This paper presents a method for partial volume correction of PET-imaged heterogeneous tumors. A point source was scanned on a GE Discovery LS at positions of increasing radii from the scanner's center to obtain the spatially varying point spread function (PSF). PSF images were fit in three dimensions to Gaussian distributions using least squares optimization. Continuous expressions were devised for each Gaussian width as a function of radial distance, allowing for generation of the system PSF at any position in space. A spatially varying partial volume correction (SV-PVC) technique was developed using expectation maximization (EM) and a stopping criterion based on the method's correction matrix generated for each iteration. The SV-PVC was validated using a standard tumor phantom and a tumor heterogeneity phantom and was applied to a heterogeneous patient tumor. SV-PVC results were compared to results obtained from spatially invariant partial volume correction (SINV-PVC), which used directionally uniform three-dimensional kernels. SV-PVC of the standard tumor phantom increased the maximum observed sphere activity by 55 and 40% for 10 and 13 mm diameter spheres, respectively. Tumor heterogeneity phantom results demonstrated that as net changes in the EM correction matrix decreased below 35%, further iterations improved overall quantitative accuracy by less than 1%. SV-PVC of clinically observed tumors frequently exhibited changes of +/-30% in regions of heterogeneity. The SV-PVC method implemented spatially varying kernel widths and automatically determined the number of iterations for optimal restoration, parameters which are arbitrarily chosen in SINV-PVC. Comparing SV-PVC to SINV-PVC demonstrated that similar results could be reached using both methods, but large differences result for the arbitrary selection of SINV-PVC parameters. The presented SV-PVC method was performed without user intervention, requiring only a tumor mask as input. Research involving PET-imaged tumor heterogeneity should include correcting for partial volume effects to improve the quantitative accuracy of results.
正电子发射断层扫描(PET)成像中观察到的肿瘤异质性经常受到部分容积效应的影响,这可能会影响治疗预后、评估或未来的实施,如生物优化治疗计划(剂量绘画)。本文提出了一种用于校正 PET 成像不均匀肿瘤的部分容积效应的方法。在 GE Discovery LS 上,在从扫描仪中心向外的半径增大的位置扫描一个点源,以获得空间变化的点扩散函数(PSF)。使用最小二乘法优化,将 PSF 图像在三维空间拟合到高斯分布中。为每个高斯宽度设计了连续表达式,作为径向距离的函数,允许在任何空间位置生成系统 PSF。使用期望最大化(EM)和基于为每个迭代生成的校正矩阵的停止准则开发了一种空间变化的部分容积校正(SV-PVC)技术。使用标准肿瘤体模和肿瘤异质性体模验证了 SV-PVC,并将其应用于不均匀的患者肿瘤。将 SV-PVC 结果与使用方向均匀的三维核的空间不变部分容积校正(SINV-PVC)获得的结果进行了比较。SV-PVC 对标准肿瘤体模的校正使 10 和 13mm 直径球体的最大观察球体活性分别增加了 55%和 40%。肿瘤异质性体模结果表明,当 EM 校正矩阵的净变化低于 35%时,进一步的迭代仅将整体定量准确性提高了 1%以下。临床观察到的肿瘤的 SV-PVC 经常在异质性区域显示出+/-30%的变化。SV-PVC 方法实施了空间变化的核宽度,并自动确定了最佳恢复所需的迭代次数,这些参数在 SINV-PVC 中是任意选择的。将 SV-PVC 与 SINV-PVC 进行比较表明,两种方法都可以达到相似的结果,但 SINV-PVC 参数的任意选择会导致结果存在较大差异。所提出的 SV-PVC 方法是在没有用户干预的情况下执行的,仅需要肿瘤掩模作为输入。涉及 PET 成像肿瘤异质性的研究应包括校正部分容积效应,以提高结果的定量准确性。