Istituto Nazionale di Fisica Nucleare, Sezione di Pisa, Pisa, Italy.
Dipartimento di Fisica, Università di Pisa, Pisa, Italy.
Med Phys. 2022 Jan;49(1):23-40. doi: 10.1002/mp.15336. Epub 2021 Dec 22.
In-beam positron emission tomography (PET) is one of the modalities that can be used for in vivo noninvasive treatment monitoring in proton therapy. Although PET monitoring has been frequently applied for this purpose, there is still no straightforward method to translate the information obtained from the PET images into easy-to-interpret information for clinical personnel. The purpose of this work is to propose a statistical method for analyzing in-beam PET monitoring images that can be used to locate, quantify, and visualize regions with possible morphological changes occurring over the course of treatment.
We selected a patient treated for squamous cell carcinoma (SCC) with proton therapy, to perform multiple Monte Carlo (MC) simulations of the expected PET signal at the start of treatment, and to study how the PET signal may change along the treatment course due to morphological changes. We performed voxel-wise two-tailed statistical tests of the simulated PET images, resembling the voxel-based morphometry (VBM) method commonly used in neuroimaging data analysis, to locate regions with significant morphological changes and to quantify the change.
The VBM resembling method has been successfully applied to the simulated in-beam PET images, despite the fact that such images suffer from image artifacts and limited statistics. Three dimensional probability maps were obtained, that allowed to identify interfractional morphological changes and to visualize them superimposed on the computed tomography (CT) scan. In particular, the characteristic color patterns resulting from the two-tailed statistical tests lend themselves to trigger alarms in case of morphological changes along the course of treatment.
The statistical method presented in this work is a promising method to apply to PET monitoring data to reveal interfractional morphological changes in patients, occurring over the course of treatment. Based on simulated in-beam PET treatment monitoring images, we showed that with our method it was possible to correctly identify the regions that changed. Moreover we could quantify the changes, and visualize them superimposed on the CT scan. The proposed method can possibly help clinical personnel in the replanning procedure in adaptive proton therapy treatments.
在线质子发射断层扫描(PET)是一种可用于质子治疗中体内无创治疗监测的模式。尽管 PET 监测已被频繁应用于该目的,但目前仍没有直接的方法可将从 PET 图像中获得的信息转化为易于临床人员解读的信息。本工作旨在提出一种可用于分析在线 PET 监测图像的统计方法,该方法可用于定位、量化和可视化治疗过程中可能发生形态变化的区域。
我们选择了一名接受质子治疗的鳞状细胞癌(SCC)患者,对治疗开始时预期的 PET 信号进行了多次蒙特卡罗(MC)模拟,并研究了由于形态变化,PET 信号可能如何随治疗过程而改变。我们对模拟的 PET 图像进行了类似于基于体素的形态计量学(VBM)方法的两尾统计检验,以定位具有显著形态变化的区域并量化变化。
尽管这些图像存在图像伪影和有限的统计数据,但类似于 VBM 的方法已成功应用于模拟的在线 PET 图像。获得了三维概率图,可识别分次间形态变化并将其叠加在计算机断层扫描(CT)扫描上进行可视化。特别是,由于两尾统计检验而产生的特征颜色模式可用于在治疗过程中发生形态变化时触发警报。
本文提出的统计方法是一种很有前途的方法,可应用于 PET 监测数据,以揭示治疗过程中患者分次间的形态变化。基于模拟的在线质子治疗监测图像,我们表明,通过我们的方法,可以正确识别发生变化的区域。此外,我们可以量化变化并将其叠加在 CT 扫描上进行可视化。所提出的方法可能有助于临床人员在适应性质子治疗中进行重新计划过程。