Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano, Milano, Italy. Author to whom any correspondence should be addressed.
Phys Med Biol. 2019 Feb 5;64(4):045002. doi: 10.1088/1361-6560/aafcec.
In-room magnetic resonance imaging (MRI) allows the acquisition of fast 2D cine-MRI centered in the tumor for advanced motion management in radiotherapy. To achieve 3D information during treatment, patient-specific motion models can be considered the most viable solution. However, conventional global motion models are built using a single motion surrogate, independently from the anatomical location. In this work, we present a novel motion model based on regions of interest (ROIs) established on 4D computed tomography (4DCT) and 2D cine-MRI, aiming at accurately compensating for changes during treatment. In the planning phase, a motion model is built on a 4DCT dataset, through 3D deformable image registration (DIR). ROIs are then defined and correlated with motion fields derived by 2D DIR between CT slices centered in the tumor. In the treatment phase, the model is applied to in-room cine-MRI data to compensate for organ motion in a multi-modal framework, aiming at estimating a time-resolved 3DCT. The method is validated on a digital phantom and tested on two lung patients. Analysis is performed by considering different anatomical planes (coronal, sagittal and a combination of the two) and evaluating the performance of the method on tumor and diaphragm. For the phantom study, the ROI-based model results in a uniform median error on both diaphragm and tumor below 1.5 mm. For what concerns patients, median errors on both diaphragm and tumor are around 2 mm (maximum patient resolution), confirming the capability of the method to regionally compensate for motion. A novel ROI-based motion model is proposed as an integral part of an envisioned clinical MRI-guided workflow aiming at enhanced image guidance compared to conventional strategies.
室内磁共振成像(MRI)允许在肿瘤中心采集快速 2D 电影 MRI,以实现放射治疗中的高级运动管理。为了在治疗过程中获得 3D 信息,可以考虑使用患者特定的运动模型作为最可行的解决方案。然而,传统的全局运动模型是使用单一运动替代物构建的,与解剖位置无关。在这项工作中,我们提出了一种基于感兴趣区域(ROI)的新型运动模型,旨在准确补偿治疗过程中的变化。在规划阶段,通过 3D 变形图像配准(DIR)在 4DCT 数据集上构建运动模型。然后定义 ROI,并将其与通过肿瘤中心 CT 切片之间的 2D DIR 得出的运动场相关联。在治疗阶段,将模型应用于室内电影 MRI 数据,以在多模态框架中补偿器官运动,旨在估计时间分辨 3DCT。该方法在数字体模上进行了验证,并在两名肺部患者中进行了测试。通过考虑不同的解剖平面(冠状、矢状和两者的组合)进行分析,并评估方法在肿瘤和横膈膜上的性能。对于体模研究,基于 ROI 的模型在横膈膜和肿瘤上的均匀中位数误差低于 1.5 毫米。对于患者,横膈膜和肿瘤上的中位数误差约为 2 毫米(最大患者分辨率),这证实了该方法能够在区域上补偿运动。提出了一种新的基于 ROI 的运动模型,作为设想中的临床 MRI 引导工作流程的组成部分,旨在与传统策略相比提供增强的图像引导。