Zhong Jiajian, Huang Taiming, Qiu Minmin, Guan Qi, Luo Ning, Deng Yongjin
The First Affiliated Hospital, Sun Yat-sen University, Guangzhou 510080, Guangdong Province, PR China.
The First Affiliated Hospital, Sun Yat-sen University, Guangzhou 510080, Guangdong Province, PR China.
Phys Med. 2023 Jan;105:102510. doi: 10.1016/j.ejmp.2022.12.002. Epub 2022 Dec 18.
To propose an unsupervised deformable registration learning framework-based markerless beam's eye view (BEV) tumor tracking algorithm for the inferior quality megavolt (MV) images with occlusion and deformation.
Quality assurance (QA) plans for thorax phantom were delivered to the linear accelerator with artificially treatment offsets. Electronic portal imaging device (EPID) images (682 in total) and corresponding digitally reconstructed radiograph (DRR) were gathered as the moving and fixed image pairs, which were randomly divided into training and testing set in a ratio of 0.7:0.3 to train a non-rigid registration model with Voxelmorph. Simultaneously, 533 pairs of patient images from 21 lung tumor plans were acquired for tumor tracking investigation to offer quantifiable tumor motion data. Tracking error and image similarity measures were employed to evaluate the algorithm's accuracy.
The tracking algorithm can handle image registration with non-rigid deformation and losses ranging from 10 % to 80 %. The tracking errors in the phantom study were below 3 mm in about 86.8 % of cases, and below 2 mm in about 80 % of cases. The normalized mutual information (NMI) changes from 1.182 ± 0.024 to 1.198 ± 0.024 (p < 0.005). The patient target had an average translation of 3.784 mm and a maximum comprehensive displacement value of 7.455 mm. NMI of patient images changes from 1.209 ± 0.027 to 1.217 ± 0.026 (p < 0.005), indicating the presence of non-negligible non-rigid deformation.
The study provides a robust markerless tumor tracking algorithm for multi-modal, partial data and inferior quality image processing.
提出一种基于无监督可变形配准学习框架的无标记射野内肿瘤跟踪算法,用于处理存在遮挡和变形的低质量兆伏(MV)图像。
将胸部体模的质量保证(QA)计划传送到带有人工治疗偏移的直线加速器。收集电子射野影像装置(EPID)图像(共682幅)及相应的数字重建X线片(DRR)作为运动和固定图像对,以0.7:0.3的比例随机分为训练集和测试集,用于训练基于Voxelmorph的非刚性配准模型。同时,采集来自21个肺部肿瘤计划的533对患者图像用于肿瘤跟踪研究,以提供可量化的肿瘤运动数据。采用跟踪误差和图像相似性度量来评估算法的准确性。
该跟踪算法能够处理具有非刚性变形和10%至80%损失的图像配准。在体模研究中,约86.8%的情况下跟踪误差低于3毫米,约80%的情况下低于2毫米。归一化互信息(NMI)从1.182±0.024变为1.198±0.024(p<0.005)。患者靶区的平均平移为3.784毫米,最大综合位移值为7.455毫米。患者图像的NMI从1.209±0.027变为1.217±0.026(p<0.005),表明存在不可忽略的非刚性变形。
本研究为多模态、部分数据及低质量图像处理提供了一种稳健的无标记肿瘤跟踪算法。