A markerless beam′s eye view tumor tracking algorithm based on VoxelMorph-a learning-based unsupervised registration framework for images with missing data
10.3760/cma.j.cn112271-20220628-00272
- VernacularTitle:基于VoxelMorph无监督缺失图像配准的无标记射束方向观肿瘤跟踪算法
- Author:
Taiming HUANG
1
;
Jiajian ZHONG
;
Qi GUAN
;
Minmin QIU
;
Ning LUO
;
Yongjin DENG
Author Information
1. 中山大学附属第一医院放射治疗科,广州 510080
- Keywords:
Makerless tumor tracking;
EPID;
Voxelmorph;
Nonrigid registration;
MLC occlusion
- From:
Chinese Journal of Radiological Medicine and Protection
2022;42(12):958-965
- CountryChina
- Language:Chinese
-
Abstract:
Objective:To propose a machine learning-based markerless beam′s eye view (BEV) tumor tracking algorithm that can be applied to low-quality megavolt (MV) images with multileaf collimator (MLC)-induced occlusion and non-rigid deformation.Methods:This study processed the registration of MV images using the window template matching method and end-to-end unsupervised network Voxelmorph and verified the accuracy of the tumor tracking algorithm using dynamic chest models. Phantom QA plans were executed after the treatment offset was manually set on the accelerator, and 682 electronic portal imaging device (EPID) images obtained during the treatment were collected as fixed images. Moreover, the digitally reconstructed radiography (DRR) images corresponding to the portal angles in the planning system were collected as floating images for the study of target volume tracking. In addition, 533 pairs of EPID and DRR images of 21 lung tumor patients treated with radiotherapy were collected to conduct the study of tumor tracking and provide quantitative result of changes in tumor locations during the treatment. Image similarity was used for third-party validation of the algorithm.Results:The algorithm could process images with different degrees (10%-80%) of data missing and performed well in non-rigid registration of images with data missing. As shown by the phantom verification, 86.8% and 80% of the tracking errors were less than 3 mm and less than 2 mm, respectively, and the normalized mutual information (NMI) varied from 1.18 ± 0.02 to 1.20 ± 0.02 after registration ( t = -6.78, P = 0.001). The tumor motion of the clinical cases was dominated by translation, with an average displacement of 3.78 mm and a maximum displacement of 7.46 mm. The registration result of the cases showed the presence of non-rigid deformations, and the corresponding NMI varied from 1.21 ± 0.03 before registration to 1.22 ± 0.03 after registration ( t = -2.91, P = 0.001). Conclusions:The tumor tracking algorithm proposed in this study has reliable tracking accuracy and high robustness and can be used for non-invasive and real-time tumor tracking requiring no additional equipment and radiation dose.