中华放射肿瘤学杂志
Saturday, Apr. 12, 2025   Home | Journal | Editorial | Instruction | Subscription | Advertisement | Academic | Index-in | Contact Us | Chinese
Chinese Journal of Radiation Oncology  2023, Vol. 32 Issue (4): 339-346    DOI: 10.3760/cma.j.cn113030-20220406-00124
Physics·Technique·Biology Current Issue| Next Issue| Archive| Adv Search [an error occurred while processing this directive] | [an error occurred while processing this directive]
A markerless beam's eye view tumor tracking algorithm based on structure conversion and demons registration in medical image
Guan Qi, Qiu Minmin, Huang Taiming, Zhong Jiajian, Luo Ning, Deng Yongjin
Department of Radiation Oncology, First Affiliated Hospital of Sun Yat-sen University, Guangzhou 510080, China
Download: PDF (0 KB)   HTML (1 KB) 
Export: BibTeX | EndNote (RIS)      Supporting Info
Abstract  Objective To propose a markerless beam's eye view (BEV) tumor tracking algorithm, which can be applied to megavolt (MV) images with poor image quality, multi-leaf collimator (MLC) occlusion and non-rigid deformation. Methods Window template matching, image structure transformation and demons non-rigid registration method were used to solve the registration problem in MV images. The quality assurance (QA) plan was generated in the phantom and executed after manually setting the treatment offset on the accelerator, and 682 electronic portal imaging device (EPID) images in the treatment process were collected as fixed images. Meanwhile, the digitally reconstructured radiograph (DRR) images corresponding to the field angle in the planning system were collected as floating images to verify the accuracy of the algorithm. In addition, a total of 533 images were collected from 21 cases of lung tumor treatment data for tumor tracking study, providing quantitative results of tumor location changes during treatment. Image similarity was used for third-party verification of tracking results. Results The algorithm could cope with different degrees (10%-80%) of image missing. In the phantom verification, 86.8% of the tracking errors were less than 3 mm, and 80% were less than 2 mm. Normalized mutual information (NMI) varied from 1.182±0.026 to 1.202±0.027 (P<0.005) before and after registration and the change of Hausdorff distance (HD) was from 57.767±6.474 to 56.664±6.733 (P<0.005). The case results were predominantly translational (-6.0 mm to 6.2 mm), but non-rigid deformation still existed. NMI varied from 1.216±0.031 to 1.225±0.031 (P<0.005) before and after registration and the change of HD was from 46.384±7.698 to 45.691±8.089 (P<0.005). Conclusions The proposed algorithm can cope with different degrees of image missing and performs well in non-rigid registration with data missing images which can be applied in different radiotherapy technologies. It provides a reference idea for processing MV images with multi-modality, partial data and poor image quality.
Service
E-mail this article
Add to my bookshelf
Add to citation manager
E-mail Alert
RSS
Articles by authors
Guan Qi
Qiu Minmin
Huang Taiming
Zhong Jiajian
Luo Ning
Deng Yongjin
Key wordsMarkerless neoplasms tracking      Electronic portal imaging device      Arimoto      Demons      Multileaf collimator occlusion     
Received: 06 April 2022     
Corresponding Authors: Deng Yongjin, Email:dengyj27@mail.sysu.edu.cn   
Cite this article:   
Guan Qi,Qiu Minmin,Huang Taiming et al. A markerless beam's eye view tumor tracking algorithm based on structure conversion and demons registration in medical image[J]. Chinese Journal of Radiation Oncology, 2023, 32(4): 339-346.
Guan Qi,Qiu Minmin,Huang Taiming et al. A markerless beam's eye view tumor tracking algorithm based on structure conversion and demons registration in medical image[J]. Chinese Journal of Radiation Oncology, 2023, 32(4): 339-346.
URL:  
http://journal12.magtechjournal.com/Jweb_fszlx/EN/10.3760/cma.j.cn113030-20220406-00124     OR     http://journal12.magtechjournal.com/Jweb_fszlx/EN/Y2023/V32/I4/339
  Copyright © 2010 Editorial By Chinese Journal of Radiation Oncology
Support by Beijing Magtech Co.ltd  support@magtech.com.cn