Dynamic MLC Tracking Using 4D Lung Tumor Motion Modelling and EPID Feedback

Journal Title: Journal of Biomedical Physics and Engineering - Year 2019, Vol 9, Issue 4

Abstract

Background: Respiratory motion causes thoracic movement and reduces targeting accuracy in radiotherapy. Objective: This study proposes an approach to generate a model to track lung tumor motion by controlling dynamic multi-leaf collimators. Material and Methods: All slices which contained tumor were contoured in the 4D-CT images for 10 patients. For modelling of respiratory motion, the endexhale phase of these images has been considered as the reference and they were analyzed using neuro-fuzzy method to predict the magnitude of displacement of the lung tumor. Then, the predicted data were used to determine the leaf motion in MLC. Finally, the trained algorithm was figured out using Shaper software to show how MLCs could track the moving tumor and then imported on the Varian Linac equipped with EPID. Results: The root mean square error (RMSE) was used as a statistical criterion in order to investigate the accuracy of neuro-fuzzy performance in lung tumor prediction. The results showed that RMSE did not have a considerable variation. Also, there was a good agreement between the images obtained by EPID and Shaper for a respiratory cycle. Conclusion: The approach used in this study can track the moving tumor with MLC based on the 4D modelling, so it can improve treatment accuracy, dose conformity and sparing of healthy tissues because of low error in margins that can be ignored. Therefore, this method can work more accurately as compared with the gating and invasive approaches using markers. Citation: Rostampour N, Jabbari K, Nabavi Sh, Mohammadi M, Esmaeili M. Dynamic MLC Tracking Using 4D Lung Tumor Motion Model- ling and EPID Feedback. J Biomed Phys Eng. 2019;9(4):417-424. https://doi.org/10.31661/jbpe.v0i0.769.

Authors and Affiliations

K. Jabbari, N. Rostampour, Sh. Nabavi, M. Mohammadi

Keywords

Related Articles

A Framework for Optimal Attribute Evaluation and Selection in Hesitant Fuzzy Environment Based on Enhanced Ordered Weighted Entropy Approach for Medical Dataset

Background: In this paper, a generic hesitant fuzzy set (HFS) model for clustering various ECG beats according to weights of attributes is proposed. A comprehensive review of the electrocardiogram signal classification a...

The Optimization of Magnetic Resonance Imaging Pulse Sequences in Order to Better Detection of Multiple Sclerosis Plaques

Background and Objective: Magnetic resonance imaging (MRI) is the most sensitive technique to detect multiple sclerosis (MS) plaques in central nervous system. In some cases, patients who were suspicious of having MS wh...

Radioprotective Effects of Sulfur-containing Mineral Water of Ramsar Hot Spring with High Natural Background Radiation on Mouse Bone Marrow Cells

Background: We intend to study the inhibitory effect of sulfur compound in Ramsar hot spring mineral on tumor-genesis ability of high natural background radiation. Objective: The radioprotective effect of sulfur compoun...

Electromagnetic Fields of Mobile Phone Jammer Exposure on Blood Factors in Rats

Background: The increasing demand for using mobile phones has led to increasing mobile phone jammers as well. On the other hand, reports show that exposure to electromagnetic field causes an increase in the incidence of...

Determination of Uterus Absorbed Dose by Patients following Myocardial Perfusion Scan using TLD and Conjugate View Methods

Introduction: The determination of patient’s absorbed dose is the first step of radiation protection which depends on the quantification of organ activity in nuclear medicine. The aim of the present study was to determin...

Download PDF file
  • EP ID EP647174
  • DOI -
  • Views 97
  • Downloads 0

How To Cite

K. Jabbari, N. Rostampour, Sh. Nabavi, M. Mohammadi (2019). Dynamic MLC Tracking Using 4D Lung Tumor Motion Modelling and EPID Feedback. Journal of Biomedical Physics and Engineering, 9(4), 417-424. https://europub.co.uk/articles/-A-647174