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A generalization performance study on the boosting radiotherapy dose calculation engine based on super-resolution

Authors :
Yewei Wang
Yaoying Liu
Yanlin Bai
Qichao Zhou
Shouping Xu
Xueying Pang
Source :
Zeitschrift für Medizinische Physik, Vol 34, Iss 2, Pp 208-217 (2024)
Publication Year :
2024
Publisher :
Elsevier, 2024.

Abstract

Purpose: During the radiation treatment planning process, one of the time-consuming procedures is the final high-resolution dose calculation, which obstacles the wide application of the emerging online adaptive radiotherapy techniques (OLART). There is an urgent desire for highly accurate and efficient dose calculation methods. This study aims to develop a dose super resolution-based deep learning model for fast and accurate dose prediction in clinical practice. Method: A Multi-stage Dose Super-Resolution Network (MDSR Net) architecture with sparse masks module and multi-stage progressive dose distribution restoration method were developed to predict high-resolution dose distribution using low-resolution data. A total of 340 VMAT plans from different disease sites were used, among which 240 randomly selected nasopharyngeal, lung, and cervix cases were used for model training, and the remaining 60 cases from the same sites for model benchmark testing, and additional 40 cases from the unseen site (breast and rectum) was used for model generalizability evaluation. The clinical calculated dose with a grid size of 2 mm was used as baseline dose distribution. The input included the dose distribution with 4 mm grid size and CT images. The model performance was compared with HD U-Net and cubic interpolation methods using Dose-volume histograms (DVH) metrics and global gamma analysis with 1%/1 mm and 10% low dose threshold. The correlation between the prediction error and the dose, dose gradient, and CT values was also evaluated. Results: The prediction errors of MDSR were 0.06–0.84% of Dmean indices, and the gamma passing rate was 83.1–91.0% on the benchmark testing dataset, and 0.02–1.03% and 71.3–90.3% for the generalization dataset respectively. The model performance was significantly higher than the HD U-Net and interpolation methods (p

Details

Language :
English
ISSN :
09393889
Volume :
34
Issue :
2
Database :
Directory of Open Access Journals
Journal :
Zeitschrift für Medizinische Physik
Publication Type :
Academic Journal
Accession number :
edsdoj.211a6712d4f9f91fcba5fc5eb4268
Document Type :
article
Full Text :
https://doi.org/10.1016/j.zemedi.2022.10.006