Virtual-simulation boosted neural network dose calculation engine for intensity-modulated radiation therapy

The Monte Carlo (MC) dose calculation method is widely recognized as the gold standard for precision in dose calculation. However, MC calculations are computationally intensive and time-consuming. This study aims to develop a neural network-based dose calculation engine using a virtual simulation da...

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Published inAustralasian physical & engineering sciences in medicine Vol. 48; no. 2; pp. 557 - 566
Main Authors Li, Zirong, Liu, Yaoying, Shang, Xuying, Sheng, Huashan, Xie, Chuanbin, Zhao, Wei, Zhang, Gaolong, Zhou, Qichao, Xu, Shouping
Format Journal Article
LanguageEnglish
Published Cham Springer International Publishing 01.06.2025
Springer Nature B.V
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ISSN2662-4729
0158-9938
2662-4737
2662-4737
1879-5447
DOI10.1007/s13246-025-01523-3

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Summary:The Monte Carlo (MC) dose calculation method is widely recognized as the gold standard for precision in dose calculation. However, MC calculations are computationally intensive and time-consuming. This study aims to develop a neural network-based dose calculation engine using a virtual simulation database, producing dose distributions with accuracy comparable to MC dose calculations. We established an unrestricted virtual simulation database employing specific rules and automated optimization techniques. Individual dose distributions for each beam were stored. A neural network was then constructed and trained using a 3D Dense-U-Net architecture. The model’s accuracy was validated in intensity-modulated radiation therapy (IMRT) for nasopharyngeal carcinoma, cervical carcinoma, and lung cancer. A total of 31,967 single-beam doses were collected from 2,382 virtual plans. For clinical beam doses, the gamma passing rates under the 1 mm/1% and 2 mm/2% criteria improved significantly from 13.4 ± 4.8% and 37.5 ± 9.4% to 77.5 ± 7.7% and 95.6 ± 2.5%, respectively, using the model. The mean computation time was 0.017 ± 0.002 s. We successfully developed an automated training workflow for a neural network-based dose calculation model in fixed-beam IMRT. This workflow enables the generation of a substantial training dataset from a relatively small clinical dataset, resulting in a model that excels in accuracy and speed.
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ISSN:2662-4729
0158-9938
2662-4737
2662-4737
1879-5447
DOI:10.1007/s13246-025-01523-3