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AS-NeSt: A Novel 3D Deep Learning Model for Radiation Therapy Dose Distribution Prediction in Esophageal Cancer Treatment With Multiple Prescriptions.

Authors :
Duan, Yanhua
Wang, Jiyong
Wu, Puyu
Shao, Yan
Chen, Hua
Wang, Hao
Cao, Hongbin
Gu, Hengle
Feng, Aihui
Huang, Ying
Shen, Zhenjiong
Lin, Yang
Kong, Qing
Liu, Jun
Li, Hongxuan
Fu, Xiaolong
Yang, Zhangru
Cai, Xuwei
Xu, Zhiyong
Source :
International Journal of Radiation Oncology, Biology, Physics. Jul2024, Vol. 119 Issue 3, p978-989. 12p.
Publication Year :
2024

Abstract

Implementing artificial intelligence technologies allows for the accurate prediction of radiation therapy dose distributions, enhancing treatment planning efficiency. However, esophageal cancers present unique challenges because of tumor complexity and diverse prescription types. Additionally, limited data availability hampers the effectiveness of existing artificial intelligence models. This study developed a deep learning model, trained on a diverse data set of esophageal cancer prescriptions, to improve dose prediction accuracy. We retrospectively collected data from 530 patients with esophageal cancer, including single-target and simultaneous integrated boost prescriptions, for model building. The proposed Asymmetric ResNeSt (AS-NeSt) model features novel 3-dimensional (3D) ResNeSt blocks and an asymmetrical architecture. We constructed a loss function targeting global and local doses and validated the model's performance against existing alternatives. Model-assisted experiments were used to validate its clinical benefits. The AS-NeSt model maintained an absolute prediction error below 5% for each dosimetric metric. The average Dice similarity coefficient for isodose volumes was 0.93. The model achieved an average relative prediction error of 2.02%, statistically lower than Hierarchically Densely Connected U-net (4.17%), DoseNet (2.35%), and Densely Connected Network (3.65%). It also demonstrated significantly fewer parameters and shorter prediction times. Clinically, the AS-NeSt model raised physicians' ability to accurately preassess appropriate treatment methods before planning from 95.24% to 100%, reduced planning time by over 61% for junior dosimetrists and 52% for senior dosimetrists, and decreased both inter- and intra-dosimetrist discrepancies by more than 50%. The AS-NeSt model, developed with innovative 3D ResNeSt blocks and an asymmetrical encoder-decoder structure, has been validated using clinical esophageal cancer patient data. It accurately predicts 3D dose distributions for various prescriptions, including simultaneous integrated boost, showing potential to improve the management of esophageal cancer treatment in a clinical setting. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03603016
Volume :
119
Issue :
3
Database :
Academic Search Index
Journal :
International Journal of Radiation Oncology, Biology, Physics
Publication Type :
Academic Journal
Accession number :
177750153
Full Text :
https://doi.org/10.1016/j.ijrobp.2023.12.001