1. Multi-center Dose Prediction Using Attention-aware Deep learning Algorithm Based on Transformers for Cervical Cancer Radiotherapy.
- Author
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Wu, Z., Jia, X., Lu, L., Xu, C., Pang, Y., Peng, S., Liu, M., and Wu, Y.
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PHARMACEUTICAL arithmetic , *MEDICAL prescriptions , *STRUCTURAL models , *PREDICTION models , *PILOT projects , *RADIATION dosimetry , *DESCRIPTIVE statistics , *ENDOMETRIAL tumors , *DEEP learning , *RESEARCH , *RESEARCH methodology , *ALGORITHMS ,CERVIX uteri tumors ,RESEARCH evaluation - Abstract
Accurate dose delivery is crucial for cervical cancer volumetric modulated arc therapy (VMAT). We aimed to develop a robust deep-learning (DL) algorithm for fast and accurate dose prediction of cervical cancer VMAT in multicenter datasets and then explore the feasibility of the DL algorithm to endometrial cancer VMAT with different prescriptions. We proposed the AtTranNet algorithm for three-dimensional dose prediction. A total of 367 cervical patients were enrolled in this study. Three hundred twenty-two cervical patients from 3 centers were randomly divided into 70%, 10%, and 20% as training, validation, and testing sets, respectively. Forty-five cervical patients from another center were selected for external testing. Moreover, 70 patients of endometrial cancer with different prescriptions were further selected to test the model. Prediction precision was evaluated by dosimetric difference, dose map, and dose-volume histogram metrics. The prediction results were all clinically acceptable. The mean absolute error within the body in internal testing was 0.66 ± 0.63%. The maximum |δD| for planning target volume was observed in D98, which is 1.24 ± 2.73 Gy. The maximum |δD| for organs at risk was observed in Dmean of bladder, which is 4.79 ± 3.14 Gy. The maximum |δV| were observed in V40 of pelvic bones, which is 4.77 ± 4.48%. AtTranNet showed the feasibility and reasonable accuracy in the dose prediction for cervical cancer in multiple centers. The model can also be generalized for endometrial cancer with different prescriptions without any transfer learning. • Proposed state-of-the-art model to predict the radiotherapy dose intelligently. • Automatic prediction results were stable across medical centers. • Computer-aided dose prediction can accelerate treatment planning. • The model also showed good generalizability for endometrial cancer. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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