Typically, the current dose prediction models are limited to small amounts of data and require re-training for a specific site, often leading to suboptimal performance. We propose a site-agnostic, 3D dose distribution prediction model using deep learning that can leverage data from any treatment site, thus increasing the total data available to train the model. Applying our proposed model to a new target treatment site requires only a brief fine-tuning of the model to the new data and involves no modifications to the model input channels or its parameters. Thus, it can be efficiently adapted to a different treatment site, even with a small training dataset
PurposeA three-dimensional deep generative adversarial network (GAN) was used to predict dose distri...
PURPOSE:Although dose prediction for intensity modulated radiation therapy (IMRT) has been accomplis...
Purpose/Objective(s): Recent research efforts utilizing knowledge-based treatment planning for the p...
Machine learning has shown great potential as a step in automating radiotherapy treatment planning. ...
Background: Volumetric modulated arc therapy (VMAT) planning is a time-consuming process of radiatio...
Background: Patient-specific dose prediction improves the efficiency and quality of radiation treatm...
Background To combat one of the leading causes of death worldwide, lung cancer treatment techniques ...
PURPOSE: The use of neural networks to directly predict three-dimensional dose distributions for aut...
Radiotherapy treatment planning is a complex and time consuming process prone to differences as resu...
External beam radiation therapy requires a sophisticated and laborious planning procedure. To improv...
In this work, we propose a Machine Learning model that generates an adjustable 3D dose distribution ...
Background and purpose: Radiation therapy treatment planning is a manual, time-consuming task that m...
External beam radiation therapy requires a sophisticated and laborious planning procedure. To improv...
Artificial intelligence, and in particular deep learning using convolutional neural networks, has be...
Artificial intelligence, and in particular deep learning using convolutional neural networks, has be...
PurposeA three-dimensional deep generative adversarial network (GAN) was used to predict dose distri...
PURPOSE:Although dose prediction for intensity modulated radiation therapy (IMRT) has been accomplis...
Purpose/Objective(s): Recent research efforts utilizing knowledge-based treatment planning for the p...
Machine learning has shown great potential as a step in automating radiotherapy treatment planning. ...
Background: Volumetric modulated arc therapy (VMAT) planning is a time-consuming process of radiatio...
Background: Patient-specific dose prediction improves the efficiency and quality of radiation treatm...
Background To combat one of the leading causes of death worldwide, lung cancer treatment techniques ...
PURPOSE: The use of neural networks to directly predict three-dimensional dose distributions for aut...
Radiotherapy treatment planning is a complex and time consuming process prone to differences as resu...
External beam radiation therapy requires a sophisticated and laborious planning procedure. To improv...
In this work, we propose a Machine Learning model that generates an adjustable 3D dose distribution ...
Background and purpose: Radiation therapy treatment planning is a manual, time-consuming task that m...
External beam radiation therapy requires a sophisticated and laborious planning procedure. To improv...
Artificial intelligence, and in particular deep learning using convolutional neural networks, has be...
Artificial intelligence, and in particular deep learning using convolutional neural networks, has be...
PurposeA three-dimensional deep generative adversarial network (GAN) was used to predict dose distri...
PURPOSE:Although dose prediction for intensity modulated radiation therapy (IMRT) has been accomplis...
Purpose/Objective(s): Recent research efforts utilizing knowledge-based treatment planning for the p...