The investment in proton radiation therapy raises the question of how cancer patients should be prioritised for this treatment method. A large advantage to proton therapy is that one can minimise the radiation received by organs at risk. Machine learning might be used for predicting the impact of organs for different radiotherapy methods. Thus, machine learning could be a helpful tool in the prioritisation process. In this thesis, spatial features were extracted from medical images of head and neck cancer patients. These features were used for analysis of photon dose distributions of target volumes and organs at risk. Additionally, correlations between features were investigated. It was confirmed that the distance between radiati...
Machine learning approaches to problem-solving are growing rapidly within healthcare, and radiation ...
Radiotherapy is one of the main ways head and neck cancers are treated; radiation is used to kill c...
Artificial intelligence, and in particular deep learning using convolutional neural networks, has be...
The investment in proton radiation therapy raises the question of how cancer patients should be prio...
International audienceAn increasing number of parameters can be considered when making decisions in ...
International audienceAn increasing number of parameters can be considered when making decisions in ...
International audienceAn increasing number of parameters can be considered when making decisions in ...
The fields of radiotherapy and clinical oncology have been rapidly changed by the advances of techno...
Background To combat one of the leading causes of death worldwide, lung cancer treatment techniques ...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
Purpose: To create and investigate a novel, clinical decision-support system using machine learning ...
OBJECTIVE: Dose prediction using deep-learning networks prior to radiotherapy might lead to more eff...
Background: During RT cycles, the tumor response pattern could affect tumor coverage and may lead to...
Machine learning approaches to problem-solving are growing rapidly within healthcare, and radiation ...
Radiotherapy is one of the main ways head and neck cancers are treated; radiation is used to kill c...
Artificial intelligence, and in particular deep learning using convolutional neural networks, has be...
The investment in proton radiation therapy raises the question of how cancer patients should be prio...
International audienceAn increasing number of parameters can be considered when making decisions in ...
International audienceAn increasing number of parameters can be considered when making decisions in ...
International audienceAn increasing number of parameters can be considered when making decisions in ...
The fields of radiotherapy and clinical oncology have been rapidly changed by the advances of techno...
Background To combat one of the leading causes of death worldwide, lung cancer treatment techniques ...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
Machine learning technology has a growing impact on radiation oncology with an increasing presence i...
Purpose: To create and investigate a novel, clinical decision-support system using machine learning ...
OBJECTIVE: Dose prediction using deep-learning networks prior to radiotherapy might lead to more eff...
Background: During RT cycles, the tumor response pattern could affect tumor coverage and may lead to...
Machine learning approaches to problem-solving are growing rapidly within healthcare, and radiation ...
Radiotherapy is one of the main ways head and neck cancers are treated; radiation is used to kill c...
Artificial intelligence, and in particular deep learning using convolutional neural networks, has be...