International audienceFor decades, dose-volume information for segmented anatomy has provided the essential data for correlating radiotherapy dosimetry with treatment-induced complications. Dose-volume information has formed the basis for modelling those associations via normal tissue complication (NTCP) models and for driving treatment planning. Limitations to this approach have been identified. Many studies have emerged demonstrating that the incorporation of information describing the spatial nature of the dose distribution, and potentially its correlation with anatomy, can provide more robust associations with toxicity and seed more general NTCP models. Such approaches are culminating in the application of computationally intensive proc...
Mathematical models of normal tissue complication probability (NTCP) able to robustly predict radiat...
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...
International audienceFor decades, dose-volume information for segmented anatomy has provided the es...
The relationship between radiation dose and toxicity in pancreatic chemoradiotherapy is not well un...
AbstractBackground and purposeSevere acute mucositis commonly results from head and neck (chemo)radi...
Severe acute dysphagia commonly results from head and neck radiotherapy (RT). A model enabling predi...
A thorough understanding of the dose‐response of individual organs‐at‐risk is essential for being ab...
Although modern radiation therapy techniques have the ability to conform the dose distribution of io...
The normal tissue complication probability (NTCP) models that are currently being proposed for estim...
The normal tissue complication probability (NTCP) models that are currently being proposed for estim...
A model for estimating radiotherapy treatment outcome through the probability of damage to normal ti...
SummaryPurposeTo review medical literature data on tolerance doses for a number of radiosensitive or...
In radiation oncology, the need for a modern Normal Tissue Complication Probability (NTCP) philosoph...
Radiation therapy dosimetry software now frequently incorporates biological predictions of the proba...
Mathematical models of normal tissue complication probability (NTCP) able to robustly predict radiat...
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...
International audienceFor decades, dose-volume information for segmented anatomy has provided the es...
The relationship between radiation dose and toxicity in pancreatic chemoradiotherapy is not well un...
AbstractBackground and purposeSevere acute mucositis commonly results from head and neck (chemo)radi...
Severe acute dysphagia commonly results from head and neck radiotherapy (RT). A model enabling predi...
A thorough understanding of the dose‐response of individual organs‐at‐risk is essential for being ab...
Although modern radiation therapy techniques have the ability to conform the dose distribution of io...
The normal tissue complication probability (NTCP) models that are currently being proposed for estim...
The normal tissue complication probability (NTCP) models that are currently being proposed for estim...
A model for estimating radiotherapy treatment outcome through the probability of damage to normal ti...
SummaryPurposeTo review medical literature data on tolerance doses for a number of radiosensitive or...
In radiation oncology, the need for a modern Normal Tissue Complication Probability (NTCP) philosoph...
Radiation therapy dosimetry software now frequently incorporates biological predictions of the proba...
Mathematical models of normal tissue complication probability (NTCP) able to robustly predict radiat...
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...