The advent of Machine Learning (ML) is proving extremely beneficial in many healthcare applications. In pediatric oncology, retrospective studies that investigate the relationship between treatment and late adverse effects still rely on simple heuristics. To capture the effects of radiation treatment, treatment plans are typically simulated on virtual surrogates of patient anatomy called phantoms. Currently, phantoms are built to represent categories of patients based on reasonable yet simple criteria. This often results in phantoms that are too generic to accurately represent individual anatomies. We present a novel approach that combines imaging data and ML to build individualized phantoms automatically. We design a pipeline that, given f...
Purpose: To estimate the absorbed dose in organs and tissues at risk for radiogenic cancer for child...
Gastrointestinal (GI) cancers, consisting of a wide spectrum of pathologies, have become a prominent...
International audienceAn increasing number of parameters can be considered when making decisions in ...
The advent of Machine Learning (ML) is proving extremely beneficial in many healthcare applications....
Purpose: Current phantoms used for the dose reconstruction of long-term childhood cancer survivors l...
To study radiotherapy-related adverse effects, detailed dose information (3D distribution) is needed...
htmlabstract<p>Purpose: The aim of this study is to establish the first step toward a novel and high...
The motivation of the research presented in this thesis was to provide solutions for accurate organ ...
Radiation dose optimization is particularly important in pediatric radiology, as children are more s...
OBJECTIVE: Dose prediction using deep-learning networks prior to radiotherapy might lead to more eff...
In radiation therapy, it is important to control the radiation dose absorbed by Organs at Risk (OARs...
Purpose: To estimate the absorbed dose in organs and tissues at risk for radiogenic cancer for child...
Gastrointestinal (GI) cancers, consisting of a wide spectrum of pathologies, have become a prominent...
International audienceAn increasing number of parameters can be considered when making decisions in ...
The advent of Machine Learning (ML) is proving extremely beneficial in many healthcare applications....
Purpose: Current phantoms used for the dose reconstruction of long-term childhood cancer survivors l...
To study radiotherapy-related adverse effects, detailed dose information (3D distribution) is needed...
htmlabstract<p>Purpose: The aim of this study is to establish the first step toward a novel and high...
The motivation of the research presented in this thesis was to provide solutions for accurate organ ...
Radiation dose optimization is particularly important in pediatric radiology, as children are more s...
OBJECTIVE: Dose prediction using deep-learning networks prior to radiotherapy might lead to more eff...
In radiation therapy, it is important to control the radiation dose absorbed by Organs at Risk (OARs...
Purpose: To estimate the absorbed dose in organs and tissues at risk for radiogenic cancer for child...
Gastrointestinal (GI) cancers, consisting of a wide spectrum of pathologies, have become a prominent...
International audienceAn increasing number of parameters can be considered when making decisions in ...