Approche intégrée de la simulation Monte Carlo et de l'intelligence artificielle pour la prédiction de la réponse en radiothérapie interne vectorisée // An Integrated Monte Carlo and Artificial Intelligence Framework for Response Prediction in Targeted Ra
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ABG-139117
ADUM-75106 |
Sujet de Thèse | |
| 13/05/2026 |
Université Bourgogne Europe
DIJON Cedex - Bourgogne-Franche-Comté - France
Approche intégrée de la simulation Monte Carlo et de l'intelligence artificielle pour la prédiction de la réponse en radiothérapie interne vectorisée // An Integrated Monte Carlo and Artificial Intelligence Framework for Response Prediction in Targeted Ra
- Informatique
Simulations Monte-Carlo, Intelligence artificielle
Monte-Carlo simulations, Artificial Intelligence
Monte-Carlo simulations, Artificial Intelligence
Description du sujet
This PhD project aims to improve radionuclide therapy, which is currently limited by inaccurate dose measurement using SPECT imaging.
Firstly, the project proposes the use of Monte Carlo simulations to generate realistic SPECT images and enhance quantification methods. Secondly, the project aims to integrate diverse pre-treatment data (e.g. imaging, clinical and biological data) into a structured database, and to develop AI algorithms to build predictive models. The final goal is to identify reliable biomarkers that can predict treatment response more accurately, and to link patient characteristics to dose distribution and therapeutic outcomes.
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This PhD project aims to improve radionuclide therapy, which is currently limited by inaccurate dose measurement using SPECT imaging.
Firstly, the project proposes the use of Monte Carlo simulations to generate realistic SPECT images and enhance quantification methods. Secondly, the project aims to integrate diverse pre-treatment data (e.g. imaging, clinical and biological data) into a structured database, and to develop AI algorithms to build predictive models. The final goal is to identify reliable biomarkers that can predict treatment response more accurately, and to link patient characteristics to dose distribution and therapeutic outcomes.
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Début de la thèse : 01/10/2026
Firstly, the project proposes the use of Monte Carlo simulations to generate realistic SPECT images and enhance quantification methods. Secondly, the project aims to integrate diverse pre-treatment data (e.g. imaging, clinical and biological data) into a structured database, and to develop AI algorithms to build predictive models. The final goal is to identify reliable biomarkers that can predict treatment response more accurately, and to link patient characteristics to dose distribution and therapeutic outcomes.
------------------------------------------------------------------------------------------------------------------------------------------------------------------------
------------------------------------------------------------------------------------------------------------------------------------------------------------------------
This PhD project aims to improve radionuclide therapy, which is currently limited by inaccurate dose measurement using SPECT imaging.
Firstly, the project proposes the use of Monte Carlo simulations to generate realistic SPECT images and enhance quantification methods. Secondly, the project aims to integrate diverse pre-treatment data (e.g. imaging, clinical and biological data) into a structured database, and to develop AI algorithms to build predictive models. The final goal is to identify reliable biomarkers that can predict treatment response more accurately, and to link patient characteristics to dose distribution and therapeutic outcomes.
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Début de la thèse : 01/10/2026
Nature du financement
Précisions sur le financement
Financement d'un établissement public Français
Présentation établissement et labo d'accueil
Université Bourgogne Europe
Etablissement délivrant le doctorat
Université Bourgogne Europe
Ecole doctorale
37 SPIM - Sciences Physiques pour l'Ingénieur et Microtechniques
Profil du candidat
This work is intended to be transdisciplinary, involving clinicians, IT specialists, and medical physicists. Applicants must hold at least an upper second-class degree or equivalent qualification in a relevant subject, such as computer science, applied mathematics, biomedical engineering or medical physics. A Master's degree in a relevant discipline and additional research experience would be advantageous.
Candidates should be fluent in English or French.
Personal characteristics:
- Curiosity, independence, initiative and scientific rigour;
- Interpersonal skills and professional discretion (work in a hospital environment).
This work is intended to be transdisciplinary, involving clinicians, IT specialists, and medical physicists. Applicants must hold at least an upper second-class degree or equivalent qualification in a relevant subject, such as computer science, applied mathematics, biomedical engineering or medical physics. A Master's degree in a relevant discipline and additional research experience would be advantageous. Candidates should be fluent in English or French. Personal characteristics: - Curiosity, independence, initiative and scientific rigour; - Interpersonal skills and professional discretion (work in a hospital environment).
This work is intended to be transdisciplinary, involving clinicians, IT specialists, and medical physicists. Applicants must hold at least an upper second-class degree or equivalent qualification in a relevant subject, such as computer science, applied mathematics, biomedical engineering or medical physics. A Master's degree in a relevant discipline and additional research experience would be advantageous. Candidates should be fluent in English or French. Personal characteristics: - Curiosity, independence, initiative and scientific rigour; - Interpersonal skills and professional discretion (work in a hospital environment).
24/05/2026
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