AI-Driven Robust Synthetic CT for Adaptive Proton Therapy

Department of Radiation Oncology, University Medical Center Groningen, Groningen, The Netherlands

Project description

Adaptive radiotherapy relies on accurate daily volumetric imaging to ensure precise dose delivery. While cone-beam CT (CBCT) and MRI are routinely used to monitor anatomical changes, they do not directly support reliable dose calculation. Deep learning–based synthetic CT (sCT) generation offers a promising alternative but is highly sensitive to variations in image quality introduced by hardware or software upgrades.

This PhD project focuses on the development of robust, AI-driven sCT models for adaptive proton therapy. The core of the work will involve deep learning method development, including transfer learning, fine-tuning strategies, and uncertainty-aware modeling to enable rapid revalidation of sCT models following imaging system changes. In parallel, the project will address medical physics aspects, evaluating how variations in sCT quality influence dose calculation accuracy, proton range robustness, and adaptive treatment workflows.

The project is embedded in a clinically relevant environment and offers interdisciplinary training at the interface of artificial intelligence, medical imaging, and radiation physics.

For more information concerning the research project please contact: 
Stefan Both

Candidate profile

Doctoral Candidate at UMCG

  • Background in medical physics, biomedical engineering, or a related field
  • Strong interest in deep learning and medical imaging
  • Motivation to work in a clinically driven research environment
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University Medical Center Groningen (UMCG)

PROJECT BENEFICIARY

The University Medical Center Groningen (UMCG) is a leading academic hospital in the Netherlands, integrating patient care with high quality research and education in affiliation with the University of Groningen.