Postdoctoral Resercher (m/f/d)

  • Uniklinikum Würzburg - Institut für Diagnostische und Interventionelle Radiologie
  • 01.09.2026
  • Vollzeit
  • befristet mit Möglichkeit auf Verlängerung

Application deadline: 15/07/2026

The University Hospital Würzburg offers you the opportunity to actively contribute to the DFG-funded project "Artificial intelligence assisted diagnosis of giant cell arteritis".

Giant cell arteritis (GCA) is a systemic vasculitis that can lead to severe complications including vision loss and stroke if left untreated. This project aims to develop a machine learning-driven automatic diagnostic tool to robustly detect and evaluate GCA in magnetic resonance images, thereby enhancing diagnostic accuracy and preventing GCA-related complications.

The University Hospital Würzburg, Institute of Diagnostic and Interventional Radiology (Prof. Dr. Tobias Wech), is seeking to fill the position of a Postdoctoral Researcher (m/f/d, E13, 100%) for this exciting project at the earliest possible date.

Wir bieten

  • The opportunity to work in an innovative, multidisciplinary DFG-funded research project with high clinical impact
  • The chance to develop cutting-edge AI methods for a clinically relevant application
  • Access to unique multi-center GCA MRI datasets and state-of-the-art computational resources
  • Presentation of your research at prestigious international conferences
  • A multidisciplinary team environment with experts in radiology, rheumatology, and AI
  • A stimulating academic environment with opportunities for further qualification
  • Attractive remuneration according to TV-L E13 (100%) including annual bonus

Ihr Aufgabengebiet

  • Development and implementation of machine learning algorithms for automated detection and segmentation of GCA in MRI scans
  • Pre-processing of multi-center GCA MRI datasets (2D T1-weighted and 3D CS-SPACE sequences) using super-resolution models and brain stripping
  • Training and evaluation of neural networks for semantic segmentation to identify inflamed vessels in extra-cranial arteries
  • Development of quantitative imaging biomarkers (e.g., vessel wall thickness, volume of inflamed segments) for disease activity assessment
  • Validation of methods using multi-center datasets from collaborating GCA centers (Freiburg, Ludwigshafen, Aarau)
  • Collaboration with clinical partners to ensure clinical relevance and applicability of developed tools
  • Publication of results
  • Presentation of research findings at international scientific conferences (e.g., ISMRM, RSNA, ECR)
  • Supervision of PhD students and technical staff

Project Background

Giant cell arteritis (GCA) is a systemic vasculitis primarily characterized by inflammation of medium and large vessels, with a predilection for superficial cranial arteries (temporal, ophthalmic) and large intrathoracic vessels. If left untreated, GCA can lead to severe complications including vision loss, stroke, aortic aneurysms, or dissection.

While MRI has emerged as a pivotal technique for comprehensive GCA imaging, interpretation of advanced imaging protocols remains challenging. This project addresses these challenges by developing AI-driven automatic diagnosis to enhance diagnostic accuracy, efficiency, and standardization.

Building on a decade of GCA research and a unique data archive, we aim to create a machine learning-driven diagnostic tool that can be distributed free-of-charge to non-GCA centers, ensuring wide accessibility and improving patient outcomes worldwide.

Ihr Profil

  • Completed PhD in Computer Science, Medical Engineering, Physics, Biomedical Engineering, or a related field
  • Strong background in machine learning and deep learning, particularly for image analysis
  • Extensive experience with Python and relevant ML frameworks (e.g. PyTorch)
  • Experience with MRI data processing and medical image analysis
  • Knowledge of semantic segmentation and computer vision techniques
  • Proven track record of scientific publications in peer-reviewed journals
  • Experience with multi-center dataset handling and data harmonization is a plus
  • Excellent written and spoken English
  • Strong problem-solving skills and independent working style
  • Ability to work in an interdisciplinary team environment

Darauf können Sie sich freuen

  • Anspruchsvolles, vielfältiges und entwicklungsfähiges Aufgabengebiet
  • Attraktive Bezahlung nach TV-L inkl. Jahressonderzahlung
  • Aus- und Weiterbildung in der eigenen Akademie
  • Betriebliche Altersvorsorge
  • Betriebskindertagesstätte mit verlängerten Öffnungszeiten
  • Betriebssportangebote
  • Flexible Arbeitszeiten dank Gleitzeitregelung
  • Jobrad
  • Mitarbeiter Angebote

Werden Sie Teil des Teams: Jetzt bewerben!

Prof. Dr. Tobias Wech
Professor für Experimentelle Radiologie
Tel: +49931 201 46356


Die Vergütung erfolgt nach den einschlägigen Tarifverträgen. Schwerbehinderte Bewerber/-innen werden bei ansonsten im Wesentlichen gleicher Eignung bevorzugt eingestellt.