Area: Medicine
Location: UK (Other)
Reference: MED2045
Closing Date: Wednesday 01 April 2026
Michael Chappell
Steffi Thust
Glioblastoma (GBM) is the most common and lethal adult brain tumour. Relapse is driven by infiltrative tumour cells that escape surgical resection and resist therapy. This PhD project focuses on the GBM infiltrative margin, developing advanced MRI analysis methods and imaging-driven predictive models.
Key elements include:
Use of anatomical and physiometabolic imaging methods:
Arterial spin labelling perfusion
Neurite orientation dispersion and density imaging (NODDI)
Chemical exchange saturation transfer
Integration of multiple modalities and parameters to identify at-risk sites for GBM relapse before clinical progression
Development of cancer biomarkers through statistical and AI-driven models to predict aggressive tissue molecular signatures
Linking imaging features to phenometabolic signatures from tissue samples collected during surgery
This project is part of the imaging theme for the new Nottingham Brain Tumour Research Centre of Excellence, combining advanced image analysis, mathematical modelling, cancer metabolomics, and novel physiological MRI technique development in a translational research environment bridging analytical bioscience and neuro-oncology.
The PhD is based in the Brain Tumour Research Centre of Excellence at the University of Nottingham (5-year programme grant)
Multidisciplinary partnership across the Schools of Medicine, Life Sciences, and Pharmacy
Collaboration with:
Erasmus University Rotterdam, Netherlands
Mayo Clinic Arizona, USA
University of Freiburg, Germany
Project location: Precision Imaging (School of Medicine)
3T Philips Elition intraoperative MRI suite at Queens Medical Centre
Sir Peter Mansfield Imaging Centre (recently upgraded 7T MRI)
UK National Ultra High Field (11.7T) MRI facility opening during the project
Strong undergraduate degree in relevant fields: Biomedical Sciences, Biomedical/Information Engineering, Computer Science, Analytical Bioscience, Physics, or related disciplines
Prior experience in medical imaging, MRI, medical physics, or computational data analysis (Python/R/MATLAB, machine learning, bioinformatics) is highly desirable
Applications: Send CV to the provided contact. Consideration is on a rolling basis until the position is filled.
Deadline: 1 April 2026 for a September 2026 start
4-year PhD studentship
Tuition fees covered for home students
Annual stipend at current UKRI rates
Keywords: Brain cancer, glioblastoma, magnetic resonance imaging, advanced MRI, radiomics, machine learning
In your application, please refer to Professorpositions.com