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Foundation Models for Magnetic Resonance Spectroscopy

ABG-137359 Thesis topic
2026-03-30 Public/private mixed funding
"université de lille"
- Les Hauts de France - France
Foundation Models for Magnetic Resonance Spectroscopy
  • Computer science
  • Health, human and veterinary medicine
Deep learning ; generative models ; MRI

Topic description

This PhD position is part of the IMMENSE interdisciplinary project, which aims to develop new magnetic resonance methods combining spectroscopy, imaging and artificial intelligence to improve diagnostics in medicine and characterization tools in chemistry and materials science.

Magnetic resonance spectroscopy (NMR/MRS) provides unique information about molecular composition in fields ranging from brain metabolism to structural biology and materials science. However, spectral resolution strongly depends on the magnetic field strength. High-field instruments (e.g., 7 T MRI or ultra-high-field NMR) provide much higher spectral resolution than widely available lower-field systems.

This PhD project aims to explore a new paradigm:

Can AI reconstruct high-field spectral information from low-field measurements?

The goal is to develop foundation models for spectroscopy, capable of learning general representations of NMR signals and enhancing spectral resolution across different instruments and applications.

Research Objectives

The PhD will develop AI models for spectral representation learning and super-resolution applied to magnetic resonance spectroscopy.

Main objectives include:

Foundation models for spectroscopy: Develop deep learning models capable of learning general representations of NMR spectra across different magnetic fields and experimental conditions.

Spectral super-resolution: Train models to reconstruct high-resolution spectra from low-field acquisitions (e.g., 3 T → 7 T brain MR spectroscopy).

Cross-domain generalization: Investigate whether learned representations generalize across: brain metabolite spectroscopy, protein NMR, small-molecule spectroscopy, solid-state NMR for materials.

Spectroscopy datasets and benchmarks: Contribute to building standardized datasets of paired low-field and high-field spectra for training and evaluation.

Starting date

2026-10-01

Funding category

Public/private mixed funding

Funding further details

Presentation of host institution and host laboratory

"université de lille"

Informations on University of Lille : https://www.univ-lille.fr/

Candidate's profile

We are looking for a highly motivated candidate with a background in:

Required

Artificial Intelligence / Machine Learning

Computer Science or Signal Processing

Python and deep learning frameworks (PyTorch preferred)

Preferred

generative models or representation learning

medical imaging or spectroscopy

 

Education

Master’s degree or engineering degree in AI, computer science, applied mathematics, signal processing, physics or biomedical engineering.

2026-05-10
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