Transformer-based Parameter Fitting of Models derived from Bloch-McConnell Equations for CEST MRI Analysis
About
Chemical exchange saturation transfer (CEST) MRI is a non-invasive imaging modality for detecting metabolites. It offers higher resolution and sensitivity compared to conventional magnetic resonance spectroscopy (MRS). However, quantification of CEST data is challenging because the measured signal results from a complex interplay of many physiological variables. Here, we introduce a transformer-based neural network to fit parameters such as metabolite concentrations, exchange and relaxation rates of a physical model derived from Bloch-McConnell equations to in-vitro CEST spectra. We show that our self-supervised trained neural network clearly outperforms the solution of classical gradient-based solver.
Christof Duhme, Chris Lippe, Verena Hoerr, Xiaoyi Jiang• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Parameter Estimation | CEST Phantom Lorentzian model (test) | Mean Runtime (ms)9.04 | 5 | |
| Parameter Estimation | CEST Phantom analytical Z model (test) | Mean Runtime (ms)8.64 | 5 | |
| Parameter Estimation | CEST Phantom MTRrex model (test) | Mean Runtime (ms)8.99 | 5 | |
| analytical Z model parameter estimation | CEST MRI (test) | Glucose R20.9725 | 4 | |
| MTRrex model parameter estimation | CEST MRI (test) | Glucose R2 Estimate0.9972 | 4 | |
| Lorentzian model parameter estimation | CEST MRI (test) | Glucose R20.9589 | 4 |
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