T1-PILOT: Optimized Trajectories for T1 Mapping Acceleration
Journal:
arXiv
Published Date:
Feb 27, 2025
Abstract
Cardiac T1 mapping provides critical quantitative insights into myocardial
tissue composition, enabling the assessment of pathologies such as fibrosis,
inflammation, and edema. However, the inherently dynamic nature of the heart
imposes strict limits on acquisition times, making high-resolution T1 mapping a
persistent challenge. Compressed sensing (CS) approaches have reduced scan
durations by undersampling k-space and reconstructing images from partial data,
and recent studies show that jointly optimizing the undersampling patterns with
the reconstruction network can substantially improve performance. Still, most
current T1 mapping pipelines rely on static, hand-crafted masks that do not
exploit the full acceleration and accuracy potential. In this work, we
introduce T1-PILOT: an end-to-end method that explicitly incorporates the T1
signal relaxation model into the sampling-reconstruction framework to guide the
learning of non-Cartesian trajectories, crossframe alignment, and T1 decay
estimation. Through extensive experiments on the CMRxRecon dataset, T1-PILOT
significantly outperforms several baseline strategies (including learned
single-mask and fixed radial or golden-angle sampling schemes), achieving
higher T1 map fidelity at greater acceleration factors. In particular, we
observe consistent gains in PSNR and VIF relative to existing methods, along
with marked improvements in delineating finer myocardial structures. Our
results highlight that optimizing sampling trajectories in tandem with the
physical relaxation model leads to both enhanced quantitative accuracy and
reduced acquisition times. Code for reproducing all results will be made
publicly available upon publication.