Active Sampling for MRI-based Sequential Decision Making
Journal:
arXiv
Published Date:
May 7, 2025
Abstract
Despite the superior diagnostic capability of Magnetic Resonance Imaging
(MRI), its use as a Point-of-Care (PoC) device remains limited by high cost and
complexity. To enable such a future by reducing the magnetic field strength,
one key approach will be to improve sampling strategies. Previous work has
shown that it is possible to make diagnostic decisions directly from k-space
with fewer samples. Such work shows that single diagnostic decisions can be
made, but if we aspire to see MRI as a true PoC, multiple and sequential
decisions are necessary while minimizing the number of samples acquired. We
present a novel multi-objective reinforcement learning framework enabling
comprehensive, sequential, diagnostic evaluation from undersampled k-space
data. Our approach during inference actively adapts to sequential decisions to
optimally sample. To achieve this, we introduce a training methodology that
identifies the samples that contribute the best to each diagnostic objective
using a step-wise weighting reward function. We evaluate our approach in two
sequential knee pathology assessment tasks: ACL sprain detection and cartilage
thickness loss assessment. Our framework achieves diagnostic performance
competitive with various policy-based benchmarks on disease detection, severity
quantification, and overall sequential diagnosis, while substantially saving
k-space samples. Our approach paves the way for the future of MRI as a
comprehensive and affordable PoC device. Our code is publicly available at
https://github.com/vios-s/MRI_Sequential_Active_Sampling