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Learning Task-Specific Strategies for Accelerated MRI

About

Compressed sensing magnetic resonance imaging (CS-MRI) seeks to recover visual information from subsampled measurements for diagnostic tasks. Traditional CS-MRI methods often separately address measurement subsampling, image reconstruction, and task prediction, resulting in a suboptimal end-to-end performance. In this work, we propose TACKLE as a unified co-design framework for jointly optimizing subsampling, reconstruction, and prediction strategies for the performance on downstream tasks. The na\"ive approach of simply appending a task prediction module and training with a task-specific loss leads to suboptimal downstream performance. Instead, we develop a training procedure where a backbone architecture is first trained for a generic pre-training task (image reconstruction in our case), and then fine-tuned for different downstream tasks with a prediction head. Experimental results on multiple public MRI datasets show that TACKLE achieves an improved performance on various tasks over traditional CS-MRI methods. We also demonstrate that TACKLE is robust to distribution shifts by showing that it generalizes to a new dataset we experimentally collected using different acquisition setups from the training data. Without additional fine-tuning, TACKLE leads to both numerical and visual improvements compared to existing baselines. We have further implemented a learned 4$\times$-accelerated sequence on a Siemens 3T MRI Skyra scanner. Compared to the fully-sampling scan that takes 335 seconds, our optimized sequence only takes 84 seconds, achieving a four-fold time reduction as desired, while maintaining high performance.

Zihui Wu, Tianwei Yin, Yu Sun, Robert Frost, Andre van der Kouwe, Adrian V. Dalca, Katherine L. Bouman• 2023

Related benchmarks

TaskDatasetResultRank
SegmentationSKM-TEA
GED0.3645
48
SegmentationBRISC 2025
GED0.6024
44
Uncertainty CalibrationQUBIQ 2021
Expected Calibration Error (ECE)0.81
28
SegmentationQUBIQ 2x Acceleration 2021 (test)
GED0.1104
11
SegmentationQUBIQ 4x Acceleration 2021 (test)
GED0.1073
11
SegmentationQUBIQ 8x Acceleration 2021
GED0.1009
11
SegmentationQUBIQ 16x Acceleration 2021
GED0.1243
11
SegmentationQUBIQ 24x Acceleration 2021
GED0.1683
11
SegmentationQUBIQ 32x Acceleration 2021
GED0.2216
11
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