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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Segmentation | SKM-TEA | GED0.3645 | 48 | |
| Segmentation | BRISC 2025 | GED0.6024 | 44 | |
| Uncertainty Calibration | QUBIQ 2021 | Expected Calibration Error (ECE)0.81 | 28 | |
| Segmentation | QUBIQ 2x Acceleration 2021 (test) | GED0.1104 | 11 | |
| Segmentation | QUBIQ 4x Acceleration 2021 (test) | GED0.1073 | 11 | |
| Segmentation | QUBIQ 8x Acceleration 2021 | GED0.1009 | 11 | |
| Segmentation | QUBIQ 16x Acceleration 2021 | GED0.1243 | 11 | |
| Segmentation | QUBIQ 24x Acceleration 2021 | GED0.1683 | 11 | |
| Segmentation | QUBIQ 32x Acceleration 2021 | GED0.2216 | 11 |