Information-Theoretic Optimization for Task-Adapted Compressed Sensing Magnetic Resonance Imaging
arXiv cs.LG / 4/15/2026
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Key Points
- The paper proposes a new information-theoretic, task-adapted compressed sensing MRI (CS-MRI) framework that targets clinical task performance with far fewer k-space measurements than Nyquist sampling.
- It formulates the optimization by maximizing mutual information between undersampled k-space measurements and clinical tasks, enabling probabilistic inference to better quantify and address diagnostic uncertainty.
- Using amortized optimization with tractable variational mutual-information bounds, the method jointly learns sampling, reconstruction, and task-inference models for end-to-end adaptive sampling.
- The approach supports flexible control of sampling ratios via a single end-to-end trained model and unifies two clinical scenarios: joint reconstruction+task learning and task-only inference with suppressed reconstruction for privacy.
- Experiments on large-scale MRI datasets show competitive segmentation-quality results (e.g., Dice) while improving match to ground-truth posterior distributions using measures such as generalized energy distance (GED).
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