IVCVLGMay 25, 2023

Constrained Probabilistic Mask Learning for Task-specific Undersampled MRI Reconstruction

arXiv:2305.16376v26 citations
Originality Incremental advance
AI Analysis

This addresses the need for faster MRI acquisition with maintained image quality for medical imaging applications, representing an incremental advance in data-driven mask optimization.

The paper tackles the problem of designing undersampling masks for MRI reconstruction by proposing a method that learns task-specific masks from data, resulting in distinct optimal masks for different anatomic regions and improved performance in downstream tasks like segmentation even at extreme acceleration factors.

Undersampling is a common method in Magnetic Resonance Imaging (MRI) to subsample the number of data points in k-space, reducing acquisition times at the cost of decreased image quality. A popular approach is to employ undersampling patterns following various strategies, e.g., variable density sampling or radial trajectories. In this work, we propose a method that directly learns the undersampling masks from data points, thereby also providing task- and domain-specific patterns. To solve the resulting discrete optimization problem, we propose a general optimization routine called ProM: A fully probabilistic, differentiable, versatile, and model-free framework for mask optimization that enforces acceleration factors through a convex constraint. Analyzing knee, brain, and cardiac MRI datasets with our method, we discover that different anatomic regions reveal distinct optimal undersampling masks, demonstrating the benefits of using custom masks, tailored for a downstream task. For example, ProM can create undersampling masks that maximize performance in downstream tasks like segmentation with networks trained on fully-sampled MRIs. Even with extreme acceleration factors, ProM yields reasonable performance while being more versatile than existing methods, paving the way for data-driven all-purpose mask generation.

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