AI Article Synopsis

  • Parallel imaging and compressed sensing for MRI face high computational costs, particularly for 3D non-Cartesian datasets, leading to the proposed coil sketching method to enhance reconstruction efficiency while maintaining image quality.
  • Coil sketching utilizes randomized sketching algorithms and incorporates high-energy virtual coils along with random combinations of lower-energy coils, effectively leveraging data from all coils without losing signal energy.
  • Experimental results demonstrate that coil sketching significantly improves computational speed—up to three times faster for high-dimensional non-Cartesian data—without compromising image quality or signal-to-noise ratio.

Article Abstract

Purpose: Parallel imaging and compressed sensing reconstructions of large MRI datasets often have a prohibitive computational cost that bottlenecks clinical deployment, especially for three-dimensional (3D) non-Cartesian acquisitions. One common approach is to reduce the number of coil channels actively used during reconstruction as in coil compression. While effective for Cartesian imaging, coil compression inherently loses signal energy, producing shading artifacts that compromise image quality for 3D non-Cartesian imaging. We propose coil sketching, a general and versatile method for computationally-efficient iterative MR image reconstruction.

Theory And Methods: We based our method on randomized sketching algorithms, a type of large-scale optimization algorithms well established in the fields of machine learning and big data analysis. We adapt the sketching theory to the MRI reconstruction problem via a structured sketching matrix that, similar to coil compression, considers high-energy virtual coils obtained from principal component analysis. But, unlike coil compression, it also considers random linear combinations of the remaining low-energy coils, effectively leveraging information from all coils.

Results: First, we performed ablation experiments to validate the sketching matrix design on both Cartesian and non-Cartesian datasets. The resulting design yielded both improved computatioanal efficiency and preserved signal-to-noise ratio (SNR) as measured by the inverse g-factor. Then, we verified the efficacy of our approach on high-dimensional non-Cartesian 3D cones datasets, where coil sketching yielded up to three-fold faster reconstructions with equivalent image quality.

Conclusion: Coil sketching is a general and versatile reconstruction framework for computationally fast and memory-efficient reconstruction.

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Source
http://dx.doi.org/10.1002/mrm.29883DOI Listing

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