Motion robust reconstruction of multi-shot diffusion-weighted images without phase estimation via locally low-rank regularization
US-2019355157-A1 · Nov 21, 2019 · US
US12332334B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-12332334-B2 |
| Application number | US-202318318489-A |
| Country | US |
| Kind code | B2 |
| Filing date | May 16, 2023 |
| Priority date | May 16, 2023 |
| Publication date | Jun 17, 2025 |
| Grant date | Jun 17, 2025 |
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A method includes obtaining k-space data acquired by an MRI scanner from a single channel body coil utilizing a multi-shot EP-DWI pulse sequence and sampling the k-space data for a plurality of shots so that for each shot both a central k-space is fully sampled to form a central calibration region and an outer k-space is partially sampled by a factor equal to a number of shots. The method includes reconstructing an initial fully sampled k-space estimate for each shot utilizing both partial Fourier constant sampling and projection on convex sets reconstruction, wherein the plurality of shots is treated as a plurality of channels for filling in missing k-space for a respective shot. The method includes utilizing a low-rank regularization algorithm in an iterative manner to generate a reconstructed image for each shot, wherein the initial fully sampled k-space estimate for each shot is utilized as an initial guess.
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The invention claimed is: 1. A computer-implemented method for performing echo-planar diffusion weighted imaging (EP-DWI), comprising: obtaining, via a processor, k-space data of a region of interest acquired by a magnetic resonance imaging (MRI) scanner from a single channel body coil utilizing a multi-shot EP-DWI pulse sequence; sampling, via the processor, the k-space data for a plurality of shots so that for each shot of the plurality of shots both a central k-space is fully sampled to form a central calibration region and an outer k-space is partially sampled in a phase encoding direction by a factor equal to a number of shots of the plurality of shots, wherein during sampling of the k-space data for the plurality of shots a width of the central calibration region varies across the plurality of shots to control distortion levels in the EP-DWI; reconstructing, via the processor, an initial fully sampled k-space estimate for each shot of the plurality of shots utilizing partial Fourier constant sampling and both autocalibrating reconstruction for Cartesian imaging (ARC) and projection on convex sets (POCS) reconstruction, wherein the plurality of shots is treated as a plurality of channels for filling in missing k-space for a respective shot, and wherein interleaved shot-space is filled with ARC and partial k-space is filled with POCS reconstruction; and utilizing, via the processor, a low-rank regularization algorithm in an iterative manner to generate a reconstructed image for each shot of the plurality of shots, wherein the initial fully sampled k-space estimate for each shot of the plurality of shots is utilized by the low-rank regularization algorithm as an initial guess. 2. A system for performing echo-planar diffusion weighted imaging (EP-DWI), comprising: a memory encoding processor-executable routines; and a processor configured to access the memory and to execute the processor-executable routines, wherein the processor-executable routines, when executed by the processor, cause the processor to: obtain k-space data of a region of interest acquired by a magnetic resonance imaging (MRI) scanner from a single channel body coil utilizing a multi-shot EP-DWI pulse sequence; sample the k-space data for a plurality of shots so that for each shot of the plurality of shots both a central k-space is fully sampled to form a central calibration region and an outer k-space is partially sampled in a phase encoding direction by a factor equal to a number of shots of the plurality of shots, wherein during sampling of the k-space data for the plurality of shots a width of the central calibration region varies across the plurality of shots to control distortion levels in the EP-DWI; reconstruct an initial fully sampled k-space estimate for each shot of the plurality of shots utilizing partial Fourier constant sampling and both autocalibrating reconstruction for Cartesian imaging (ARC) and projection on convex sets (POCS) reconstruction, wherein the plurality of shots is treated as a plurality of channels for filling in missing k-space for a respective shot, and wherein interleaved shot-space is filled with ARC and partial k-space is filled with POCS reconstruction; and utilize a low-rank regularization algorithm in an iterative manner to generate a reconstructed image for each shot of the plurality of shots, wherein the initial fully sampled k-space estimate for each shot of the plurality of shots is utilized by the low-rank regularization algorithm as an initial guess. 3. A non-transitory computer-readable medium, the computer-readable medium comprising processor-executable code that when executed by a processor, causes the processor to: obtain k-space data of a region of interest acquired by a magnetic resonance imaging (MRI) scanner from a single channel body coil utilizing a multi-shot echo-planar diffusion weighted imaging (EP-DWI) pulse sequence; sample the k-space data for a plurality of shots so that for each shot of the plurality of shots both a central k-space is fully sampled to form a central calibration region and an outer k-space is partially sampled in a phase encoding direction by a factor equal to a number of shots of the plurality of shots, wherein during sampling of the k-space data for the plurality of shots a width of the central calibration region varies across the plurality of shots to control distortion levels in the EP-DWI; reconstruct an initial fully sampled k-space estimate for each shot of the plurality of shots utilizing partial Fourier constant sampling and both autocalibrating reconstruction for Cartesian imaging (ARC) and projection on convex sets (POCS) reconstruction, wherein the plurality of shots is treated as a plurality of channels for filling in missing k-space for a respective shot, and wherein interleaved shot-space is filled with ARC and partial k-space is filled with POCS reconstruction; and utilize a low-rank regularization algorithm in an iterative manner to generate a reconstructed image for each shot of the plurality of shots, wherein the initial fully sampled k-space estimate for each shot of the plurality of shots is utilized by the low-rank regularization algorithm as an initial guess. 4. The computer-implemented method of claim 1 , wherein reconstructing the initial fully sampled k-space estimate for each shot comprises utilizing the central calibration region for a respective shot and a weighted combination of neighboring k-space for the plurality of shots to fill in missing k-space in the respective shot. 5. The computer-implemented method of claim 1 , wherein during sampling of the k-space data for the plurality of shots a subsampling pattern is shifted across the plurality of shots. 6. The computer-implemented method of claim 1 , wherein a partial Fourier factor is greater than the factor. 7. The computer-implemented method of claim 1 , wherein obtaining the k-space data of the region of interest and sampling the k-space data comprises obtaining the k-space data and sampling the k-space data over a plurality of excitations and in a plurality of diffusion directions. 8. The system of claim 2 , wherein reconstructing the initial fully sampled k-space estimate for each shot comprises utilizing the central calibration region for a respective shot and a weighted combination of neighboring k-space for the plurality of shots to fill in missing k-space in the respective shot. 9. The system of claim 2 , wherein during sampling of the k-space data for the plurality of shots a subsampling pattern is shifted across the plurality of shots. 10. The system of claim 2 , wherein a partial Fourier factor is greater than the factor. 11. The system of claim 2 , wherein obtaining the k-space data of the region of interest and sampling the k-space data comprises obtaining the k-space data and sampling the k-space data over a plurality of excitations and in a plurality of diffusion directions. 12. The non-transitory computer-readable medium of claim 3 , wherein during sampling of the k-space data for the plurality of shots a subsampling pattern is shifted across the plurality of shots. 13. The non-transitory computer-readable medium of claim 3 , wherein obtaining the k-space data of the region of interest and sampling the k-space data comprises obtaining the k-space data and sampling the k-space data over a plurality of excitations and in a plurality of diffusion directions. 14. The non-transitory computer-readable medium of claim 3 , wherein reconstructing the initial fully sampled k-space estimate for each shot comprises utilizing the central calibration region for a respective shot and a weighted combinatio
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