| Literature DB >> 30943909 |
Jucheng Zhang1, Yonghua Chu2, Wenhong Ding3, Liyi Kang4, Ling Xia4,5, Sanjay Jaiswal6, Zhikang Wang2, Zhifeng Chen7.
Abstract
BACKGROUND: One of the major limitations of MRI is its slow acquisition speed. To accelerate data acquisition, partially parallel imaging (PPI) methods have been widely used in clinical applications such as sensitivity encoding (SENSE) and generalized autocalibrating partially parallel acquisitions (GRAPPA). SENSE is a popular image-domain partially parallel imaging method, which suffers from residual aliasing artifacts when the reduction factor goes higher. Undersampling the k-space data and then reconstruct images with artificial sparsity is an efficient way to accelerate data acquisition. By exploiting artificial sparsity with a high-pass filter, an improved SENSE method is proposed in this work, termed high-pass filtered SENSE (HF-SENSE).Entities:
Keywords: Artificial sparsity; High pass filter; Image reconstruction; SENSE
Mesh:
Year: 2019 PMID: 30943909 PMCID: PMC6448231 DOI: 10.1186/s12880-019-0327-3
Source DB: PubMed Journal: BMC Med Imaging ISSN: 1471-2342 Impact factor: 1.930
Fig. 1The basic flowchart of SENSE
Fig. 2a High-pass filter and b its inverse filter (c = 24 and w = 8); c simulated axial brain image after filtering, and d sagittal brain image after filtering
Fig. 3The flowchart of HF-SENSE. The k-space raw data is high-passed before undersampling and sensitivity estimation. The SENSE reconstructed image is transformed into k-space data, which is filtered with the corresponding inverse high-pass filter. Final image is obtained by applying inverse 2D Fourier transform to this k-space data
Fig. 4Results of the simulated axial brain dataset. c = 24 and w = 8 were used in the high-pass filter. The acceleration factor was 4. a, b and d the image reconstructed with SSOS, Tikhonov regularized SENSE (λ = 0.01) and HF-SENSE (λ = 0.001). c The absolute error map of (a) and (b). e The absolute error map of (a) and (d). c and e were brightened 10 times for better visualization
NRMSEs of SENSE and HF-SENSE reconstructed images with different regularization parameters
|
| NRMSE | |
|---|---|---|
| SENSE | HF-SENSE | |
| 0.1 | 44.5% | 45.5% |
| 0.01 | 17.2% | 5.4% |
| 0.001 | 17.5% | 5.2% |
| 0.0001 | 17.9% | 5.3% |
Fig. 5Results of the sagittal brain dataset. The Acceleration factor was 4. c = 24 and w = 12 were used in the high-pass filter. a, b and d the image reconstructed with SSOS, Tikhonov regularized SENSE (λ = 0.01) and HF-SENSE (λ = 0.01), the small figures in the right bottom corner of each figure depict the corresponding zoomed in region defined by the white box. c The absolute error map of (a) and (b). e The absolute error map of (a) and (d). c and e were brightened 4 times for better visibility
NRMSEs of SENSE and HF-SENSE reconstructed images with different regularization parameters
|
| NRMSE | |
|---|---|---|
| SENSE | HF-SENSE | |
| 0.1 | 28.7% | 26% |
| 0.01 | 22% | 18.2% |
| 0.001 | 22% | 18.2% |
| 0.0001 | 22% | 18.2% |
Fig. 6Results of the sagittal knee dataset. The acceleration factor was 4. a, b and d the image reconstructed with SSOS, Tikhonov regularized SENSE, and HF-SENSE. c The absolute error map of (a) and (b). e The difference map of (a) and (d). c and e were brightened 5 times for better visibility
NRMSEs of SENSE and HF-SENSE reconstructed images with different regularization parameters
|
| NRMSE | |
|---|---|---|
| SENSE | HF-SENSE | |
| 0.1 | 24.9% | 48.6% |
| 0.01 | 21.8% | 24.2% |
| 0.001 | 21.8% | 24.2% |
| 0.0001 | 21.8% | 24.2% |