File Download
There are no files associated with this item.
Links for fulltext
(May Require Subscription)
- Publisher Website: 10.1002/mrm.29625
- Scopus: eid_2-s2.0-85149905044
- PMID: 37119514
- Find via

Supplementary
- Citations:
- Appears in Collections:
Article: Calibrationless reconstruction of uniformly-undersampled multi-channel MR data with deep learning estimated ESPIRiT maps
| Title | Calibrationless reconstruction of uniformly-undersampled multi-channel MR data with deep learning estimated ESPIRiT maps |
|---|---|
| Authors | |
| Keywords | calibrationless reconstruction deep learning ESPIRiT |
| Issue Date | 2023 |
| Citation | Magnetic Resonance in Medicine, 2023, v. 90, n. 1, p. 280-294 How to Cite? |
| Abstract | Purpose: To develop a truly calibrationless reconstruction method that derives An Eigenvalue Approach to Autocalibrating Parallel MRI (ESPIRiT) maps from uniformly-undersampled multi-channel MR data by deep learning. Methods: ESPIRiT, one commonly used parallel imaging reconstruction technique, forms the images from undersampled MR k-space data using ESPIRiT maps that effectively represents coil sensitivity information. Accurate ESPIRiT map estimation requires quality coil sensitivity calibration or autocalibration data. We present a U-Net based deep learning model to estimate the multi-channel ESPIRiT maps directly from uniformly-undersampled multi-channel multi-slice MR data. The model is trained using fully-sampled multi-slice axial brain datasets from the same MR receiving coil system. To utilize subject-coil geometric parameters available for each dataset, the training imposes a hybrid loss on ESPIRiT maps at the original locations as well as their corresponding locations within the standard reference multi-slice axial stack. The performance of the approach was evaluated using publicly available T1-weighed brain and cardiac data. Results: The proposed model robustly predicted multi-channel ESPIRiT maps from uniformly-undersampled k-space data. They were highly comparable to the reference ESPIRiT maps directly computed from 24 consecutive central k-space lines. Further, they led to excellent ESPIRiT reconstruction performance even at high acceleration, exhibiting a similar level of errors and artifacts to that by using reference ESPIRiT maps. Conclusion: A new deep learning approach is developed to estimate ESPIRiT maps directly from uniformly-undersampled MR data. It presents a general strategy for calibrationless parallel imaging reconstruction through learning from the coil and protocol-specific data. |
| Persistent Identifier | http://hdl.handle.net/10722/360217 |
| ISSN | 2023 Impact Factor: 3.0 2023 SCImago Journal Rankings: 1.343 |
| DC Field | Value | Language |
|---|---|---|
| dc.contributor.author | Zhang, Junhao | - |
| dc.contributor.author | Yi, Zheyuan | - |
| dc.contributor.author | Zhao, Yujiao | - |
| dc.contributor.author | Xiao, Linfang | - |
| dc.contributor.author | Hu, Jiahao | - |
| dc.contributor.author | Man, Christopher | - |
| dc.contributor.author | Lau, Vick | - |
| dc.contributor.author | Su, Shi | - |
| dc.contributor.author | Chen, Fei | - |
| dc.contributor.author | Leong, Alex T.L. | - |
| dc.contributor.author | Wu, Ed X. | - |
| dc.date.accessioned | 2025-09-10T09:05:43Z | - |
| dc.date.available | 2025-09-10T09:05:43Z | - |
| dc.date.issued | 2023 | - |
| dc.identifier.citation | Magnetic Resonance in Medicine, 2023, v. 90, n. 1, p. 280-294 | - |
| dc.identifier.issn | 0740-3194 | - |
| dc.identifier.uri | http://hdl.handle.net/10722/360217 | - |
| dc.description.abstract | Purpose: To develop a truly calibrationless reconstruction method that derives An Eigenvalue Approach to Autocalibrating Parallel MRI (ESPIRiT) maps from uniformly-undersampled multi-channel MR data by deep learning. Methods: ESPIRiT, one commonly used parallel imaging reconstruction technique, forms the images from undersampled MR k-space data using ESPIRiT maps that effectively represents coil sensitivity information. Accurate ESPIRiT map estimation requires quality coil sensitivity calibration or autocalibration data. We present a U-Net based deep learning model to estimate the multi-channel ESPIRiT maps directly from uniformly-undersampled multi-channel multi-slice MR data. The model is trained using fully-sampled multi-slice axial brain datasets from the same MR receiving coil system. To utilize subject-coil geometric parameters available for each dataset, the training imposes a hybrid loss on ESPIRiT maps at the original locations as well as their corresponding locations within the standard reference multi-slice axial stack. The performance of the approach was evaluated using publicly available T1-weighed brain and cardiac data. Results: The proposed model robustly predicted multi-channel ESPIRiT maps from uniformly-undersampled k-space data. They were highly comparable to the reference ESPIRiT maps directly computed from 24 consecutive central k-space lines. Further, they led to excellent ESPIRiT reconstruction performance even at high acceleration, exhibiting a similar level of errors and artifacts to that by using reference ESPIRiT maps. Conclusion: A new deep learning approach is developed to estimate ESPIRiT maps directly from uniformly-undersampled MR data. It presents a general strategy for calibrationless parallel imaging reconstruction through learning from the coil and protocol-specific data. | - |
| dc.language | eng | - |
| dc.relation.ispartof | Magnetic Resonance in Medicine | - |
| dc.subject | calibrationless reconstruction | - |
| dc.subject | deep learning | - |
| dc.subject | ESPIRiT | - |
| dc.title | Calibrationless reconstruction of uniformly-undersampled multi-channel MR data with deep learning estimated ESPIRiT maps | - |
| dc.type | Article | - |
| dc.description.nature | link_to_subscribed_fulltext | - |
| dc.identifier.doi | 10.1002/mrm.29625 | - |
| dc.identifier.pmid | 37119514 | - |
| dc.identifier.scopus | eid_2-s2.0-85149905044 | - |
| dc.identifier.volume | 90 | - |
| dc.identifier.issue | 1 | - |
| dc.identifier.spage | 280 | - |
| dc.identifier.epage | 294 | - |
| dc.identifier.eissn | 1522-2594 | - |
