Thesis
Structured low-rank methods for robust 3D multi-shot EPI
- Abstract:
-
Magnetic resonance imaging (MRI) has inherently slow acquisition speed, and Echo-Planar Imaging (EPI), as an efficient acquisition scheme, has been widely used in functional magnetic resonance imaging (fMRI) where an image series with high temporal resolution is needed to measure neuronal activity. Recently, 3D multi-shot EPI which samples data from an entire 3D volume with repeated shots has been drawing growing interest for fMRI with its high isotropic spatial resolution, particularly at ultra-high fields. However, compared to single-shot EPI, multi-shot EPI is sensitive to any inter-shot instabilities, e.g., subject movement and even physiologically induced field fluctuations. These inter-shot inconsistencies can greatly negate the theoretical benefits of 3D multi-shot EPI over conventional 2D multi-slice acquisitions.
Structured low-rank image reconstruction which regularises under-sampled image reconstruction by exploiting the linear dependencies in MRI data has been successfully demonstrated in a variety of applications. In this thesis, a structured low-rank reconstruction method is optimised for 3D multi-shot EPI imaging together with a dedicated sampling pattern termed seg-CAIPI, in order to enhance the robustness to physiological fluctuations and improve the temporal stability of 3D multi-shot EPI for fMRI at 7T. Moreover, a motion compensated structured low-rank reconstruction framework is also presented for robust 3D multi-shot EPI which further takes into account inter-shot instabilities due to bulk motion. Lastly, this thesis also investigates into the improvement of structured low-rank reconstruction from an algorithmic perspective and presents the locally structured low-rank reconstruction scheme.
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Authors
Contributors
- Institution:
- University of Oxford
- Division:
- MSD
- Department:
- Clinical Neurosciences
- Sub department:
- Clinical Neurosciences
- Role:
- Supervisor
- Institution:
- University of Oxford
- Division:
- MSD
- Department:
- Clinical Neurosciences
- Sub department:
- Clinical Neurosciences
- Oxford college:
- St Hilda's College
- Role:
- Supervisor
- Funder identifier:
- http://dx.doi.org/10.13039/501100001804
- Funding agency for:
- Chiew, M
- Grant:
- N/A
- Funder identifier:
- http://dx.doi.org/10.13039/501100000287
- Funding agency for:
- Wu, W
- Grant:
- RF201819\18\92
- Type of award:
- DPhil
- Level of award:
- Doctoral
- Awarding institution:
- University of Oxford
- Language:
-
English
- Keywords:
- Subjects:
- Deposit date:
-
2023-06-09
Terms of use
- Copyright holder:
- Chen, X
- Copyright date:
- 2023
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