学位论文详细信息
Acceleration Methods for MRI
MR Image Reconstruction;Parallel MRI;Compressed Sensing;Low-rank Modeling;MRI Accelerations;Non-Cartesian MRI;Biomedical Engineering;Engineering;Biomedical Engineering
Muckley, Matthew J.Hernandez-Garcia, Luis ;
University of Michigan
关键词: MR Image Reconstruction;    Parallel MRI;    Compressed Sensing;    Low-rank Modeling;    MRI Accelerations;    Non-Cartesian MRI;    Biomedical Engineering;    Engineering;    Biomedical Engineering;   
Others  :  https://deepblue.lib.umich.edu/bitstream/handle/2027.42/120841/mmuckley_1.pdf?sequence=1&isAllowed=y
瑞士|英语
来源: The Illinois Digital Environment for Access to Learning and Scholarship
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【 摘 要 】

Acceleration methods are a critical area of research for MRI. Two of the most important acceleration techniques involve parallel imaging and compressed sensing. These advanced signal processing techniques have the potential to drastically reduce scan times and provide radiologists with new information for diagnosing disease. However, many of these new techniques require solving difficult optimization problems, which motivates the development of more advanced algorithms to solve them. In addition, acceleration methods have not reached maturity in some applications, which motivates the development of new models tailored to these applications. This dissertation makes advances in three different areas of accelerations. The first is the development of a new algorithm (called B1-Based, Adaptive Restart, Iterative Soft Thresholding Algorithm or BARISTA), that solves a parallel MRI optimization problem with compressed sensing assumptions. BARISTA is shown to be 2-3 times faster and more robust to parameter selection than current state-of-the-art variable splitting methods. The second contribution is the extension of BARISTA ideas to non-Cartesian trajectories that also leads to a 2-3 times acceleration over previous methods. The third contribution is the development of a new model for functional MRI that enables a 3-4 factor of acceleration of effective temporal resolution in functional MRI scans. Several variations of the new model are proposed, with an ROC curve analysis showing that a combination low-rank/sparsity model giving the best performance in identifying the resting-state motor network.

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