Quantitative MR Image Reconstruction Using Parameter-Specific Dictionary Learning With Adaptive Dictionary-Size and Sparsity-Level Choice

Objective: We propose a method for the reconstruction of parameter-maps in Quantitative Magnetic Resonance Imaging (QMRI). Methods: Because different quantitative parameter-maps differ from each other in terms of local features, we propose a method where the employed dictionary learning (DL) and spa...

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Bibliographic Details
Published inIEEE transactions on biomedical engineering Vol. 71; no. 2; pp. 388 - 399
Main Authors Kofler, Andreas, Kerkering, Kirsten Miriam, Goschel, Laura, Fillmer, Ariane, Kolbitsch, Christoph
Format Journal Article
LanguageEnglish
Published United States IEEE 01.02.2024
The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
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Summary:Objective: We propose a method for the reconstruction of parameter-maps in Quantitative Magnetic Resonance Imaging (QMRI). Methods: Because different quantitative parameter-maps differ from each other in terms of local features, we propose a method where the employed dictionary learning (DL) and sparse coding (SC) algorithms automatically estimate the optimal dictionary-size and sparsity level separately for each parameter-map. We evaluated the method on a <inline-formula><tex-math notation="LaTeX">T_{1}</tex-math></inline-formula>-mapping QMRI problem in the brain using the BrainWeb data as well as in-vivo brain images acquired on an ultra-high field 7 T scanner. We compared it to a model-based acceleration for parameter mapping (MAP) approach, other sparsity-based methods using total variation (TV), Wavelets (Wl), and Shearlets (Sh) to a method which uses DL and SC to reconstruct qualitative images, followed by a non-linear (DL+Fit). Results: Our algorithm surpasses MAP, TV, Wl, and Sh in terms of RMSE and PSNR. It yields better or comparable results to DL+Fit by additionally significantly accelerating the reconstruction by a factor of approximately seven. Conclusion: The proposed method outperforms the reported methods of comparison and yields accurate <inline-formula><tex-math notation="LaTeX">T_{1}</tex-math></inline-formula>-maps. Although presented for <inline-formula><tex-math notation="LaTeX">T_{1}</tex-math></inline-formula>-mapping in the brain, our method's structure is general and thus most probably also applicable for the the reconstruction of other quantitative parameters in other organs. Significance: From a clinical perspective, the obtained <inline-formula><tex-math notation="LaTeX">T_{1}</tex-math></inline-formula>-maps could be utilized to differentiate between healthy subjects and patients with Alzheimer's disease. From a technical perspective, the proposed unsupervised method could be employed to obtain ground-truth data for the development of data-driven methods based on supervised learning.
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ISSN:0018-9294
1558-2531
1558-2531
DOI:10.1109/TBME.2023.3300090