Constrained alternating minimization for parameter mapping (CAMP)

M.H. Nahla Elsaid, L. Nadine Dispenza,Chenxi Hu, C. Dana Peters,R. Todd Constable,D. Hemant Tagare,Gigi Galiana

Magnetic Resonance Imaging(2024)

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摘要
Objective To improve image quality in highly accelerated parameter mapping by incorporating a linear constraint that relates consecutive images. Approach In multi-echo T1 or T2 mapping, scan time is often shortened by acquiring undersampled but complementary measures of k-space at each TE or TI. However, residual undersampling artifacts from the individual images can then degrade the quality of the final parameter maps.In this work, a new reconstruction method, dubbed Constrained Alternating Minimization for Parameter mapping (CAMP), is introduced. This method simultaneously extracts T2 or T1* maps in addition to an image for each TE or TI from accelerated datasets, leveraging the constraints of the decay to improve the reconstructed image quality. The model enforces exponential decay through a linear constraint, resulting in a biconvex objective function that lends itself to alternating minimization. The method was tested in four in vivo volunteer experiments and validated in phantom studies and healthy subjects, using T2 and T1 mapping, with accelerations of up to 12. Main results CAMP is demonstrated for accelerated radial and Cartesian acquisitions in T2 and T1 mapping. The method is even applied to generate an entire T2 weighted image series from a single TSE dataset, despite the blockwise k-space sampling at each echo time. Experimental undersampled phantom and in vivo results processed with CAMP exhibit reduced artifacts without introducing bias. Significance For a wide array of applications, CAMP linearizes the model cost function without sacrificing model accuracy so that the well-conditioned and highly efficient reconstruction algorithm improves the image quality of accelerated parameter maps.
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关键词
Constrained reconstruction,Parameter mapping,T1 mapping,T2 mapping,Parallel MRI
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