作者: Mohammad Golbabaee , Clarice Poon
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摘要: We propose a novel numerical approach to separate multiple tissue compartments in image voxels and estimate quantitatively their nuclear magnetic resonance (NMR) properties mixture fractions, given fingerprinting (MRF) measurements. The number of tissues, types or quantitative are not a-priori known, but the is assumed be composed sparse with linearly mixed Bloch magnetisation responses within voxels. Fine-grid discretisation multi-dimensional NMR creates large highly coherent MRF dictionaries that can challenge scalability precision methods for (discrete) approximation. To overcome these issues, we an off-the-grid equipped extended notion group lasso regularisation approximation using continuous (non-discretised) response models. Further, nonlinear non-analytical approximated by neural network, enabling efficient back-propagation gradients through proposed algorithm. Tested on simulated in-vivo healthy brain data, demonstrate effectiveness scheme compared baseline multicompartment methods.