IVLGSPMLSep 30, 2019

Nonlinear Dipole Inversion (NDI) enables Quantitative Susceptibility Mapping (QSM) without parameter tuning

arXiv:1909.13692v15 citations
Originality Incremental advance
AI Analysis

This addresses the need for simplified and robust QSM reconstruction in medical imaging, particularly for high-resolution applications like 7T MRI, though it appears incremental as it builds on existing methods like Variational Networks.

The paper tackles the problem of parameter tuning in Quantitative Susceptibility Mapping (QSM) by proposing Nonlinear Dipole Inversion (NDI), which matches state-of-the-art image quality without regularization tuning and enables high-quality reconstructions from as few as 1-direction data, outperforming COSMOS.

We propose Nonlinear Dipole Inversion (NDI) for high-quality Quantitative Susceptibility Mapping (QSM) without regularization tuning, while matching the image quality of state-of-the-art reconstruction techniques. In addition to avoiding over-smoothing that these techniques often suffer from, we also obviate the need for parameter selection. NDI is flexible enough to allow for reconstruction from an arbitrary number of head orientations, and outperforms COSMOS even when using as few as 1-direction data. This is made possible by a nonlinear forward-model that uses the magnitude as an effective prior, for which we derived a simple gradient descent update rule. We synergistically combine this physics-model with a Variational Network (VN) to leverage the power of deep learning in the VaNDI algorithm. This technique adopts the simple gradient descent rule from NDI and learns the network parameters during training, hence requires no additional parameter tuning. Further, we evaluate NDI at 7T using highly accelerated Wave-CAIPI acquisitions at 0.5 mm isotropic resolution and demonstrate high-quality QSM from as few as 2-direction data.

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