CVIVAPFeb 2, 2021

Model-based multi-parameter mapping

arXiv:2102.01604v21 citationsHas Code
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This work provides a more robust and accurate method for quantitative MR imaging, which is beneficial for researchers and clinicians who rely on these standardized measures for richer information content.

This paper addresses the issue of noise propagation in quantitative MR parameter mapping by proposing a probabilistic generative model that jointly recovers log parameter maps. The method achieves rapid and stable convergence through a novel approximate Hessian and is shown to produce more accurate maps from multi-parameter mapping protocol data.

Quantitative MR imaging is increasingly favoured for its richer information content and standardised measures. However, computing quantitative parameter maps, such as those encoding longitudinal relaxation rate (R1), apparent transverse relaxation rate (R2*) or magnetisation-transfer saturation (MTsat), involves inverting a highly non-linear function. Many methods for deriving parameter maps assume perfect measurements and do not consider how noise is propagated through the estimation procedure, resulting in needlessly noisy maps. Instead, we propose a probabilistic generative (forward) model of the entire dataset, which is formulated and inverted to jointly recover (log) parameter maps with a well-defined probabilistic interpretation (e.g., maximum likelihood or maximum a posteriori). The second order optimisation we propose for model fitting achieves rapid and stable convergence thanks to a novel approximate Hessian. We demonstrate the utility of our flexible framework in the context of recovering more accurate maps from data acquired using the popular multi-parameter mapping protocol. We also show how to incorporate a joint total variation prior to further decrease the noise in the maps, noting that the probabilistic formulation allows the uncertainty on the recovered parameter maps to be estimated. Our implementation uses a PyTorch backend and benefits from GPU acceleration. It is available at https://github.com/balbasty/nitorch.

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