Model-based multi-parameter mapping

02/02/2021
by   Yaël Balbastre, et al.
0

Quantitative MR imaging is increasingly favoured for its richer information content and standardised measures. However, extracting quantitative parameters such as the longitudinal relaxation rate (R1), apparent transverse relaxation rate (R2*), or magnetisation-transfer saturation (MTsat) involves inverting a highly non-linear function. Estimations often assume noise-free measurements and use subsets of the data to solve for different quantities in isolation, with error propagating through each computation. Instead, a probabilistic generative model of the entire dataset can be formulated and inverted to jointly recover parameter estimates with a well-defined probabilistic meaning (e.g., maximum likelihood or maximum a posteriori). In practice, iterative methods must be used but convergence is difficult due to the non-convexity of the log-likelihood; yet, we show that it can be achieved thanks to a novel approximate Hessian and, with it, reliable parameter estimates obtained. Here, we demonstrate the utility of this flexible framework in the context of the popular multi-parameter mapping framework and further show how to incorporate a denoising prior and predict posterior uncertainty. Our implementation uses a PyTorch backend and benefits from GPU acceleration. It is available at https://github.com/balbasty/nitorch.

READ FULL TEXT

page 14

page 15

page 16

research
07/09/2018

Glow: Generative Flow with Invertible 1x1 Convolutions

Flow-based generative models (Dinh et al., 2014) are conceptually attrac...
research
06/11/2021

Order Matters: Probabilistic Modeling of Node Sequence for Graph Generation

A graph generative model defines a distribution over graphs. One type of...
research
05/28/2020

Joint Total Variation ESTATICS for Robust Multi-Parameter Mapping

Quantitative magnetic resonance imaging (qMRI) derives tissue-specific p...
research
10/12/2011

Improving parameter learning of Bayesian nets from incomplete data

This paper addresses the estimation of parameters of a Bayesian network ...
research
04/26/2022

Neural Maximum A Posteriori Estimation on Unpaired Data for Motion Deblurring

Real-world dynamic scene deblurring has long been a challenging task sin...
research
06/08/2021

Recurrent Inference Machines as inverse problem solvers for MR relaxometry

In this paper, we propose the use of Recurrent Inference Machines (RIMs)...

Please sign up or login with your details

Forgot password? Click here to reset