Introducing Image-Space Preconditioning in the Variational Formulation of MRI Reconstructions
Bastien Milani, Jean-Baptist Ledoux, Berk Can Acikgoz, Xavier Richard

TL;DR
This paper introduces a novel framework for MRI reconstruction that incorporates image-space preconditioning into the variational formulation, enabling systematic propagation across various iterative methods including deep learning and compressed sensing.
Contribution
It formulates image-space preconditioning as a non-conventional inner product within the variational MRI reconstruction framework, providing a systematic and algorithm-independent approach.
Findings
Embedding ISP in variational formulation enhances iterative reconstruction methods.
Linear algebraic tools are applied innovatively to MRI reconstruction.
Provides didactic material for beginners in MRI mathematical concepts.
Abstract
The aim of the present article is to enrich the comprehension of iterative magnetic resonance imaging (MRI) reconstructions, including compressed sensing (CS) and iterative deep learning (DL) reconstructions, by describing them in the general framework of finite-dimensional inner-product spaces. In particular, we show that image-space preconditioning (ISP) and data-space preconditioning (DSP) can be formulated as non-conventional inner-products. The main gain of our reformulation is an embedding of ISP in the variational formulation of the MRI reconstruction problem (in an algorithm-independent way) which allows in principle to naturally and systematically propagate ISP in all iterative reconstructions, including many iterative DL and CS reconstructions where preconditioning is lacking. The way in which we apply linear algebraic tools to MRI reconstructions as presented in this article…
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