IVCVLGSep 17, 2021

A review and experimental evaluation of deep learning methods for MRI reconstruction

arXiv:2109.08618v360 citations
AI Analysis

It provides a comprehensive overview for researchers in medical imaging to understand and apply deep learning techniques for improved MRI reconstruction, but it is incremental as it summarizes existing methods rather than introducing new ones.

This paper reviews and experimentally evaluates deep learning methods for accelerating MRI reconstruction, consolidating various neural network-based approaches that have shown good performance on public datasets.

Following the success of deep learning in a wide range of applications, neural network-based machine-learning techniques have received significant interest for accelerating magnetic resonance imaging (MRI) acquisition and reconstruction strategies. A number of ideas inspired by deep learning techniques for computer vision and image processing have been successfully applied to nonlinear image reconstruction in the spirit of compressed sensing for accelerated MRI. Given the rapidly growing nature of the field, it is imperative to consolidate and summarize the large number of deep learning methods that have been reported in the literature, to obtain a better understanding of the field in general. This article provides an overview of the recent developments in neural-network based approaches that have been proposed specifically for improving parallel imaging. A general background and introduction to parallel MRI is also given from a classical view of k-space based reconstruction methods. Image domain based techniques that introduce improved regularizers are covered along with k-space based methods which focus on better interpolation strategies using neural networks. While the field is rapidly evolving with plenty of papers published each year, in this review, we attempt to cover broad categories of methods that have shown good performance on publicly available data sets. Limitations and open problems are also discussed and recent efforts for producing open data sets and benchmarks for the community are examined.

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