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arxiv:2404.15692

Deep Learning for Accelerated and Robust MRI Reconstruction: a Review

Published on Apr 24, 2024
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Abstract

Deep learning techniques enhance MRI reconstruction by improving image quality, accelerating scans, and addressing data challenges through various architectures and methods, with implications for clinical imaging.

AI-generated summary

Deep learning (DL) has recently emerged as a pivotal technology for enhancing magnetic resonance imaging (MRI), a critical tool in diagnostic radiology. This review paper provides a comprehensive overview of recent advances in DL for MRI reconstruction. It focuses on DL approaches and architectures designed to improve image quality, accelerate scans, and address data-related challenges. These include end-to-end neural networks, pre-trained networks, generative models, and self-supervised methods. The paper also discusses the role of DL in optimizing acquisition protocols, enhancing robustness against distribution shifts, and tackling subtle bias. Drawing on the extensive literature and practical insights, it outlines current successes, limitations, and future directions for leveraging DL in MRI reconstruction, while emphasizing the potential of DL to significantly impact clinical imaging practices.

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