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Review
. 2026 Jan 5;47(1):9-16.
doi: 10.3174/ajnr.A8943.

Deep Learning-Based Acceleration in MRI: Current Landscape and Clinical Applications in Neuroradiology

Affiliations
Review

Deep Learning-Based Acceleration in MRI: Current Landscape and Clinical Applications in Neuroradiology

Pranjal Rai et al. AJNR Am J Neuroradiol. .

Abstract

MRI is a cornerstone of neuroimaging, providing unparalleled soft-tissue contrast. However, its clinical utility is often limited by long acquisition times, which contribute to motion artifacts, patient discomfort, and increased costs. Although traditional acceleration techniques, such as parallel imaging and compressed sensing help reduce scan times, they may reduce SNR and introduce artifacts. The advent of deep learning-based image reconstruction (DLBIR) may help in several ways to reduce scan times while preserving or improving image quality. Various DLBIR techniques are currently available through different vendors, with claimed reductions in gradient times up to 85% while maintaining or enhancing lesion conspicuity, improved noise suppression and diagnostic accuracy. The evolution of DLBIR from 2D to 3D acquisitions, coupled with advancements in self-supervised learning, further expands its capabilities and clinical applicability. Despite these advancements, challenges persist in generalizability across scanners and imaging conditions, susceptibility to artifacts, and potential alterations in pathology representation. Additionally, limited data on training, underlying algorithms, and clinical validation of these vendor-specific closed-source algorithms pose barriers to end-user trust and widespread adoption. This review explores the current applications of DLBIR in neuroimaging, vendor-driven implementations, and emerging trends that may impact accelerated MRI acquisitions.

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