A Densely Interconnected Network for Deep Learning Accelerated MRI
Jon Andre Ottesen, Matthan W.A. Caan, Inge Rasmus Groote, Atle, Bj{\o}rnerud

TL;DR
This paper introduces a densely interconnected cascading deep learning network for accelerated MRI reconstruction, significantly improving image quality metrics over baseline models through architectural innovations.
Contribution
The study proposes three architectural modifications to enhance a cascading deep learning framework for MRI reconstruction, demonstrating substantial performance improvements.
Findings
8% SSIM improvement at four-fold acceleration
23% NMSE reduction at eight-fold acceleration
All architectural modifications contributed to performance gains
Abstract
Objective: To improve accelerated MRI reconstruction through a densely connected cascading deep learning reconstruction framework. Materials and Methods: A cascading deep learning reconstruction framework (baseline model) was modified by applying three architectural modifications: Input-level dense connections between cascade inputs and outputs, an improved deep learning sub-network, and long-range skip-connections between subsequent deep learning networks. An ablation study was performed, where five model configurations were trained on the NYU fastMRI neuro dataset with an end-to-end scheme conjunct on four- and eight-fold acceleration. The trained models were evaluated by comparing their respective structural similarity index measure (SSIM), normalized mean square error (NMSE) and peak signal to noise ratio (PSNR). Results: The proposed densely interconnected residual cascading…
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Taxonomy
MethodsDense Connections
