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Systematic evaluation of iterative deep neural networks for fast parallel MRI reconstruction with sensitivity-weighted coil combination.

Kerstin HammernikJo SchlemperChen QinJinming DuanRonald M SummersDaniel Ruckert
Published in: Magnetic resonance in medicine (2021)
In this work, we study how dataset sizes affect single-anatomy and cross-anatomy training of neural networks for MRI reconstruction. The study provides insights into the robustness, properties, and acceleration limits of state-of-the-art networks, and our proposed down-up networks. These key insights provide essential aspects to successfully translate learning-based MRI reconstruction to clinical practice, where we are confronted with limited datasets and various imaged anatomies.
Keyphrases
  • neural network
  • contrast enhanced
  • magnetic resonance imaging
  • clinical practice
  • magnetic resonance
  • virtual reality