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SRflow: Deep learning based super-resolution of 4D-flow MRI data

  • Suprosanna Shit
  • , Judith Zimmermann
  • , Ivan Ezhov
  • , Johannes C. Paetzold
  • , Augusto F. Sanches
  • , Carolin Pirkl
  • , Bjoern H. Menze
  • Technical University of Munich
  • University of Zurich
  • Ludwig-Maximilians-Universität München

Research output: Contribution to journalArticlepeer-review

19 Scopus citations

Abstract

Exploiting 4D-flow magnetic resonance imaging (MRI) data to quantify hemodynamics requires an adequate spatio-temporal vector field resolution at a low noise level. To address this challenge, we provide a learned solution to super-resolve in vivo 4D-flow MRI data at a post-processing level. We propose a deep convolutional neural network (CNN) that learns the inter-scale relationship of the velocity vector map and leverages an efficient residual learning scheme to make it computationally feasible. A novel, direction-sensitive, and robust loss function is crucial to learning vector-field data. We present a detailed comparative study between the proposed super-resolution and the conventional cubic B-spline based vector-field super-resolution. Our method improves the peak-velocity to noise ratio of the flow field by 10 and 30% for in vivo cardiovascular and cerebrovascular data, respectively, for 4 × super-resolution over the state-of-the-art cubic B-spline. Significantly, our method offers 10x faster inference over the cubic B-spline. The proposed approach for super-resolution of 4D-flow data would potentially improve the subsequent calculation of hemodynamic quantities.

Original languageEnglish
Article number928181
JournalFrontiers in Artificial Intelligence
Volume5
DOIs
StatePublished - 12 Aug 2022
Externally publishedYes

Keywords

  • 4D-flow MRI
  • cerebrovascular flow
  • flow quantification
  • flow super-resolution
  • residual learning

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