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Feasibility of Data-Driven, Model-Free Quantitative MRI Protocol Design: Application to Brain and Prostate Diffusion-Relaxation Imaging

  • Francesco Grussu*
  • , Stefano B. Blumberg
  • , Marco Battiston
  • , Lebina S. Kakkar
  • , Hongxiang Lin
  • , Andrada Ianuş
  • , Torben Schneider
  • , Saurabh Singh
  • , Roger Bourne
  • , Shonit Punwani
  • , David Atkinson
  • , Claudia A.M. Gandini Wheeler-Kingshott
  • , Eleftheria Panagiotaki
  • , Thomy Mertzanidou
  • , Daniel C. Alexander
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Purpose: We investigate the feasibility of data-driven, model-free quantitative MRI (qMRI) protocol design on in vivo brain and prostate diffusion-relaxation imaging (DRI). Methods: We select subsets of measurements within lengthy pilot scans, without identifying tissue parameters for which to optimise for. We use the “select and retrieve via direct upsampling” (SARDU-Net) algorithm, made of a selector, identifying measurement subsets, and a predictor, estimating fully-sampled signals from the subsets. We implement both using artificial neural networks, which are trained jointly end-to-end. We deploy the algorithm on brain (32 diffusion-/T1-weightings) and prostate (16 diffusion-/T2-weightings) DRI scans acquired on three healthy volunteers on two separate 3T Philips systems each. We used SARDU-Net to identify sub-protocols of fixed size, assessing reproducibility and testing sub-protocols for their potential to inform multi-contrast analyses via the T1-weighted spherical mean diffusion tensor (T1-SMDT, brain) and hybrid multi-dimensional MRI (HM-MRI, prostate) models, for which sub-protocol selection was not optimised explicitly. Results: In both brain and prostate, SARDU-Net identifies sub-protocols that maximise information content in a reproducible manner across training instantiations using a small number of pilot scans. The sub-protocols support T1-SMDT and HM-MRI multi-contrast modelling for which they were not optimised explicitly, providing signal quality-of-fit in the top 5% against extensive sub-protocol comparisons. Conclusions: Identifying economical but informative qMRI protocols from subsets of rich pilot scans is feasible and potentially useful in acquisition-time-sensitive applications in which there is not a qMRI model of choice. SARDU-Net is demonstrated to be a robust algorithm for data-driven, model-free protocol design.

Original languageEnglish
Article number752208
JournalFrontiers in Physics
Volume9
DOIs
StatePublished - 15 Nov 2021
Externally publishedYes

Keywords

  • artificial neural network (ANN)
  • brain
  • diffusion-relaxation
  • prostate
  • protocol design
  • quantitative MRI (qMRI)

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