Real-time, inline quantitative MRI enabled by scanner-integrated machine learning: a proof of principle with NODDI
Samuel Rot, Iulius Dragonu, Christina Triantafyllou, Matthew Grech-Sollars, Anastasia Papadaki, Laura Mancini, Stephen Wastling, Jennifer Steeden, John S. Thornton, Tarek Yousry, Claudia A. M. Gandini Wheeler-Kingshott, David L. Thomas, Daniel C. Alexander, Hui Zhang

TL;DR
This study demonstrates real-time, inline quantitative MRI using machine learning integrated into the scanner environment, enabling rapid and reproducible advanced diffusion imaging like NODDI for clinical use.
Contribution
It introduces a fully integrated neural network-based approach for real-time parameter estimation in MRI, facilitating clinical adoption of advanced qMRI techniques.
Findings
Inline NODDI parameter estimation completed in less than 10 seconds
Workflow reproducible across different protocols and subjects
NN-based estimates aligned more closely with conventional fitting methods
Abstract
Purpose: The clinical feasibility and translation of many advanced quantitative MRI (qMRI) techniques are inhibited by their restriction to 'research mode', due to resource-intensive, offline parameter estimation. This work aimed to achieve 'clinical mode' qMRI, by real-time, inline parameter estimation with a trained neural network (NN) fully integrated into a vendor's image reconstruction environment, therefore facilitating and encouraging clinical adoption of advanced qMRI techniques. Methods: The Siemens Image Calculation Environment (ICE) pipeline was customised to deploy trained NNs for advanced diffusion MRI parameter estimation with Open Neural Network Exchange (ONNX) Runtime. Two fully-connected NNs were trained offline with data synthesised with the neurite orientation dispersion and density imaging (NODDI) model, using either conventionally estimated (NNMLE) or ground truth…
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