MR fingerprinting Deep RecOnstruction NEtwork (DRONE)

Purpose Demonstrate a novel fast method for reconstruction of multi‐dimensional MR fingerprinting (MRF) data using deep learning methods. Methods A neural network (NN) is defined using the TensorFlow framework and trained on simulated MRF data computed with the extended phase graph formalism. The NN...

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Published inMagnetic resonance in medicine Vol. 80; no. 3; pp. 885 - 894
Main Authors Cohen, Ouri, Zhu, Bo, Rosen, Matthew S.
Format Journal Article
LanguageEnglish
Published United States Wiley Subscription Services, Inc 01.09.2018
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ISSN0740-3194
1522-2594
1522-2594
DOI10.1002/mrm.27198

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Summary:Purpose Demonstrate a novel fast method for reconstruction of multi‐dimensional MR fingerprinting (MRF) data using deep learning methods. Methods A neural network (NN) is defined using the TensorFlow framework and trained on simulated MRF data computed with the extended phase graph formalism. The NN reconstruction accuracy for noiseless and noisy data is compared to conventional MRF template matching as a function of training data size and is quantified in simulated numerical brain phantom data and International Society for Magnetic Resonance in Medicine/National Institute of Standards and Technology phantom data measured on 1.5T and 3T scanners with an optimized MRF EPI and MRF fast imaging with steady state precession (FISP) sequences with spiral readout. The utility of the method is demonstrated in a healthy subject in vivo at 1.5T. Results Network training required 10 to 74 minutes; once trained, data reconstruction required approximately 10 ms for the MRF EPI and 76 ms for the MRF FISP sequence. Reconstruction of simulated, noiseless brain data using the NN resulted in a RMS error (RMSE) of 2.6 ms for T1 and 1.9 ms for T2. The reconstruction error in the presence of noise was less than 10% for both T1 and T2 for SNR greater than 25 dB. Phantom measurements yielded good agreement (R2 = 0.99/0.99 for MRF EPI T1/T2 and 0.94/0.98 for MRF FISP T1/T2) between the T1 and T2 estimated by the NN and reference values from the International Society for Magnetic Resonance in Medicine/National Institute of Standards and Technology phantom. Conclusion Reconstruction of MRF data with a NN is accurate, 300‐ to 5000‐fold faster, and more robust to noise and dictionary undersampling than conventional MRF dictionary‐matching.
Bibliography:Funding information
is supported by NIH National Institute for Biomedical Imaging and Bioengineering F32‐EB022390. This work was also supported in part by the MGH/HST Athinoula A. Martinos Center for Biomedical Imaging and the Center for Machine Learning at Martinos
Correction added after online publication 16 April 2018. Due to a publisher's error, not all of the authors' corrections were made prior to publication and have been updated in this version.
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ISSN:0740-3194
1522-2594
1522-2594
DOI:10.1002/mrm.27198