Deep learning‐based local SAR prediction using B1 maps and structural MRI of the head for parallel transmission at 7 T

Author:

Gokyar Sayim1ORCID,Zhao Chenyang1ORCID,Ma Samantha J.2,Wang Danny J. J.13ORCID

Affiliation:

1. Laboratory of FMRI Technology (LOFT), USC Stevens Neuroimaging and Informatics Institute Keck School of Medicine, University of Southern California Los Angeles California USA

2. Siemens Medical Solutions USA Los Angeles California USA

3. Department of Neurology, Keck School of Medicine University of Southern California Los Angeles California USA

Abstract

AbstractPurposeTo predict subject‐specific local specific absorption rate (SAR) distributions of the human head for parallel transmission (pTx) systems at 7 T.Theory and methodsElectromagnetic energy deposition in tissues is nonuniform at 7 T, and interference patterns due to individual channels of pTx systems may result in increased local SAR values, which can only be estimated with very high safety margins. We proposed, designed, and demonstrated a multichannel 3D convolutional neural network (CNN) architecture to predict local SAR maps as well as peak‐spatial SAR (ps‐SAR) levels. We hypothesized that utilizing a three‐channel 3D CNN, in which each channel is fed by a map, a phase‐reversed map, and an MR image, would improve prediction accuracies and decrease uncertainties in the predictions. We generated 10 new head–neck body models, along with 389 3D pTx MRI data having different RF shim settings, with their B1 and local SAR maps to support efforts in this field.ResultsThe proposed three‐channel 3D CNN predicted ps‐SAR10g levels with an average overestimation error of 20%, which was better than the virtual observation points–based estimation error (i.e., 152% average overestimation). The proposed method decreased prediction uncertainties over 20% (i.e., 22.5%–17.7%) compared to other methods. A safety factor of 1.20 would be enough to avoid underestimations for the dataset generated in this work.ConclusionMultichannel 3D CNN networks can be promising in predicting local SAR values and perform predictions within a second, making them clinically useful as an alternative to virtual observation points–based methods.

Funder

Foundation for the National Institutes of Health

Momental Foundation

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging

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