Improving Flair Sar Efficiency At 7t By Adaptive Tailoring Of Adiabatic Pulse Power Through Deep Learning B-1(+) Estimation

MAGNETIC RESONANCE IN MEDICINE(2021)

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摘要
Purpose: The purpose of this study is to demonstrate a method for specific absorption rate (SAR) reduction for 2D T-2-FLAIR MRI sequences at 7 T by predicting the required adiabatic radiofrequency (RF) pulse power and scaling the RF amplitude in a slice-wise fashion.Methods: We used a time-resampled frequency-offset corrected inversion (TR-FOCI) adiabatic pulse for spin inversion in a T-2-FLAIR sequence to improve B-1(+) homogeneity and calculated the pulse power required for adiabaticity slice-by-slice to minimize the SAR. Drawing on the implicit B-1(+) inhomogeneity in a standard localizer scan, we acquired 3D AutoAlign localizers and SA2RAGE B-1(+) maps in 28 volunteers. Then, we trained a convolutional neural network (CNN) to estimate the B-1(+) profile from the localizers and calculated pulse scale factors for each slice. We assessed the predicted B-1(+) profiles and the effect of scaled pulse amplitudes on the FLAIR inversion efficiency in oblique transverse, saeittal, and coronal orientations.Results: The predicted B-1(+) amplitude maps matched the measured ones with a mean difference of 9.5% across all slices and participants. The slice-by-slice scaling of the TR-FOCI inversion pulse was most effective in oblique transverse orientation and resulted in a 1 min and 30 s reduction in SAR induced delay time while delivering identical image quality.Conclusion: We propose a SAR reduction technique based on the estimation of B-1(+) profiles from standard localizer scans using, a CNN and show that scaling the inversion pulse power slice-by-slice for FLAIR sequences at 7T reduces SAR and scan time without compromising image quality.
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关键词
B-1(+) profile, convolutional neural network (CNN), FLAIR, SA2RAGE, specific absorption rate (SAR), TR-FOCI
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