Deep learning-based whole-brain B(1) (+)-mapping at 7T

基于深度学习的7T全脑B(1)(+)映射

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Abstract

PURPOSE: This study investigates the feasibility of using complex-valued neural networks (NNs) to estimate quantitative transmit magnetic RF field (B(1) (+)) maps from multi-slice localizer scans with different slice orientations in the human head at 7T, aiming to accelerate subject-specific B(1) (+)-calibration using parallel transmission (pTx). METHODS: Datasets containing channel-wise B(1) (+)-maps and corresponding multi-slice localizers were acquired in axial, sagittal, and coronal orientation in 15 healthy subjects utilizing an eight-channel pTx transceiver head coil. Training included five-fold cross-validation for four network configurations: NNcxtra used transversal, NNcxsag sagittal, NNcxcor coronal data, and NNcxall was trained on all slice orientations. The resulting maps were compared to B(1) (+)-reference scans using different quality metrics. The proposed network was applied in-vivo at 7T in two unseen test subjects using dynamic kt-point pulses. RESULTS: Predicted B(1) (+)-maps demonstrated a high similarity with measured B(1) (+)-maps across multiple orientations. The estimation matched the reference with a mean relative error in the magnitude of (2.70 ± 2.86)% and mean absolute phase difference of (6.70 ± 1.99)° for transversal, (1.82 ± 0.69)% and (4.25 ± 1.62)° for sagittal ( NNcxsag ), as well as (1.33 ± 0.27)% and (2.66 ± 0.60)° for coronal slices ( NNcxcor ) considering brain tissue. NNcxall trained on all orientations enables a robust prediction of B(1) (+)-maps across different orientations. Achieving a homogenous excitation over the whole brain for an in-vivo application displayed the approach's feasibility. CONCLUSION: This study demonstrates the feasibility of utilizing complex-valued NNs to estimate multi-slice B(1) (+)-maps in different slice orientations from localizer scans in the human brain at 7T.

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