451-01-005 · Parallel Transmission at High Fields
· Tuesday, 12 May, 8:20 AM–9:56 AM · Power Pitch Theatre 1
451-01-005 · Parallel Transmission at High Fields
· Tuesday, 12 May, 8:20 AM–9:56 AM · Power Pitch Theatre 1
Keywords:Parallel Transmit & MultibandDeep learningPhysics-constrained optimizationUltra high field MRI
Accepted
Junno Yun1,2, Toygan Kilic1,2, Jürgen Herrler3, Patrick Liebig3, Kamil Ugurbil2, Mehmet Akcakaya 1,2
1Electrical & Computer Engineering, University of Minnesota, Minneapolis, United States of America
2Center for Magnetic Resonance Research, University of Minnesota, Minneapolis, United States of America
3Siemens Healthineers AG, Erlangen, Germany
Presenting Author: Mehmet Akcakaya
Synopsis
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