Design and performance of a Toroidal RF Volume Coil with Intrinsic Electromagnetic Interference Rejection for low-field Portable Halbach-Based MRI Systems
Jules Vliem (1), Najac Chloe (2), Beatrice Lena (2), Andrew Webb (2), Irena Zivkovic (1) ((1) Electrical Engineering Department, Eindhoven University of Technology, Eindhoven, The Netherlands, (2) C.J. Gorter MRI Center, Department of Radiology, Leiden University Medical Center

TL;DR
This paper introduces a novel toroidal RF coil design for low-field MRI systems that inherently reduces electromagnetic interference, maintaining high sensitivity without extensive shielding.
Contribution
The study presents a new anapole (toroidal) RF coil design that is less sensitive to EMI while preserving high signal sensitivity, suitable for portable low-field MRI systems.
Findings
The toroidal coil achieves noise levels comparable to traditional coils with minimal shielding.
The coil maintains similar transmit and receive efficiency as conventional spiral head coils.
Electromagnetic interference effects are intrinsically reduced by the coil design.
Abstract
Purpose: One of the intrinsic limitations of low-field MRI is low signal-to-noise ratio (SNR), which can be further reduced by electromagnetic interference (EMI) due to the lack of a Faraday shielded room. To address this issue, we propose a novel RF coil design that is inherently less sensitive to EMI while maintaining high receive sensitivity. Methods: The proposed coil structure is based on an anapole (toroidal) design and consists of six rings, each containing four continuous wires wound around an elliptical 3D-printed former. The wire in the entire structure is uninterrupted. This coil is designed for use in systems with an axial B0 field direction. The performance of the proposed RF coil was evaluated on a Halbach array system designed for neuroimaging and operating at 47mT and compared with a widely used spiral head coil. Results: The noise level achieved by the proposed toroidal…
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