4.4 Article

Small-animal, whole-body imaging with metamaterial-inspired RF coil

期刊

NMR IN BIOMEDICINE
卷 31, 期 8, 页码 -

出版社

WILEY
DOI: 10.1002/nbm.3952

关键词

RF receive coils; MR Engineering; RF transmit coils; Body; Applications; Computational electromagnetics; Acquisition Methods; Methods and Engineering

资金

  1. Horizon 2020 Framework Programme [736937]
  2. Ministry of Education and Science of the Russian Federation [3.2465.2017/4.6]

向作者/读者索取更多资源

Particular applications in preclinical magnetic resonance imaging require the entire body of an animal to be imaged with sufficient quality. This is usually performed by combining regions scanned with small coils with high sensitivity or long scans using large coils with low sensitivity. Here, a metamaterial-inspired design employing a parallel array of wires operating on the principle of eigenmode hybridization was used to produce a small-animal imaging coil. The coil field distribution responsible for the coil field of view and sensitivity was simulated in an electromagnetic simulation package and the coil geometrical parameters were optimized for whole-body imaging. A prototype coil was then manufactured and assembled using brass telescopic tubes with copper plates as distributed capacitance. Its field distribution was measured experimentally using the B-1(+) mapping technique and was found to be in close correspondence with the simulated results. The coil field distribution was found to be suitable for large field of view small-animal imaging and the coil image quality was compared with a commercially available coil by whole-body scanning of living mice. Signal-to-noise measurements in living mice showed higher values than those of a commercially available coil with large receptive fields, and rivalled the performance of small receptive field and high-sensitivity coils. The coil was deemed to be suitable for some whole-body, small-animal preclinical applications.

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