Scientific Reports (Dec 2020)

Pragmatic spatial sampling for wearable MEG arrays

  • Tim M. Tierney,
  • Stephanie Mellor,
  • George C. O’Neill,
  • Niall Holmes,
  • Elena Boto,
  • Gillian Roberts,
  • Ryan M. Hill,
  • James Leggett,
  • Richard Bowtell,
  • Matthew J. Brookes,
  • Gareth R. Barnes

DOI
https://doi.org/10.1038/s41598-020-77589-8
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 11

Abstract

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Abstract Several new technologies have emerged promising new Magnetoencephalography (MEG) systems in which the sensors can be placed close to the scalp. One such technology, Optically Pumped MEG (OP-MEG) allows for a scalp mounted system that provides measurements within millimetres of the scalp surface. A question that arises in developing on-scalp systems is: how many sensors are necessary to achieve adequate performance/spatial discrimination? There are many factors to consider in answering this question such as the signal to noise ratio (SNR), the locations and depths of the sources, density of spatial sampling, sensor gain errors (due to interference, subject movement, cross-talk, etc.) and, of course, the desired spatial discrimination. In this paper, we provide simulations which show the impact these factors have on designing sensor arrays for wearable MEG. While OP-MEG has the potential to provide high information content at dense spatial samplings, we find that adequate spatial discrimination of sources (< 1 cm) can be achieved with relatively few sensors (< 100) at coarse spatial samplings (~ 30 mm) at high SNR. After this point approximately 50 more sensors are required for every 1 mm improvement in spatial discrimination. Comparable discrimination for traditional cryogenic systems require more channels by these same metrics. We also show that sensor gain errors have the greatest impact on discrimination between deep sources at high SNR. Finally, we also examine the limitation that aliasing due to undersampling has on the effective SNR of on-scalp sensors.