Comparing the performance of beamformer algorithms in estimating orientations of neural sources

Yvonne Buschermöhle, Malte B Höltershinken, Tim Erdbrügger, Jan-Ole Radecke, Andreas Sprenger, Till R Schneider, Rebekka Lencer, Joachim Gross, Carsten H Wolters

Abstract

The efficacy of transcranial electric stimulation (tES) to effectively modulate neuronal activity depends critically on the spatial orientation of the targeted neuronal population. Therefore, precise estimation of target orientation is of utmost importance. Different beamforming algorithms provide orientation estimates; however, a systematic analysis of their performance is still lacking. For fixed brain locations, EEG and MEG data from sources with randomized orientations were simulated. The orientation was then estimated (1) with an EEG and (2) with a combined EEG-MEG approach. Three commonly used beamformer algorithms were evaluated with respect to their abilities to estimate the correct orientation: Unit-Gain (UG), Unit-Noise-Gain (UNG), and Array-Gain (AG) beamformer. Performance depends on the signal-to-noise ratios for the modalities and on the chosen beamformer. Overall, the UNG and AG beamformers appear as the most reliable. With increasing noise, the UG estimate converges to a vector determined by the leadfield, thus leading to insufficient orientation estimates.

Original languageEnglish
Article number109150
Journal iScience
Volume27
Issue number3
Pages (from-to)109150
ISSN2589-0042
DOIs
Publication statusPublished - 15.03.2024

Research Areas and Centers

  • Academic Focus: Center for Brain, Behavior and Metabolism (CBBM)

DFG Research Classification Scheme

  • 1.22-02 Biological Psychology and Cognitive Neurosciences
  • 2.23-04 Cognitive, Systems and Behavioural Neurobiology

Fingerprint

Dive into the research topics of 'Comparing the performance of beamformer algorithms in estimating orientations of neural sources'. Together they form a unique fingerprint.

Cite this