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From research to clinic: A sensor reduction method for high-density EEG neurofeedback systems.
Pal, Prasanta; Theisen, Daniel L; Datko, Michael; van Lutterveld, Remko; Roy, Alexandra; Ruf, Andrea; Brewer, Judson A.
Afiliação
  • Pal P; Center for Mindfulness, University of Massachusetts Medical School, 222 Maple St., Shrewsbury, MA 01545, USA. Electronic address: Prasanta.Pal@umassmed.edu.
  • Theisen DL; Center for Mindfulness, University of Massachusetts Medical School, 222 Maple St., Shrewsbury, MA 01545, USA.
  • Datko M; Center for Mindfulness, University of Massachusetts Medical School, 222 Maple St., Shrewsbury, MA 01545, USA.
  • van Lutterveld R; Center for Mindfulness, University of Massachusetts Medical School, 222 Maple St., Shrewsbury, MA 01545, USA.
  • Roy A; Center for Mindfulness, University of Massachusetts Medical School, 222 Maple St., Shrewsbury, MA 01545, USA.
  • Ruf A; Center for Mindfulness, University of Massachusetts Medical School, 222 Maple St., Shrewsbury, MA 01545, USA.
  • Brewer JA; Center for Mindfulness, University of Massachusetts Medical School, 222 Maple St., Shrewsbury, MA 01545, USA.
Clin Neurophysiol ; 130(3): 352-358, 2019 03.
Article em En | MEDLINE | ID: mdl-30669011
ABSTRACT

OBJECTIVE:

To accurately deliver a source-estimated neurofeedback (NF) signal developed on a 128-sensors EEG system on a reduced 32-sensors EEG system.

METHODS:

A linearly constrained minimum variance beamformer algorithm was used to select the 64 sensors which contributed most highly to the source signal. Monte Carlo-based sampling was then used to randomly generate a large set of reduced 32-sensors montages from the 64 beamformer-selected sensors. The reduced montages were then tested for their ability to reproduce the 128-sensors NF. The high-performing montages were then pooled and analyzed by a k-means clustering machine learning algorithm to produce an optimized reduced 32-sensors montage.

RESULTS:

Nearly 4500 high-performing montages were discovered from the Monte Carlo sampling. After statistically analyzing this pool of high performing montages, a set of refined 32-sensors montages was generated that could reproduce the 128-sensors NF with greater than 80% accuracy for 72% of the test population.

CONCLUSION:

Our Monte Carlo reduction method was used to create reliable reduced-sensors montages which could be used to deliver accurate NF in clinical settings.

SIGNIFICANCE:

A translational pathway is now available by which high-density EEG-based NF measures can be delivered using clinically accessible low-density EEG systems.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Encéfalo / Eletroencefalografia / Neurorretroalimentação Idioma: En Ano de publicação: 2019 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Encéfalo / Eletroencefalografia / Neurorretroalimentação Idioma: En Ano de publicação: 2019 Tipo de documento: Article