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Database Profile

BNCI Horizon 2020 Database

General information

URL: http://bnci-horizon-2020.eu/
Full name:
Description: To foster and promote further investigations in the field of electroencephalogram (EEG)-based movement decoding, as well as to allow the interested community to make their own conclusions, all datasets publicly are available in the BNCI Horizon 2020 database. BNCI Horizon 2020 database is all about brain-computer interfaces (BCIs).
Year founded: 2020
Last update:
Version:
Accessibility:
Accessible
Country/Region: Austria

Classification & Tag

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Contact information

University/Institution: Graz University of Technology
Address: Inffeldgasse 13/IV 8010 Graz Austria
City: Graz
Province/State:
Country/Region: Austria
Contact name (PI/Team): Gernot R. Muller-Putz
Contact email (PI/Helpdesk): info@bnci-horizon-2020.eu

Publications

32903775
Analyzing and Decoding Natural Reach-and-Grasp Actions Using Gel, Water and Dry EEG Systems. [PMID: 32903775]
Andreas Schwarz, Carlos Escolano, Luis Montesano, Gernot R Müller-Putz

Reaching and grasping is an essential part of everybody's life, it allows meaningful interaction with the environment and is key to independent lifestyle. Recent electroencephalogram (EEG)-based studies have already shown that neural correlates of natural reach-and-grasp actions can be identified in the EEG. However, it is still in question whether these results obtained in a laboratory environment can make the transition to mobile applicable EEG systems for home use. In the current study, we investigated whether EEG-based correlates of natural reach-and-grasp actions can be successfully identified and decoded using mobile EEG systems, namely the water-based EEG-Versatile system and the dry-electrodes EEG-Hero headset. In addition, we also analyzed gel-based recordings obtained in a laboratory environment (g.USBamp/g.Ladybird, gold standard), which followed the same experimental parameters. For each recording system, 15 study participants performed 80 self-initiated reach-and-grasp actions toward a glass (palmar grasp) and a spoon (lateral grasp). Our results confirmed that EEG-based correlates of reach-and-grasp actions can be successfully identified using these mobile systems. In a single-trial multiclass-based decoding approach, which incorporated both movement conditions and rest, we could show that the low frequency time domain (LFTD) correlates were also decodable. Grand average peak accuracy calculated on unseen test data yielded for the water-based electrode system 62.3% (9.2% STD), whereas for the dry-electrodes headset reached 56.4% (8% STD). For the gel-based electrode system 61.3% (8.6% STD) could be achieved. To foster and promote further investigations in the field of EEG-based movement decoding, as well as to allow the interested community to make their own conclusions, we provide all datasets publicly available in the BNCI Horizon 2020 database (http://bnci-horizon-2020.eu/database/data-sets).

Front Neurosci. 2020:14() | 18 Citations (from Europe PMC, 2025-12-20)

Ranking

All databases:
3289/6895 (52.313%)
Health and medicine:
814/1738 (53.222%)
3289
Total Rank
15
Citations
3
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Record metadata

Created on: 2020-11-07
Curated by:
Lin Liu [2021-03-24]
Ming Chen [2020-11-27]
Ming Chen [2020-11-07]