BCIAUT-P300: A Multi-Session and Multi-Subject Benchmark Dataset on Autism for P300-Based Brain-Computer-Interfaces

There is a lack of multi-session P300 datasets for Brain-Computer Interfaces (BCI). Publicly available datasets are usually limited by small number of participants with few BCI sessions. In this sense, the lack of large, comprehensive datasets with various individuals and multiple sessions has limit...

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Published inFrontiers in Neuroscience Vol. 14; p. 568104
Main Authors Simões, Marco, Borra, Davide, Santamaría-Vázquez, Eduardo, Bittencourt-Villalpando, Mayra, Krzemiński, Dominik, Miladinović, Aleksandar, Schmid, Thomas, Zhao, Haifeng, Amaral, Carlos, Direito, Bruno, Henriques, Jorge, Carvalho, Paulo, Castelo-Branco, Miguel
Format Journal Article
LanguageEnglish
Published Lausanne Frontiers Media SA 18.09.2020
Frontiers Research Foundation
Frontiers Media S.A
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Summary:There is a lack of multi-session P300 datasets for Brain-Computer Interfaces (BCI). Publicly available datasets are usually limited by small number of participants with few BCI sessions. In this sense, the lack of large, comprehensive datasets with various individuals and multiple sessions has limited advances in the development of more effective data processing and analysis methods for BCI systems. This is particularly evident to explore the feasibility of deep learning methods that require large datasets. Here we present the BCIAUT-P300 dataset, containing 15 autism spectrum disorder individuals undergoing 7 sessions of P300-based BCI joint-attention training, for a total of 105 sessions. The dataset was used for the 2019 IFMBE Scientific Challenge organized during MEDICON 2019 where, in two phases, teams from all over the world tried to achieve the best possible object-detection accuracy based on the P300 signals. This paper presents the characteristics of the dataset and the approaches followed by the 9 finalist teams during the competition. The winner obtained an average accuracy of 92.3% with a convolutional neural network based on EEGNet. The dataset is now publicly released and stands as a benchmark for future P300-based BCI algorithms based on multiple session data.
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Reviewed by: Tomasz Maciej Rutkowski, RIKEN Center for Advanced Intelligence Project (AIP), Japan; Motoaki Kawanabe, Advanced Telecommunications Research Institute International (ATR), Japan
This article was submitted to Neural Technology, a section of the journal Frontiers in Neuroscience
Edited by: Davide Valeriani, Massachusetts Eye and Ear Infirmary and Harvard Medical School, United States
These authors have contributed equally to this work and share first authorship
ISSN:1662-453X
1662-4548
1662-453X
DOI:10.3389/fnins.2020.568104