A comparison of subject-dependent and subject-independent channel selection strategies for single-trial P300 brain computer interfaces

被引:0
作者
Yanina Atum
Marianela Pacheco
Rubén Acevedo
Carolina Tabernig
José Biurrun Manresa
机构
[1] National University of Entre Ríos (UNER),Laboratory for Rehabilitation Engineering and Neuromuscular and Sensory Research (LIRINS), Faculty of Engineering
[2] Institute for Research and Development in Bioengineering and Bioinformatics (IBB),undefined
[3] National Scientific and Technical Research Council,undefined
[4] CONICET-UNER,undefined
来源
Medical & Biological Engineering & Computing | 2019年 / 57卷
关键词
Subject-independent channel selection; Brain-computer interface; P300; Genetic algorithm; Recursive feature elimination;
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中图分类号
学科分类号
摘要
Brain computer interfaces (BCI) represent an alternative for patients whose cognitive functions are preserved, but are unable to communicate via conventional means. A commonly used BCI paradigm is based on the detection of event-related potentials, particularly the P300, immersed in the electroencephalogram (EEG). In order to transfer laboratory-tested BCIs into systems that can be used by at homes, it is relevant to investigate if it is possible to select a limited set of EEG channels that work for most subjects and across different sessions without a significant decrease in performance. In this work, two strategies for channel selection for a single-trial P300 brain computer interface were evaluated and compared. The first strategy was tailored specifically for each subject, whereas the second strategy aimed at finding a subject-independent set of channels. In both strategies, genetic algorithms (GAs) and recursive feature elimination algorithms were used. The classification stage was performed using a linear discriminant. A dataset of EEG recordings from 18 healthy subjects was used test the proposed configurations. Performance indexes were calculated to evaluate the system. Results showed that a fixed subset of four subject-independent EEG channels selected using GA provided the best compromise between BCI setup and single-trial system performance.
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页码:2705 / 2715
页数:10
相关论文
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