Weyand Sabine, Chau Tom
PRISM Laboratory, Bloorview Research Institute, Holland Bloorview Kids Rehabilitation Hospital , Toronto, ON , Canada ; PRISM Laboratory, Institute of Biomaterials and Biomedical Engineering, University of Toronto , Toronto, ON , Canada.
Front Hum Neurosci. 2015 Sep 30;9:536. doi: 10.3389/fnhum.2015.00536. eCollection 2015.
Brain-computer interfaces (BCIs) provide individuals with a means of interacting with a computer using only neural activity. To date, the majority of near-infrared spectroscopy (NIRS) BCIs have used prescribed tasks to achieve binary control. The goals of this study were to evaluate the possibility of using a personalized approach to establish control of a two-, three-, four-, and five-class NIRS-BCI, and to explore how various user characteristics correlate to accuracy. Ten able-bodied participants were recruited for five data collection sessions. Participants performed six mental tasks and a personalized approach was used to select each individual's best discriminating subset of tasks. The average offline cross-validation accuracies achieved were 78, 61, 47, and 37% for the two-, three-, four-, and five-class problems, respectively. Most notably, all participants exceeded an accuracy of 70% for the two-class problem, and two participants exceeded an accuracy of 70% for the three-class problem. Additionally, accuracy was found to be strongly positively correlated (Pearson's) with perceived ease of session (ρ = 0.653), ease of concentration (ρ = 0.634), and enjoyment (ρ = 0.550), but strongly negatively correlated with verbal IQ (ρ = -0.749).
脑机接口(BCIs)为个体提供了一种仅利用神经活动与计算机进行交互的方式。迄今为止,大多数近红外光谱(NIRS)脑机接口都使用规定任务来实现二元控制。本研究的目标是评估使用个性化方法来建立对二分类、三分类、四分类和五分类NIRS脑机接口控制的可能性,并探索各种用户特征与准确率之间的相关性。招募了10名身体健全的参与者进行5次数据收集会话。参与者执行了6项心理任务,并使用个性化方法选择每个个体最佳的区分任务子集。对于二分类、三分类、四分类和五分类问题,离线交叉验证的平均准确率分别为78%、61%、47%和37%。最值得注意的是,所有参与者在二分类问题上的准确率均超过70%,两名参与者在三分类问题上的准确率超过70%。此外,发现准确率与感知到的会话轻松程度(皮尔逊相关系数ρ = 0.653)、专注轻松程度(ρ = 0.634)和愉悦感(ρ = 0.550)呈强正相关,但与言语智商呈强负相关(ρ = -0.749)。