Bauer Robert, Gharabaghi Alireza
Division of Functional and Restorative Neurosurgery and Division of Translational Neurosurgery, Department of Neurosurgery, Eberhard Karls University Tuebingen Tuebingen, Germany ; Neuroprosthetics Research Group, Werner Reichardt Centre for Integrative Neuroscience, Eberhard Karls University Tuebingen Tuebingen, Germany.
Front Behav Neurosci. 2015 Feb 16;9:21. doi: 10.3389/fnbeh.2015.00021. eCollection 2015.
Neurofeedback (NFB) training with brain-computer interfaces (BCIs) is currently being studied in a variety of neurological and neuropsychiatric conditions in an aim to reduce disorder-specific symptoms. For this purpose, a range of classification algorithms has been explored to identify different brain states. These neural states, e.g., self-regulated brain activity vs. rest, are separated by setting a threshold parameter. Measures such as the maximum classification accuracy (CA) have been introduced to evaluate the performance of these algorithms. Interestingly enough, precisely these measures are often used to estimate the subject's ability to perform brain self-regulation. This is surprising, given that the goal of improving the tool that differentiates between brain states is different from the aim of optimizing NFB for the subject performing brain self-regulation. For the latter, knowledge about mental resources and work load is essential in order to adapt the difficulty of the intervention accordingly. In this context, we apply an analytical method and provide empirical data to determine the zone of proximal development (ZPD) as a measure of a subject's cognitive resources and the instructional efficacy of NFB. This approach is based on a reconsideration of item-response theory (IRT) and cognitive load theory for instructional design, and combines them with the CA curve to provide a measure of BCI performance.
目前,人们正在多种神经和神经精神疾病中研究使用脑机接口(BCI)进行神经反馈(NFB)训练,目的是减轻特定疾病的症状。为此,人们探索了一系列分类算法来识别不同的脑状态。这些神经状态,例如自我调节的脑活动与休息状态,通过设置阈值参数来区分。已经引入了诸如最大分类准确率(CA)等指标来评估这些算法的性能。有趣的是,恰恰是这些指标经常被用来评估受试者进行脑自我调节的能力。这令人惊讶,因为区分脑状态的工具改进目标与为进行脑自我调节的受试者优化NFB的目标是不同的。对于后者,了解心理资源和工作量对于相应地调整干预难度至关重要。在此背景下,我们应用一种分析方法并提供实证数据,以确定最近发展区(ZPD),作为衡量受试者认知资源和NFB教学效果的指标。这种方法基于对教学设计的项目反应理论(IRT)和认知负荷理论的重新思考,并将它们与CA曲线相结合,以提供BCI性能的一种衡量方法。