| Literature DB >> 25762908 |
Robert Bauer1, Alireza Gharabaghi1.
Abstract
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.Entities:
Keywords: brain-computer interface; cognitive load theory; instructional design; neurofeedback; workload; zone of proximal development
Year: 2015 PMID: 25762908 PMCID: PMC4329795 DOI: 10.3389/fnbeh.2015.00021
Source DB: PubMed Journal: Front Behav Neurosci ISSN: 1662-5153 Impact factor: 3.558
Figure 1It shows how sensorimotor beta power values are transformed into positive rates by threshold. Left subplots show time course of sensorimotor power in black and different threshold levels in red for subject #1 (A) and subject #2 (C). The respective rates of false and true positives for the first (B) and second subject (D) show how rates decrease as the threshold increases.
Figure 2It shows the numerical results with true positive rate (TPR) (A) and false positive rate (FPR) (B) for both subjects on the basis of the average across trials.
Figure 3It illustrates the concept of ZPD. (A) shows the dependance of the location of the ZPD from the absolute difficulty and the absolute ability. The ZPD width is based on the between the true and false positive rate. The blue line indicates the success rate of the task when performed without help (true positive rate) and the red line indicates the success rate due to help (false positive rate). The dotted black line indicates the equality of difficulty and ability. The area of ZPD is shown in gray. (B) shows the ZPD based on FPR and TPR over different thresholds for the first subject.
Figure 4It visualizes different shapes of ZPD. In the first two models (A, B), the discrimination is different despite the distance between the two conditions being equal, resulting in ZPDs with equal areas. (A) shows success rates for a peaky but narrow ZPD based on a two-parametric model with equal but high discrimination values for both positive functions. (B) shows success rates for a broad but flat ZPD based on a two-parametric model with equal but low discrimination values. (C) shows success rates for a ZPD with a break-point based on a two-parametric model with unequal discrimination values.