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Predicting decision accuracy and certainty in complex brain-machine interactions

机译:预测复杂脑机交互中的决策准确性和确定性

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A promising application of brain machine interfaces (BMIs) is predicting user cognitive state, particularly in complex and demanding scenarios, so that automation can dynamically and adaptively adjust task parameters to optimize joint human-machine performance. In this paper we analyze neural, physiological and behavioral data recorded during a complex two-person “crew station” task and investigate whether these measures provide information for inferring user decision state. Specifically, we investigate how measures of EEG, pupil dilation, heart rate and response time, can be fused to infer decision confidence and accuracy in two side-tasks occurring throughout a three hour experimental session. One side-task is an auditory task, the other a visual task, both occurring within the context of the crew station scenario (auditory alert and a visual satellite map N-back task). We find that the best prediction performance always fuses EEG and pupil dilation measures, with results yielding between 70%-75% accuracy with respect to whether the subject(s) will skip making the decision (i.e. have high uncertainty) or whether he/she makes an error. Interestingly, the results suggest a possible mechanistic explanation for the utility of the fused measures, specifically the interaction between the locus coeruleus (LC), whose activity is linked to arousal state and can be inferred from pupil dilation, and the anterior cingulate (ACC), which has been linked to decision formation and monitoring and whose activity is typically measured via EEG. In general, our results demonstrate the potential in using fused neuro/physio measures to infer and track human operator decision uncertainty during demanding complex tasks, possibly enabling BMIs to eventually be employed as “cognitive orthotics” for improving man-machine interaction and performance.
机译:脑机接口(BMI)的一个有前途的应用是预测用户的认知状态,尤其是在复杂和苛刻的情况下,以便自动化可以动态地自适应地调整任务参数以优化联合人机性能。在本文中,我们分析了在一个复杂的两人“船员站”任务期间记录的神经,生理和行为数据,并研究了这些措施是否为推断用户决策状态提供信息。具体来说,我们研究了如何融合脑电图,瞳孔扩张,心律和反应时间等指标,以推断整个三个小时的实验过程中发生的两个副任务的决策信心和准确性。一个辅助任务是一个听觉任务,另一个是视觉任务,都发生在乘员站场景的背景下(听觉警报和可视卫星地图N向后任务)。我们发现,最佳的预测性能总是将脑电图和瞳孔扩张措施融合在一起,关于受试者是否会跳过决策(即不确定性较高)或他/她的结果,结果得出的准确度在70%-75%之间犯了一个错误。有趣的是,这些结果为融合措施的实用性提供了一种可能的机制解释,特别是蓝斑轨迹(LC)与前扣带回(ACC)之间的相互作用,其活动与唤醒状态有关,可以通过瞳孔扩张来推断。 ,它已与决策制定和监控相关联,其活动通常通过EEG进行衡量。总的来说,我们的结果表明,在要求苛刻的复杂任务期间,使用融合的神经/生理措施来推断和跟踪操作员决策不确定性的潜力,可能使BMI最终被用作“认知矫形器”,以改善人机交互和性能。

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