整合非侵入性神经成像和计算机日志数据,以提高对认知过程的理解

Leah Friedman, Ruixue Liu, Erin Walker, E. Solovey
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引用次数: 1

摘要

随着非侵入性神经成像技术变得越来越便宜和便携,我们有能力在各种计算机活动期间监测大脑活动。这提供了一个将大脑数据与计算机日志数据相结合以开发认知过程模型的机会。这些模型可用于持续评估个体不断变化的认知状态,并开发适应性人机界面。作为这个方向的一步,我们在持续注意反应任务(SART)范式中使用功能近红外光谱(fNIRS)进行了一项研究,该研究已在先前的工作中用于引发走神和探索反应抑制。这样做的目的是确定fNIRS数据是否可以用作任务错误的预测器。这将对在更现实的任务中检测类似的认知过程产生影响,比如使用个人学习环境。此外,本研究旨在通过将客观行为数据和主观自我报告与与大脑默认模式网络(DMN)相关的内侧前额叶皮层(mPFC)的活动相关联来检验个体差异。我们观察到在任务错误之前和正确反应之前,mPFC有显著的差异。这些差异在那些在SART任务中表现不佳的人和那些报告嗜睡的人中尤为明显。与之前的工作一致,这些发现表明了在最需要注意力转移的个体中发现和纠正注意力转移的机会。
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Integrating non-invasive neuroimaging and computer log data to improve understanding of cognitive processes
As non-invasive neuroimaging techniques become less expensive and more portable, we have the capability to monitor brain activity during various computer activities. This provides an opportunity to integrate brain data with computer log data to develop models of cognitive processes. These models can be used to continually assess an individual's changing cognitive state and develop adaptive human-computer interfaces. As a step in this direction, we have conducted a study using functional near-infrared spectroscopy (fNIRS) during the Sustained Attention to Response Task (SART) paradigm, which has been used in prior work to elicit mind wandering and to explore response inhibition. The goal with this is to determine whether fNIRS data can be used as a predictor of errors on the task. This would have implications for detecting similar cognitive processes in more realistic tasks, such as using a personal learning environment. Additionally, this study aims to test individual differences by correlating objective behavioral data and subjective self reports with activity in the medial prefrontal cortex (mPFC), associated with the brain's default mode network (DMN). We observed significant differences in the mPFC between periods prior to task error and periods prior to a correct response. These differences were particularly apparent amongst those individuals who performed poorly on the SART task and those who reported drowsiness. In line with previous work, these findings indicate an opportunity to detect and correct attentional shifts in individuals who need it most.
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