Helen Wills Neuroscience Institute, University of California, Berkeley, Berkeley, California, United States of America.
Department of Psychology, University of New Hampshire, Durham, New Hampshire, United States of America.
PLoS One. 2021 May 12;16(5):e0251490. doi: 10.1371/journal.pone.0251490. eCollection 2021.
Mind wandering is often characterized by attention oriented away from an external task towards our internal, self-generated thoughts. This universal phenomenon has been linked to numerous disruptive functional outcomes, including performance errors and negative affect. Despite its prevalence and impact, studies to date have yet to identify robust behavioral signatures, making unobtrusive, yet reliable detection of mind wandering a difficult but important task for future applications. Here we examined whether electrophysiological measures can be used in machine learning models to accurately predict mind wandering states. We recorded scalp EEG from participants as they performed an auditory target detection task and self-reported whether they were on task or mind wandering. We successfully classified attention states both within (person-dependent) and across (person-independent) individuals using event-related potential (ERP) measures. Non-linear and linear machine learning models detected mind wandering above-chance within subjects: support vector machine (AUC = 0.715) and logistic regression (AUC = 0.635). Importantly, these models also generalized across subjects: support vector machine (AUC = 0.613) and logistic regression (AUC = 0.609), suggesting we can reliably predict a given individual's attention state based on ERP patterns observed in the group. This study is the first to demonstrate that machine learning models can generalize to "never-seen-before" individuals using electrophysiological measures, highlighting their potential for real-time prediction of covert attention states.
走神通常表现为注意力从外部任务转移到我们内部的、自我产生的想法上。这种普遍现象与许多功能障碍有关,包括表现错误和负面情绪。尽管它很普遍,影响也很大,但迄今为止的研究尚未确定可靠的行为特征,因此,对于未来的应用来说,非侵入性但可靠地检测走神仍然是一项困难但重要的任务。在这里,我们研究了是否可以使用脑电图(EEG)测量来在机器学习模型中准确预测走神状态。我们在参与者执行听觉目标检测任务时记录了他们的头皮 EEG,并让他们自我报告自己是否专注于任务或走神。我们使用事件相关电位(ERP)测量成功地对注意状态进行了分类,无论是在个体内部(个体依赖)还是在个体之间(个体独立)。非线性和线性机器学习模型在个体内以超过随机的准确率检测到了走神:支持向量机(AUC = 0.715)和逻辑回归(AUC = 0.635)。重要的是,这些模型还可以跨个体泛化:支持向量机(AUC = 0.613)和逻辑回归(AUC = 0.609),这表明我们可以根据群体中观察到的 ERP 模式可靠地预测个体的注意状态。这项研究首次证明,使用脑电图测量,机器学习模型可以推广到“从未见过”的个体,突出了它们实时预测隐蔽注意力状态的潜力。