Xie Hui, Yang Huiting, Zhang Pengyuan, Dong Zexiao, He Jiangshan, Jiang Mingzhe, Wang Lin, Yuan Zhen, Chen Xueli
Center for Biomedical-Photonics and Molecular Imaging, Xi'an Key Laboratory of Intelligent Sensing and Regulation of Trans-Scale Life Information, School of Life Science and Technology, Xidian University, Xi'an, Shaanxi 710126, China.
Engineering Research Center of Molecular and Neuro Imaging, Ministry of Education, Xi'an, Shaanxi 710126, China.
Biomed Opt Express. 2024 Feb 8;15(3):1486-1499. doi: 10.1364/BOE.516174. eCollection 2024 Mar 1.
Studying brain activity during online learning will help to improve research on brain function based on real online learning situations, and will also promote the scientific evaluation of online education. Existing research focuses on enhancing learning effects and evaluating the learning process associated with online learning from an attentional perspective. We aimed to comparatively analyze the differences in prefrontal cortex (PFC) activity during resting, studying, and question-answering states in online learning and to establish a classification model of the learning state that would be useful for the evaluation of online learning. Nineteen university students performed experiments using functional near-infrared spectroscopy (fNIRS) to monitor the prefrontal lobes. The resting time at the start of the experiment was the resting state, watching 13 videos was the learning state, and answering questions after the video was the answering state. Differences in student activity between these three states were analyzed using a general linear model, 1s fNIRS data clips, and features, including averages from the three states, were classified using machine learning classification models such as support vector machines and k-nearest neighbor. The results show that the resting state is more active than learning in the dorsolateral prefrontal cortex, while answering questions is the most active of the three states in the entire PFC, and k-nearest neighbor achieves 98.5% classification accuracy for 1s fNIRS data. The results clarify the differences in PFC activity between resting, learning, and question-answering states in online learning scenarios and support the feasibility of developing an online learning assessment system using fNIRS and machine learning techniques.
研究在线学习过程中的大脑活动将有助于基于真实的在线学习情境改进对大脑功能的研究,也将促进对在线教育的科学评估。现有研究主要从注意力的角度关注提高学习效果以及评估与在线学习相关的学习过程。我们旨在比较分析在线学习中静息、学习和问答状态下前额叶皮层(PFC)活动的差异,并建立一个有助于评估在线学习的学习状态分类模型。19名大学生使用功能近红外光谱技术(fNIRS)进行实验以监测前额叶。实验开始时的静息时间为静息状态,观看13个视频为学习状态,视频后回答问题为问答状态。使用一般线性模型分析这三种状态下学生活动的差异,使用支持向量机和k近邻等机器学习分类模型对1秒fNIRS数据片段以及包括三种状态平均值在内的特征进行分类。结果表明,静息状态在背外侧前额叶皮层比学习状态更活跃,而问答状态在整个PFC中是三种状态中最活跃的,并且k近邻对1秒fNIRS数据的分类准确率达到98.5%。这些结果阐明了在线学习场景中静息、学习和问答状态下PFC活动的差异,并支持使用fNIRS和机器学习技术开发在线学习评估系统的可行性。