Jiménez-Mijangos Laura P, Rodríguez-Arce Jorge, Martínez-Méndez Rigoberto, Reyes-Lagos José Javier
Facultad de Ingeniería, Universidad Autónoma del Estado de México, Avenida Universidad, Toluca, 50100 Estado de México México.
Facultad de Medicina, Universidad Autónoma del Estado de México, Paseo Tollocan, Toluca, 50180 Estado de México México.
Educ Inf Technol (Dordr). 2023;28(4):3637-3666. doi: 10.1007/s10639-022-11324-w. Epub 2022 Sep 28.
In recent years, stress and anxiety have been identified as two of the leading causes of academic underachievement and dropout. However, there is little work on the detection of stress and anxiety in academic settings and/or its impact on the performance of undergraduate students. Moreover, there is a gap in the literature in terms of identifying any computing, information technologies, or technological platforms that help educational institutions to identify students with mental health problems. This paper aims to systematically review the literature to identify the advances, limitations, challenges, and possible lines of research for detecting academic stress and anxiety in the classroom. Forty-four recent articles on the topic of detecting stress and anxiety in academic settings were analyzed. The results show that the main tools used for detecting anxiety and stress are psychological instruments such as self-questionnaires. The second most used method is acquiring and analyzing biological signals and biomarkers using commercial measurement instruments. Data analysis is mainly performed using descriptive statistical tools and pattern recognition techniques. Specifically, physiological signals are combined with classification algorithms. The results of this method for detecting anxiety and academic stress in students are encouraging. Using physiological signals reduces some of the limitations of psychological instruments, such as response time and self-report bias. Finally, the main challenge in the detection of academic anxiety and stress is to bring detection systems into the classroom. Doing so, requires the use of non-invasive sensors and wearable systems to reduce the intrinsic stress caused by instrumentation.
近年来,压力和焦虑已被确认为学业成绩不佳和辍学的两大主要原因。然而,在学术环境中检测压力和焦虑及其对本科生表现的影响方面,相关研究较少。此外,在识别有助于教育机构识别有心理健康问题学生的任何计算、信息技术或技术平台方面,文献中存在空白。本文旨在系统地回顾文献,以确定在课堂上检测学业压力和焦虑的进展、局限性、挑战以及可能的研究方向。分析了44篇近期关于在学术环境中检测压力和焦虑主题的文章。结果表明,用于检测焦虑和压力的主要工具是心理测量工具,如自我问卷。第二常用的方法是使用商业测量仪器获取和分析生物信号及生物标志物。数据分析主要使用描述性统计工具和模式识别技术。具体而言,生理信号与分类算法相结合。这种检测学生焦虑和学业压力的方法结果令人鼓舞。使用生理信号减少了心理测量工具的一些局限性,如反应时间和自我报告偏差。最后,检测学业焦虑和压力的主要挑战是将检测系统引入课堂。这样做需要使用非侵入性传感器和可穿戴系统,以减少仪器带来的内在压力。