Predictive machine learning model for mental health issues in higher education students due to COVID-19 using HADS assessment

R. Krishnan, Shantha Kumari, Ali Al Badi, S. Jeba, M. James
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Abstract

PurposeStudents pursuing different professional courses at the higher education level during 2021–2022 saw the first-time occurrence of a pandemic in the form of coronavirus disease 2019 (COVID-19), and their mental health was affected. Many works are available in the literature to assess mental health severity. However, it is necessary to identify the affected students early for effective treatment.Design/methodology/approachPredictive analytics, a part of machine learning (ML), helps with early identification based on mental health severity levels to aid clinical psychologists. As a case study, engineering and medical course students were comparatively analysed in this work as they have rich course content and a stricter evaluation process than other streams. The methodology includes an online survey that obtains demographic details, academic qualifications, family details, etc. and anxiety and depression questions using the Hospital Anxiety and Depression Scale (HADS). The responses acquired through social media networks are analysed using ML algorithms – support vector machines (SVMs) (robust handling of health information) and J48 decision tree (DT) (interpretability/comprehensibility). Also, random forest is used to identify the predictors for anxiety and depression.FindingsThe results show that the support vector classifier produces outperforming results with classification accuracy of 100%, 1.0 precision and 1.0 recall, followed by the J48 DT classifier with 96%. It was found that medical students are affected by anxiety and depression marginally more when compared with engineering students.Research limitations/implicationsThe entire work is dependent on the social media-displayed online questionnaire, and the participants were not met in person. This indicates that the response rate could not be evaluated appropriately. Due to the medical restrictions imposed by COVID-19, which remain in effect in 2022, this is the only method found to collect primary data from college students. Additionally, students self-selected themselves to participate in this survey, which raises the possibility of selection bias.Practical implicationsThe responses acquired through social media networks are analysed using ML algorithms. This will be a big support for understanding the mental issues of the students due to COVID-19 and can taking appropriate actions to rectify them. This will improve the quality of the learning process in higher education in Oman.Social implicationsFurthermore, this study aims to provide recommendations for mental health screening as a regular practice in educational institutions to identify undetected students.Originality/valueComparing the mental health issues of two professional course students is the novelty of this work. This is needed because both studies require practical learning, long hours of work, etc.
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利用 HADS 评估建立 COVID-19 导致的高校学生心理健康问题的机器学习预测模型
目的2021-2022年期间,在高等院校攻读不同专业课程的学生首次经历了2019年冠状病毒病(COVID-19)这一流行病,他们的心理健康受到了影响。文献中有许多评估心理健康严重程度的著作。然而,有必要及早识别受影响的学生,以便进行有效治疗。设计/方法/途径预测分析是机器学习(ML)的一部分,有助于根据心理健康严重程度进行早期识别,为临床心理学家提供帮助。本研究以工程学和医学课程的学生作为案例进行了比较分析,因为这两个专业的课程内容丰富,评估过程也比其他专业更为严格。分析方法包括在线调查,调查内容包括人口统计信息、学历、家庭情况等,以及使用医院焦虑抑郁量表(HADS)的焦虑和抑郁问题。通过社交媒体网络获得的回复将使用多智能算法--支持向量机(SVM)(健康信息的稳健处理)和 J48 决策树(DT)(可解释性/可理解性)进行分析。研究结果表明,支持向量分类器的分类准确率为 100%,精确度为 1.0,召回率为 1.0;其次是 J48 DT 分类器,准确率为 96%。研究的局限性/意义整个研究工作依赖于社交媒体上显示的在线问卷,而且参与者没有见面。这表明无法对回复率进行适当评估。由于 COVID-19 所规定的医疗限制(2022 年仍然有效),这是从大学生中收集原始数据的唯一方法。此外,学生们自行选择参与此次调查,这就产生了选择偏差的可能性。这将有助于了解 COVID-19 导致的学生心理问题,并采取适当措施加以纠正。社会影响此外,本研究还旨在为教育机构提供心理健康筛查建议,作为一种常规做法,以识别未被发现的学生。因为这两个专业都需要实际学习、长时间工作等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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