Faculty of Creative Industries, Vilnius Gediminas Technical University, 10221 Vilnius, Lithuania.
Institute of Psychology, Mykolas Romeris University, 08303 Vilnius, Lithuania.
Int J Environ Res Public Health. 2021 Aug 30;18(17):9158. doi: 10.3390/ijerph18179158.
Quarantines imposed due to COVID-19 have forced the rapid implementation of e-learning, but also increased the rates of anxiety, depression, and fatigue, which relate to dramatically diminished e-learning motivation. Thus, it was deemed significant to identify e-learning motivating factors related to mental health. Furthermore, because computer programming skills are among the core competencies that professionals are expected to possess in the era of rapid technology development, it was also considered important to identify the factors relating to computer programming learning. Thus, this study applied the Learning Motivating Factors Questionnaire, the Patient Health Questionnaire-9 (PHQ-9), the Generalized Anxiety Disorder Scale-7 (GAD-7), and the Multidimensional Fatigue Inventory-20 (MFI-20) instruments. The sample consisted of 444 e-learners, including 189 computer programming e-learners. The results revealed that higher scores of individual attitude and expectation, challenging goals, clear direction, social pressure, and competition significantly varied across depression categories. The scores of challenging goals, and social pressure and competition, significantly varied across anxiety categories. The scores of individual attitude and expectation, challenging goals, and social pressure and competition significantly varied across general fatigue categories. In the group of computer programming e-learners: challenging goals predicted decreased anxiety; clear direction and challenging goals predicted decreased depression; individual attitude and expectation predicted diminished general fatigue; and challenging goals and punishment predicted diminished mental fatigue. Challenging goals statistically significantly predicted lower mental fatigue, and mental fatigue statistically significantly predicted depression and anxiety in both sample groups.
由于 COVID-19 而实施的隔离措施迫使人们迅速实施电子学习,但也增加了焦虑、抑郁和疲劳的发生率,这与电子学习动机显著降低有关。因此,确定与心理健康相关的电子学习激励因素非常重要。此外,由于计算机编程技能是专业人士在快速发展的技术时代应具备的核心竞争力之一,因此确定与计算机编程学习相关的因素也很重要。因此,本研究应用了学习动机因素问卷、患者健康问卷-9(PHQ-9)、广泛性焦虑障碍量表-7(GAD-7)和多维疲劳量表-20(MFI-20)工具。样本包括 444 名电子学习者,其中 189 名为计算机编程电子学习者。结果表明,个体态度和期望、具有挑战性的目标、明确的方向、社会压力和竞争的得分在抑郁类别中差异显著。挑战性目标和社会压力和竞争的得分在焦虑类别中差异显著。个体态度和期望、具有挑战性的目标和社会压力和竞争的得分在一般疲劳类别中差异显著。在计算机编程电子学习者群体中:具有挑战性的目标预测焦虑降低;明确的方向和具有挑战性的目标预测抑郁降低;个体态度和期望预测一般疲劳减轻;具有挑战性的目标和惩罚预测心理疲劳减轻。挑战性目标在统计学上显著预测心理疲劳降低,而心理疲劳在两个样本组中均在统计学上预测抑郁和焦虑。