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Associations between Depression, Anxiety, Fatigue, and Learning Motivating Factors in E‐Learning‐Based Computer Programming Education

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Date
2021
Author
Diržytė, Aistė
Vijaikis, Aivaras
Perminas, Aidas
Rimašiūtė-Knabikienė, Romualda
Metadata
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Abstract
Quarantines imposed due to COVID‐19 have forced the rapid implementation of e‐learn‐ ing, 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 devel‐ opment, 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 Mul‐ tidimensional 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 individ‐ ual attitude and expectation, challenging goals, clear direction, social pressure, and competition significantly varied across depression categories. The scores of challenging goals, and social pres‐ sure and competition, significantly varied across anxiety categories. The scores of individual atti‐ tude 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 de‐ pression; individual attitude and expectation predicted diminished general fatigue; and challenging goals and punishment predicted diminished mental fatigue. Challenging goals statistically signifi‐ cantly predicted lower mental fatigue, and mental fatigue statistically significantly predicted de‐ pression and anxiety in both sample groups.
Issue date (year)
2021
URI
https://etalpykla.vilniustech.lt/handle/123456789/112112
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  • Straipsniai Web of Science ir/ar Scopus referuojamuose leidiniuose / Articles in Web of Science and/or Scopus indexed sources [7946]

 

 

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