Background: Blended learning, which comprises a combination of online and classroom-based activities, in nursing education can cause significant academic stress and depression symptoms among students. However, self-esteem may mediate the relationship between academic self-efficacy and depression symptoms. Studies of the relationship between academic self-efficacy, self-esteem, and depression symptoms among nursing students participating in blended learning are limited.
Objectives: To examine the determinants of depression symptoms and the mediating effect of self-esteem on the relationship between academic self-efficacy and depression symptoms among nursing students who participate in blended learning.
Design: Cross-sectional study using convenience sampling.
Settings: Ten universities across five provinces and two major Indonesian islands.
Participants: A total of 534 undergraduate nursing students with a mean age of 20.30 years (standard deviation, ±1.36 years).
Methods: An online survey was conducted between April and August 2022 to collect data from 10 universities applying blended learning. The study instruments included the General Self-Efficacy Scale, Rosenberg Self-Esteem Scale, and a 9-item Patient Health Questionnaire. Data were analysed by hierarchical linear regression using PROCESS macro version 4.1.
Results: Of the 534 participants, 213 (39.14 %) experienced moderate-to-severe depression symptoms. Two variables, online learning difficulties (β = 0.10; p = .012) and self-esteem (β = -0.40; p < .001), were significant determinants of depression symptoms. Self-esteem mediated the relationship between academic self-efficacy and depression symptoms.
Conclusions: It is necessary to understand the online learning difficulties experienced by blended learning students and improve their self-esteem by maximising academic self-efficacy to prevent depression symptoms.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10687279 | PMC |
http://dx.doi.org/10.1016/j.heliyon.2023.e22526 | DOI Listing |
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