Identifying differential trajectories and predictors for depressive symptoms in adolescents using latent class growth analysis: A population-based cohort study

Yen Chung Ho, Hung Yi Chiou, Luke Molloy, Kuan Chia Lin, Pi Chen Chang, Hsiu Ju Chang

研究成果: 雜誌貢獻文章同行評審

3 引文 斯高帕斯(Scopus)

摘要

Introduction: This study investigated the differential trajectories and relevant determinants of depressive symptoms in adolescents by following cohorts that included junior, senior, and vocational high school adolescents, over a 3-year period in Taiwan. Methods: Longitudinal data were obtained from 575 adolescents who participated in the Taiwan Adolescent to Adult Longitudinal Study. Data analysis included latent class growth with time-varying covariate, univariate, and multivariate analysis. Results: A three-class (“low but increasing trajectory,” “moderate and stable trajectory,” and “high but decreasing trajectory”) model fit the data of the cohort. Our findings indicated that 29%, 38%, and 33% of the adolescents were in the low but increasing, moderate and stable, and high but decreasing trajectories, respectively. After confounders were controlled for, bullying experiences were identified as a risk factor for depressive symptoms. The protective factors against depressive symptoms included resilience and peer and social support. Conclusions: The transitions between different educational stages critically influence the depressive symptoms of adolescents, and the adolescents follow different depressive trajectories, that have different etiology. Therefore, identifying adolescents at high risk for depression and designing student-centered intervention programs through individualized and multidimensional assessment of depressive symptoms are crucial for adolescents.
原文英語
頁(從 - 到)879-892
頁數14
期刊Journal of Adolescence
95
發行號5
DOIs
出版狀態接受/付印 - 2023

ASJC Scopus subject areas

  • 兒科、圍產兒和兒童健康
  • 社會心理學
  • 發展與教育心理學
  • 精神病學和心理健康

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