Using a longitudinal network structure to subgroup depressive symptoms among adolescents

Author:

Liang Sugai,Huang Zejun,Wang Yiquan,Wu Yue,Chen Zhiyu,Zhang Yamin,Guo Wanjun,Zhao Zhenqing,Ford Sabrina D.,Palaniyappan Lena,Li Tao

Abstract

Abstract Background Network modeling has been proposed as an effective approach to examine complex associations among antecedents, mediators and symptoms. This study aimed to investigate whether the severity of depressive symptoms affects the multivariate relationships among symptoms and mediating factors over a 2-year longitudinal follow-up. Methods We recruited a school-based cohort of 1480 primary and secondary school students over four semesters from January 2020 to December 2021. The participants (n = 1145) were assessed at four time points (ages 10–13 years old at baseline). Based on a cut-off score of 5 on the 9-item Patient Health Questionnaire at each time point, the participants were categorized into the non-depressive symptom (NDS) and depressive symptom (DS) groups. We conducted network analysis to investigate the symptom-to-symptom influences in these two groups over time. Results The global network metrics did not differ statistically between the NDS and DS groups at four time points. However, network connection strength varied with symptom severity. The edge weights between learning anxiety and social anxiety were prominently in the NDS group over time. The central factors for NDS and DS were oversensitivity and impulsivity (3 out of 4 time points), respectively. Moreover, both node strength and closeness were stable over time in both groups. Conclusions Our study suggests that interrelationships among symptoms and contributing factors are generally stable in adolescents, but a higher severity of depressive symptoms may lead to increased stability in these relationships.

Funder

Leading Healthcare Talents of Zhejiang Province

Science & Technology Development Project of Hangzhou

Monique H. Bourgeois Chair in Developmental Disorders and Graham Boeckh Foundation

National Natural Science Foundation of China

China Brain Project

Key R & D Program of Zhejiang

Project for Hangzhou Medical Disciplines of Excellence & Key Project for Hangzhou Medical Disciplines

Publisher

Springer Science and Business Media LLC

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