Department of Psychiatry, Yale University, New Haven, USA.
School of Behavioral Sciences, Tel Aviv-Yaffo Academic College, Tel Aviv-Yafo, Israel.
Res Child Adolesc Psychopathol. 2024 Oct;52(10):1621-1633. doi: 10.1007/s10802-024-01208-7. Epub 2024 Jun 26.
Adolescence is a developmental period in which social interactions are critical for mental health. While the onset of COVID-19 significantly disrupted adolescents' social environments and mental health, it remains unclear how adolescents have adapted to later stages of the pandemic. We harnessed a machine learning architecture of Long Short-Term Memory recurrent networks (LSTM) with gradient-based feature importance, to model the association among daily social interactions and depressive symptoms during three stages of the pandemic. A year before COVID-19, 148 adolescents reported social interactions and depressive symptoms, every day for 21 days. One hundred sixteen of these youths completed a 28-day diary after schools closed due to COVID-19. Seventy-nine of these youths and additional 116 new participants completed a 28-day diary approximately a year into the pandemic. Our results show that LSTM successfully predicted depressive symptoms from at least a week of social interactions for all three waves (r > .70). Our study shows the utility of using an analytic approach that can identify temporal and nonlinear pathways through which social interactions may confer risk for depression. Our unique analysis of the importance of input features enabled us to interpret the association between social interactions and depressive symptoms. Collectively, we observed a return to pre-pandemic patterns a year into the pandemic, with reduced gender and age differences during the pandemic closures. This pattern suggests that the system of social influences in adolescence was affected by COVID-19, and that this effect was attenuated in more chronic stages of the pandemic.
青春期是一个社交互动对心理健康至关重要的发展阶段。虽然 COVID-19 的爆发严重扰乱了青少年的社交环境和心理健康,但目前尚不清楚青少年如何适应疫情的后期阶段。我们利用长短期记忆递归网络(LSTM)的机器学习架构和基于梯度的特征重要性,来构建模型,以研究疫情三个阶段中日常社交互动与抑郁症状之间的关联。在 COVID-19 爆发前一年,148 名青少年每天报告社交互动和抑郁症状,持续 21 天。其中 116 名青少年在学校因 COVID-19 关闭后完成了 28 天的日记。其中 79 名青少年和另外 116 名新参与者在疫情爆发大约一年后完成了 28 天的日记。我们的研究结果表明,LSTM 成功地从所有三个阶段的至少一周社交互动中预测了抑郁症状(r>.70)。我们的研究表明,使用能够识别社交互动可能导致抑郁风险的时间和非线性途径的分析方法具有实用性。我们对输入特征重要性的独特分析使我们能够解释社交互动与抑郁症状之间的关联。总的来说,我们观察到在疫情爆发大约一年后,青少年的社交影响系统恢复到了疫情前的模式,在疫情关闭期间,性别和年龄差异有所减少。这种模式表明,COVID-19 影响了青春期的社交影响系统,并且这种影响在疫情的慢性阶段有所减弱。