Department of Behavioural Science and Health, University College London, London, United Kingdom.
PLoS Med. 2023 Apr 18;20(4):e1004144. doi: 10.1371/journal.pmed.1004144. eCollection 2023 Apr.
There has been much research into the mental health impact of the Coronavirus Disease 2019 (COVID-19) pandemic and how it is related to time-invariant individual characteristics. However, there is still a lack of research showing long-term trajectories of mental health across different stages of the pandemic. And little is known regarding the longitudinal association of time-varying factors with mental health outcomes. This study aimed to provide a longitudinal profile of how mental health in adults changed across different stages of the COVID-19 pandemic and to examine their longitudinal associations with time-varying contextual (e.g., COVID-19 policy response and pandemic intensity) and individual level factors.
This study used data from a large panel study of over 57,000 adults living in England, who were followed up regularly for 2 years between March 2020 and April 2022. Mental health outcomes were depressive and anxiety symptoms. Depressive symptoms were assessed by the Patient Health Questionnaire (PHQ-9) and anxiety symptoms by the Generalized Anxiety Disorder assessment (GAD-7). Entropy balancing weights were applied to restore sample representativeness. After weighting, approximately 50% of participants were female, 14% from ethnic minority backgrounds, with a mean age of 48 years. Descriptive analyses showed that mental health changes were largely in line with changes in COVID-19 policy response and pandemic intensity. Further, data were analysed using fixed-effects (FE) models, which controlled for all time-invariant confounders (observed or not). FE models were fitted separately across 3 stages of the COVID-19 pandemic, including the first national lockdown (21/03/2020-23/08/2020), second and third national lockdowns (21/09/2020-11/04/2021), and "freedom" period (12/04/2021-14/11/2021). We found that more stringent policy response (measured by stringency index) was associated with increased depressive symptoms, in particular, during lockdown periods (β = 0.23, 95% confidence interval (CI) = [0.18 to 0.28], p < 0.001; β = 0.30, 95% CI = [0.21 to 0.39], p < 0.001; β = 0.04, 95% CI = [-0.03 to 0.12], p = 0.262). Higher COVID-19 deaths were also associated with increased depressive symptoms, but this association weakened over time (β = 0.29, 95% CI = [0.25 to 0.32], p < 0.001; β = 0.09, 95% CI = [0.05 to 0.13], p < 0.001; β = -0.06, 95% CI = [-0.30 to 0.19], p = 0.655). Similar results were also found for anxiety symptoms, for example, stringency index (β = 0.17, 95% CI = [0.12 to 0.21], p < 0.001; β = 0.13, 95% CI = [0.06 to 0.21], p = 0.001; β = 0.10, 95% CI = [0.03 to 0.17], p = 0.005), COVID-19 deaths (β = 0.07, 95% CI = [0.04 to 0.10], p < 0.001; β = 0.04, 95% CI = [0.00 to 0.07], p = 0.03; β = 0.16, 95% CI = [-0.08 to 0.39], p = 0.192). Finally, there was also evidence for the longitudinal association of mental health with individual level factors, including confidence in government/healthcare/essentials, COVID-19 knowledge, COVID-19 stress, COVID-19 infection, and social support. However, it is worth noting that the magnitudes of these longitudinal associations were generally small. The main limitation of the study was its non-probability sample design.
Our results provided empirical evidence on how changes in contextual and individual level factors were related to changes in depressive and anxiety symptoms. While some factors (e.g., confidence in healthcare, social support) clearly acted as consistent predictors of depressive and/or anxiety symptoms, other factors (e.g., stringency index, COVID-19 knowledge) were dependent on the specific situations occurring within society. This could provide important implications for policy making and for a better understanding of mental health of the general public during a national or global health crisis.
已有大量研究探讨了 2019 年冠状病毒病(COVID-19)大流行对心理健康的影响,以及它与时间不变的个体特征之间的关系。然而,仍缺乏研究表明在大流行的不同阶段心理健康的长期轨迹。而且,对于时间变化因素与心理健康结果的纵向关联知之甚少。本研究旨在提供一个关于成年人心理健康如何在 COVID-19 大流行的不同阶段发生变化的纵向概况,并检查其与时间变化的情境(例如 COVID-19 政策反应和大流行强度)和个体水平因素的纵向关联。
本研究使用了一项针对居住在英格兰的 57000 多名成年人的大型面板研究的数据,这些成年人在 2020 年 3 月至 2022 年 4 月期间定期随访了 2 年。心理健康结果为抑郁和焦虑症状。抑郁症状由患者健康问卷(PHQ-9)评估,焦虑症状由广泛性焦虑症评估(GAD-7)评估。应用熵平衡权重来恢复样本代表性。在加权后,大约 50%的参与者为女性,14%来自少数民族背景,平均年龄为 48 岁。描述性分析表明,心理健康变化与 COVID-19 政策反应和大流行强度的变化基本一致。此外,还使用固定效应(FE)模型对数据进行了分析,该模型控制了所有时间不变的混杂因素(观察到的或未观察到的)。FE 模型分别在 COVID-19 大流行的三个阶段进行拟合,包括全国第一次封锁(2020 年 3 月 21 日至 2020 年 8 月 23 日)、第二次和第三次全国封锁(2020 年 9 月 21 日至 2021 年 11 月 4 日)和“自由”期(2021 年 12 月 12 日至 2021 年 11 月 14 日)。我们发现,更严格的政策反应(以严格指数衡量)与抑郁症状增加有关,特别是在封锁期间(β=0.23,95%置信区间[0.18 至 0.28],p<0.001;β=0.30,95%置信区间[0.21 至 0.39],p<0.001;β=0.04,95%置信区间[-0.03 至 0.12],p=0.262)。较高的 COVID-19 死亡人数也与抑郁症状增加有关,但这种关联随着时间的推移而减弱(β=0.29,95%置信区间[0.25 至 0.32],p<0.001;β=0.09,95%置信区间[0.05 至 0.13],p<0.001;β=-0.06,95%置信区间[-0.30 至 0.19],p=0.655)。类似的结果也适用于焦虑症状,例如严格指数(β=0.17,95%置信区间[0.12 至 0.21],p<0.001;β=0.13,95%置信区间[0.06 至 0.21],p=0.001;β=0.10,95%置信区间[0.03 至 0.17],p=0.005),COVID-19 死亡人数(β=0.07,95%置信区间[0.04 至 0.10],p<0.001;β=0.04,95%置信区间[0.00 至 0.07],p=0.03;β=0.16,95%置信区间[-0.08 至 0.39],p=0.192)。最后,也有证据表明心理健康与个体水平因素之间存在纵向关联,包括对政府/医疗保健/必需品的信心、COVID-19 知识、COVID-19 压力、COVID-19 感染和社会支持。然而,值得注意的是,这些纵向关联的幅度通常较小。研究的主要局限性是其非概率样本设计。
我们的研究结果提供了关于情境和个体水平因素变化如何与抑郁和焦虑症状变化相关的经验证据。虽然一些因素(例如对医疗保健、社会支持的信心)显然是抑郁和/或焦虑症状的一致预测因素,但其他因素(例如严格指数、COVID-19 知识)取决于社会中发生的具体情况。这可能为制定政策和更好地了解国家或全球卫生危机期间公众的心理健康提供重要启示。