Ramos-Vera Cristian, García O'Diana Angel, Basauri Miguel Delgado, Calle Dennis Huánuco, Saintila Jacksaint
Research Area, Faculty of Health Sciences, Universidad César Vallejo, Lima, Peru.
Sociedad Peruana de Psicometría, Lima, Peru.
Front Psychiatry. 2023 Feb 22;14:1124257. doi: 10.3389/fpsyt.2023.1124257. eCollection 2023.
The COVID-19 pandemic and its subsequent health restrictions had an unprecedented impact on mental health, contributing to the emergence and reinforcement of various psychopathological symptoms. This complex interaction needs to be examined especially in a vulnerable population such as older adults.
In the present study we analyzed network structures of depressive symptoms, anxiety, and loneliness from the English Longitudinal Study of Aging COVID-19 Substudy over two waves (Months of June-July and November-December 2020).
For this purpose, we use measures of centrality (expected and bridge-expected influence) in addition to the Clique Percolation method to identify overlapping symptoms between communities. We also use directed networks to identify direct effects between variables at the longitudinal level.
UK adults aged >50 participated, Wave 1: 5,797 (54% female) and Wave 2: 6,512 (56% female). Cross-sectional findings indicated that difficulty relaxing, anxious mood, and excessive worry symptoms were the strongest and similar measures of centrality (Expected Influence) in both waves, while depressive mood was the one that allowed interconnection between all networks (bridge expected influence). On the other hand, sadness and difficulty sleeping were symptoms that reflected the highest comorbidity among all variables during the first and second waves, respectively. Finally, at the longitudinal level, we found a clear predictive effect in the direction of the nervousness symptom, which was reinforced by depressive symptoms (difficulties in enjoying life) and loneliness (feeling of being excluded or cut off from others).
Our findings suggest that depressive, anxious, and loneliness symptoms were dynamically reinforced as a function of pandemic context in older adults in the UK.
新冠疫情及其后续的健康限制措施对心理健康产生了前所未有的影响,促使各种精神病理症状的出现和强化。这种复杂的相互作用尤其需要在老年人等弱势群体中进行研究。
在本研究中,我们分析了来自英国老龄化纵向研究新冠疫情子研究两波数据(2020年6月至7月以及11月至12月)中抑郁症状、焦虑和孤独感的网络结构。
为此,我们除了使用团块渗流法来识别社区之间的重叠症状外,还采用了中心性度量(预期影响和桥接预期影响)。我们还使用有向网络来识别纵向层面变量之间的直接影响。
年龄大于50岁的英国成年人参与了研究,第一波:5797人(54%为女性),第二波:6512人(56%为女性)。横断面研究结果表明,放松困难、焦虑情绪和过度担忧症状在两波数据中都是最强且中心性度量(预期影响)相似的症状,而抑郁情绪是使所有网络相互连接的症状(桥接预期影响)。另一方面,悲伤和睡眠困难分别是第一波和第二波中所有变量间共病率最高的症状。最后,在纵向层面,我们发现紧张症状方向存在明显的预测效应,抑郁症状(享受生活困难)和孤独感(被排除或与他人隔绝的感觉)强化了这一效应。
我们的研究结果表明,在英国老年人中,抑郁、焦虑和孤独症状会随着疫情背景动态强化。