Relations among daily symptoms of depression.

IF 3.3 2区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Meghan E Quinn, Mary E Kleinman, John P Standring, Qimin Liu
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Abstract

Research has often treated depression as a unitary construct, relying on severity scores or diagnostic thresholds; however, recent studies emphasize that depression is a heterogeneous disorder characterized by dynamic symptom interactions. We aimed to identify unique relations among depressive symptoms when examined longitudinally. We used a 28-day daily diary design in young adults (N = 363). Three symptom networks, estimated from Bayesian structural equation modelling, identified key symptoms that (1) predicted other symptoms within individuals over time (within-subject temporal), (2) co-occurred within the same day (within-subject contemporaneous) and (3) clustered across individuals (between-subject). Results revealed that (1) at the within-subject level, higher levels of sleep disturbance, sad mood, and concentration difficulties predicted higher levels of multiple symptoms the following day, (2) at the within-subject level, sad mood, anhedonia, and fatigue tended to co-occur with many other symptoms and (3) at the between-subject level, individuals with higher levels of anhedonia, anxiety and concentration difficulties tended to experience a broader range of depressive symptoms. These findings underscore the complexity of depressive symptom interactions and highlight potential ways in which depression may manifest. Future research should explore the identified relations to clarify causal relations among symptoms as well as trait-level vulnerability to symptoms.

抑郁症日常症状之间的关系。
研究通常将抑郁症视为一种单一的结构,依赖于严重程度评分或诊断阈值;然而,最近的研究强调抑郁症是一种异质性疾病,其特征是动态的症状相互作用。我们的目的是在纵向检查时确定抑郁症状之间的独特关系。我们在年轻人(N = 363)中使用了28天的每日日记设计。从贝叶斯结构方程模型估计的三个症状网络确定了关键症状(1)随着时间的推移预测个体内的其他症状(受试者内时间),(2)在同一天内共同发生(受试者内同期),(3)在个体间聚集(受试者之间)。结果显示:(1)在受试者内水平,较高水平的睡眠障碍、悲伤情绪和注意力集中困难预示着第二天较高水平的多种症状;(2)在受试者内水平,悲伤情绪、快感缺乏和疲劳倾向于与许多其他症状同时发生;(3)在受试者间水平,较高水平的快感缺乏、焦虑和注意力集中困难倾向于经历更广泛的抑郁症状。这些发现强调了抑郁症症状相互作用的复杂性,并强调了抑郁症可能表现的潜在方式。未来的研究应进一步探索已识别的关系,以阐明症状之间的因果关系以及特质层面的症状易感性。
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来源期刊
British journal of psychology
British journal of psychology PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
7.60
自引率
2.50%
发文量
67
期刊介绍: The British Journal of Psychology publishes original research on all aspects of general psychology including cognition; health and clinical psychology; developmental, social and occupational psychology. For information on specific requirements, please view Notes for Contributors. We attract a large number of international submissions each year which make major contributions across the range of psychology.
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