焦虑
萧条(经济学)
精神科
心理学
疾病
透视图(图形)
临床心理学
医学
计算机科学
宏观经济学
病理
人工智能
经济
作者
Courtney Beard,Alexander J. Millner,Marie Forgeard,Eiko I. Fried,Kean J. Hsu,Michael T. Treadway,Calista V. Leonard,Sarah J. Kertz,Þröstur Björgvinsson
标识
DOI:10.1017/s0033291716002300
摘要
Background Researchers have studied psychological disorders extensively from a common cause perspective, in which symptoms are treated as independent indicators of an underlying disease. In contrast, the causal systems perspective seeks to understand the importance of individual symptoms and symptom-to-symptom relationships. In the current study, we used network analysis to examine the relationships between and among depression and anxiety symptoms from the causal systems perspective. Method We utilized data from a large psychiatric sample at admission and discharge from a partial hospital program ( N = 1029, mean treatment duration = 8 days). We investigated features of the depression/anxiety network including topology, network centrality, stability of the network at admission and discharge, as well as change in the network over the course of treatment. Results Individual symptoms of depression and anxiety were more related to other symptoms within each disorder than to symptoms between disorders. Sad mood and worry were among the most central symptoms in the network. The network structure was stable both at admission and between admission and discharge, although the overall strength of symptom relationships increased as symptom severity decreased over the course of treatment. Conclusions Examining depression and anxiety symptoms as dynamic systems may provide novel insights into the maintenance of these mental health problems.
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