School of Social and Behavioral Sciences, Nanjing University, Nanjing, China.
Mental Health Education Center, Southeast University, Nanjing, China.
J Clin Psychol. 2024 Jun;80(6):1271-1285. doi: 10.1002/jclp.23663. Epub 2024 Feb 17.
The network analysis method emphasizes the interaction between individual symptoms to identify shared or bridging symptoms between depression and anxiety to understand comorbidity. However, the network analysis and community detection approach have limitations in identifying causal relationships among symptoms. This study aims to address this gap by applying Bayesian network (BN) analysis to investigate potential causal relationships.
Data were collected from a sample of newly enrolled college students. The network structure of depression and anxiety was estimated using the Patient Health Questionnaire-9 (PHQ-9) and the Generalized Anxiety Disorder (GAD-7) Scale measures, respectively. Shared symptoms between depression and anxiety were identified through network analysis and clique percolation (CP) method. The causal relationships among symptoms were estimated using BN.
The strongest bridge symptoms, as indicated by bridge strength, include sad mood (PHQ2), motor (PHQ8), suicide (PHQ9), restlessness (GAD5), and irritability (GAD6). These bridge symptoms formed a distinct community using the CP algorithm. Sad mood (PHQ2) played an activating role, influencing other symptoms. Meanwhile, restlessness (GAD5) played a mediating role with reciprocal influences on both anxiety and depression symptoms. Motor (PHQ8), suicide (PHQ9), and irritability (GAD6) assumed recipient positions.
BN analysis presents a valuable approach for investigating the complex interplay between symptoms in the context of comorbid depression and anxiety. It identifies two activating symptoms (i.e., sadness and worry), which serve to underscore the fundamental differences between these two disorders. Additionally, psychomotor symptoms and suicidal ideations are recognized as recipient roles, being influenced by other symptoms within the network.
网络分析方法强调个体症状之间的相互作用,以识别抑郁和焦虑之间的共享或连接症状,从而理解共病。然而,网络分析和社区检测方法在识别症状之间的因果关系方面存在局限性。本研究旨在通过应用贝叶斯网络(BN)分析来解决这一差距,以调查潜在的因果关系。
数据来自新入学的大学生样本。使用患者健康问卷-9(PHQ-9)和广泛性焦虑症(GAD-7)量表分别评估抑郁和焦虑的网络结构。通过网络分析和团块渗滤(CP)方法识别抑郁和焦虑之间的共享症状。使用 BN 估计症状之间的因果关系。
按桥接强度指示的最强桥接症状包括悲伤情绪(PHQ2)、运动(PHQ8)、自杀意念(PHQ9)、不安(GAD5)和易怒(GAD6)。这些桥接症状使用 CP 算法形成了一个独特的社区。悲伤情绪(PHQ2)起着激活作用,影响其他症状。同时,不安(GAD5)起着中介作用,对焦虑和抑郁症状都有相互影响。运动(PHQ8)、自杀意念(PHQ9)和易怒(GAD6)则处于接收位置。
BN 分析为研究共病抑郁和焦虑背景下症状之间的复杂相互作用提供了一种有价值的方法。它确定了两个激活症状(即悲伤和担忧),这突显了这两种疾病之间的基本区别。此外,精神运动症状和自杀意念被认为是接收角色,受到网络中其他症状的影响。