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基于模拟的青少年抑郁和焦虑症状干预靶点的网络分析。

A simulation-based network analysis of intervention targets for adolescent depressive and anxiety symptoms.

机构信息

CAS Key Laboratory of Mental Health, Institute of Psychology, Chinese Academy of Sciences, 16 Lincui Road, Chaoyang District, Beijing 100101, China; Department of Psychology, University of Chinese Academy of Sciences, Beijing 100049, China.

CAS Key Laboratory of Mental Health, Institute of Psychology, Chinese Academy of Sciences, 16 Lincui Road, Chaoyang District, Beijing 100101, China.

出版信息

Asian J Psychiatr. 2024 Sep;99:104152. doi: 10.1016/j.ajp.2024.104152. Epub 2024 Jul 11.

Abstract

Although previous research has well explored central and bridge symptoms of mental health problems, little examined whether these symptoms can serve as effective targets for intervention practices. Based on the Ising model, this study constructed a network structure of depressive and anxiety symptoms. The NodeIdentifyR algorithm (NIRA) was used to simulate interventions within this network, examining the effects of alleviating or aggravating specific symptoms on the network's sum scores. In this study, a total of 15,569 participants were recruited from China (50.87 % females, M = 13.44; SD = 0.97). The Ising model demonstrated that "sad mood" had the highest expected influence, and "irritability" had the highest bridge expected influence. Alleviating interventions suggested that decreasing the symptom value of "nervousness" resulted in the greatest projected reduction in network symptom activation, which may be a potential target symptom for treatment. Aggravating interventions indicated that elevating the symptom value of "sad mood" had the most projected increase in network activation, which may be a potential target for prevention. Additionally, network structure indices (e.g., central or bridge symptoms) need to be interpreted with more caution as intervention targets, since they may not be exactly the same. These findings enriched the comprehension of the depressive and anxiety network in Chinese adolescents, offering valuable insights for designing effective interventions.

摘要

虽然先前的研究已经很好地探讨了心理健康问题的中心和桥梁症状,但很少有研究检查这些症状是否可以作为干预实践的有效目标。本研究基于伊辛模型构建了抑郁和焦虑症状的网络结构。使用 NodeIdentifyR 算法(NIRA)模拟网络内的干预措施,检查减轻或加重特定症状对网络总分的影响。在这项研究中,共从中国招募了 15569 名参与者(50.87%为女性,M=13.44;SD=0.97)。伊辛模型表明,“悲伤情绪”具有最高的预期影响,“易怒”具有最高的桥梁预期影响。减轻干预表明,降低“紧张”症状值会导致网络症状激活的最大预期降低,这可能是治疗的潜在目标症状。加重干预表明,提高“悲伤情绪”的症状值会导致网络激活的最大预期增加,这可能是预防的潜在目标。此外,作为干预目标,网络结构指数(如中心或桥梁症状)需要更谨慎地解释,因为它们可能不完全相同。这些发现丰富了对中国青少年抑郁和焦虑网络的理解,为设计有效的干预措施提供了有价值的见解。

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