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躁狂残留症状也值得关注:双相情感障碍残留症状的症状网络分析

Manic Residual Symptoms Also Deserve Attention: A Symptom Network Analysis of Residual Symptoms in Bipolar Disorder.

作者信息

Zhao Yan, Zhang Yin, Zheng Sisi, Fang Meng, Huang Juan, Zhang Ling

机构信息

The National Clinical Research Center for Mental Disorders & Beijing Key Laboratory of Mental Disorders, Beijing Anding Hospital, Capital Medical University, Beijing, 100088, People's Republic of China.

Advanced Innovation Center for Human Brain Protection, Capital Medical University, Beijing, 100088, People's Republic of China.

出版信息

Neuropsychiatr Dis Treat. 2024 Jul 16;20:1397-1408. doi: 10.2147/NDT.S466090. eCollection 2024.

Abstract

BACKGROUND

Lots of patients with bipolar disorder (BD) continue to have residual symptoms after treatment in their remission, BD exhibits intricate characteristics and transformation patterns in its residual symptoms, residual symptoms of different polarities and degrees can mix with and transform to each other. There is a need for further investigation of BD as a comprehensive multivariate disease system. The current research lacks network analyses focusing on BD's residual and subsyndromal symptoms.

METHODS

242 patients were included with bipolar disorder in remission. We compared demographic data and differences in symptoms between populations with and without residual symptoms using -tests and chi-square tests, with FDR applied for multiple comparison correction. Logistic regression was used to identify influencing factors for residual symptoms. Symptom networks were compared by network analysis to analyze the relationships between different types of residual symptoms.

RESULTS

Depressive residual symptoms (N=111) were more common than manic residual symptoms (n=29) in the patients included. The comparison between two groups with and without residual symptoms shows no difference in demographic data and medical history information. The main influencing factors related to residual symptoms were time from diagnosis to first treatment (OR=0.88), the first(OR=1.51) and second (OR=17.1)factors of the Mood Disorder Questionnaire (MDQ), the Quick Inventory of Depressive Symptomatology Self-Report (QIDS)(OR=5.28), the psychological(OR=0.68) and environment (OR=1.53) subscale of the World Health Organization Quality of Life Short Form (WHOQOL-BREF). There was a significant difference in network structure between the groups with and without residual symptoms (network invariance difference=0.4, p =0.025). At the same time, there was no significant difference between the groups with and without depressive residual symptoms. However, the symptom network in patients with depressive residual symptoms is more loosely structured than in those without, with symptoms exhibiting weaker interconnections. When there is no depressive or manic residual symptom, it can still form a symptom network and cause an impact on social function.

CONCLUSION

This study underscores the complexity of bipolar disorder's residual symptoms. Although it primarily manifests as loosely structured depressive residual symptoms, manic residual symptoms should not be ignored. Future research should explore network-based interventions targeting specific symptom clusters or connections to improve residual symptom management and patient outcomes.

摘要

背景

许多双相情感障碍(BD)患者在缓解期治疗后仍有残留症状,BD在残留症状方面表现出复杂的特征和转变模式,不同极性和程度的残留症状可相互混合并转化。有必要将BD作为一个综合的多变量疾病系统进行进一步研究。目前的研究缺乏针对BD残留症状和亚综合征症状的网络分析。

方法

纳入242例双相情感障碍缓解期患者。我们使用t检验和卡方检验比较了有残留症状和无残留症状人群的人口统计学数据和症状差异,并应用FDR进行多重比较校正。采用逻辑回归确定残留症状的影响因素。通过网络分析比较症状网络,以分析不同类型残留症状之间的关系。

结果

在纳入的患者中,抑郁残留症状(N=111)比躁狂残留症状(n=29)更常见。有残留症状和无残留症状两组之间的比较显示,人口统计学数据和病史信息无差异。与残留症状相关的主要影响因素包括从诊断到首次治疗的时间(OR=0.88)、心境障碍问卷(MDQ)的第一个(OR=1.51)和第二个(OR=17.1)因素、抑郁症状快速自评量表(QIDS)(OR=5.28)、世界卫生组织生活质量简表(WHOQOL-BREF)的心理(OR=0.68)和环境(OR=1.53)分量表。有残留症状和无残留症状两组的网络结构存在显著差异(网络不变性差异=0.4,p=0.025)。同时,有抑郁残留症状和无抑郁残留症状两组之间无显著差异。然而,有抑郁残留症状患者的症状网络结构比无抑郁残留症状患者更松散,症状之间的相互联系较弱。当没有抑郁或躁狂残留症状时,仍可形成症状网络并对社会功能产生影响。

结论

本研究强调了双相情感障碍残留症状的复杂性。虽然其主要表现为结构松散的抑郁残留症状,但躁狂残留症状也不应被忽视。未来的研究应探索针对特定症状群或联系的基于网络的干预措施,以改善残留症状的管理和患者预后情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09b9/11268721/96f9240b14ec/NDT-20-1397-g0001.jpg

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