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双相障碍患者情绪不稳定的证据:应用多层次隐马尔可夫模型分析密集型纵向生态瞬时评估数据。

Evidence for mood instability in patients with bipolar disorder: Applying multilevel hidden Markov modeling to intensive longitudinal ecological momentary assessment data.

机构信息

Department of Methodology and Statistics, Faculty of Social and Behavioural Sciences, Utrecht University.

Department of Psychiatry, Rob Giel Research Centre, University Medical Centre Groningen, University of Groningen.

出版信息

J Psychopathol Clin Sci. 2024 Aug;133(6):456-468. doi: 10.1037/abn0000915. Epub 2024 Jun 3.

Abstract

Bipolar disorder (BD) is a chronic psychiatric condition characterized by large episodic changes in mood and energy. Recently, BD has been proposed to be conceptualized as chronic cyclical mood instability, as opposed to the traditional view of alternating discrete episodes with stable periods in-between. Recognizing this mood instability may improve care and call for high-frequency measures coupled with advanced statistical models. To uncover empirically derived mood states, a multilevel hidden Markov model (HMM) was applied to 4-month ecological momentary assessment data in 20 patients with BD, yielding ∼9,820 assessments in total. Ecological momentary assessment data comprised self-report questionnaires (5 × daily) measuring manic and depressive constructs. Manic and depressive symptoms were also assessed weekly using the Altman Self-Rating Mania Scale and the Quick Inventory for Depressive Symptomatology Self-Report. Alignment between HMM-uncovered momentary mood states and weekly questionnaires was assessed with a multilevel linear model. HMM uncovered four mood states: neutral, elevated, mixed, and lowered, which aligned with weekly symptom scores. On average, patients remained < 25 hr in one state. In almost half of the patients, mood instability was observed. Switching between mood states, three patterns were identified: patients switching predominantly between (a) neutral and lowered states, (b) neutral and elevated states, and (c) mixed, elevated, and lowered states. In all, elevated and lowered mood states were interspersed by mixed states. The results indicate that chronic mood instability is a key feature of BD, even in "relatively" euthymic periods. This should be considered in theoretical and clinical conceptualizations of the disorder. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

摘要

双相情感障碍(BD)是一种慢性精神疾病,其特征是情绪和能量出现大的阶段性变化。最近,BD 被认为是慢性周期性情绪不稳定,而不是传统的离散发作与稳定期交替的观点。认识到这种情绪不稳定可能会改善护理,并需要高频测量值和先进的统计模型。为了揭示经验性的情绪状态,采用多层次隐马尔可夫模型(HMM)对 20 名 BD 患者的 4 个月生态瞬时评估数据进行了分析,总共获得了约 9820 次评估。生态瞬时评估数据包括自我报告问卷(每天 5 次),用于测量躁狂和抑郁结构。每周还使用 Altman 自我评定躁狂量表和快速抑郁症状自评量表来评估躁狂和抑郁症状。使用多层次线性模型评估 HMM 揭示的瞬时情绪状态与每周问卷之间的一致性。HMM 揭示了四种情绪状态:中性、升高、混合和降低,与每周的症状评分一致。平均而言,患者在一种状态下的时间不到 25 小时。在近一半的患者中观察到情绪不稳定。在情绪状态之间切换时,发现了三种模式:患者主要在(a)中性和降低状态、(b)中性和升高状态、和(c)混合、升高和降低状态之间切换。在所有状态中,升高和降低的情绪状态都被混合状态所穿插。研究结果表明,慢性情绪不稳定是 BD 的一个关键特征,即使在“相对”稳定的时期也是如此。这在该疾病的理论和临床概念化中应予以考虑。(PsycInfo 数据库记录(c)2024 APA,保留所有权利)。

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