Ebrahimi Omid V, Borsboom Denny, Hoekstra Ria H A, Epskamp Sacha, Ostinelli Edoardo G, Bastiaansen Jojanneke A, Cipriani Andrea
Department of Experimental Psychology, University of Oxford, Oxford, UK; and Department of Psychology , University of Oslo, Oslo, Norway.
Department of Psychology, University of Amsterdam, Amsterdam, The Netherlands.
Br J Psychiatry. 2024 May;224(5):157-163. doi: 10.1192/bjp.2024.19.
International guidelines present overall symptom severity as the key dimension for clinical characterisation of major depressive disorder (MDD). However, differences may reside within severity levels related to how symptoms interact in an individual patient, called symptom dynamics.
To investigate these individual differences by estimating the proportion of patients that display differences in their symptom dynamics while sharing the same overall symptom severity.
Participants with MDD ( = 73; mean age 34.6 years, s.d. = 13.1; 56.2% female) rated their baseline symptom severity using the Inventory for Depressive Symptomatology Self-Report (IDS-SR). Momentary indicators for depressive symptoms were then collected through ecological momentary assessments five times per day for 28 days; 8395 observations were conducted (average per person: 115; s.d. = 16.8). Each participant's symptom dynamics were estimated using person-specific dynamic network models. Individual differences in these symptom relationship patterns in groups of participants sharing the same symptom severity levels were estimated using individual network invariance tests. Subsequently, the overall proportion of participants that displayed differential symptom dynamics while sharing the same symptom severity was calculated. A supplementary simulation study was conducted to investigate the accuracy of our methodology against false-positive results.
Differential symptom dynamics were identified across 63.0% (95% bootstrapped CI 41.0-82.1) of participants within the same severity group. The average false detection of individual differences was 2.2%.
The majority of participants within the same depressive symptom severity group displayed differential symptom dynamics. Examining symptom dynamics provides information about person-specific psychopathological expression beyond severity levels by revealing how symptoms aggravate each other over time. These results suggest that symptom dynamics may be a promising new dimension for clinical characterisation, warranting replication in independent samples. To inform personalised treatment planning, a next step concerns linking different symptom relationship patterns to treatment response and clinical course, including patterns related to spontaneous recovery and forms of disorder progression.
国际指南将总体症状严重程度作为重度抑郁症(MDD)临床特征描述的关键维度。然而,在与个体患者症状相互作用方式相关的严重程度水平内可能存在差异,即症状动态变化。
通过估计在总体症状严重程度相同的情况下表现出症状动态差异的患者比例来研究这些个体差异。
患有MDD的参与者(n = 73;平均年龄34.6岁,标准差 = 13.1;56.2%为女性)使用抑郁症状自评量表(IDS-SR)对其基线症状严重程度进行评分。然后通过为期28天的每日5次生态瞬时评估收集抑郁症状的瞬时指标;共进行了8395次观察(每人平均:115次;标准差 = 16.8)。使用个体特异性动态网络模型估计每个参与者的症状动态变化。使用个体网络不变性检验估计在症状严重程度水平相同的参与者组中这些症状关系模式的个体差异。随后,计算在症状严重程度相同的情况下表现出不同症状动态变化的参与者的总体比例。进行了一项补充模拟研究以调查我们方法针对假阳性结果的准确性。
在同一严重程度组中,63.0%(95%自抽样置信区间41.0 - 82.1)的参与者表现出不同的症状动态变化。个体差异的平均错误检测率为2.2%。
同一抑郁症状严重程度组中的大多数参与者表现出不同的症状动态变化。通过揭示症状如何随时间相互加重,检查症状动态变化可提供超出严重程度水平的个体特异性精神病理学表达信息。这些结果表明,症状动态变化可能是临床特征描述的一个有前景的新维度,值得在独立样本中进行重复验证。为了为个性化治疗计划提供信息,下一步涉及将不同的症状关系模式与治疗反应和临床病程联系起来,包括与自发恢复和疾病进展形式相关的模式。