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看到迹象:利用残留抑郁症状的病程来预测重性抑郁障碍复发和复发的模式。

Seeing the signs: Using the course of residual depressive symptomatology to predict patterns of relapse and recurrence of major depressive disorder.

机构信息

University Medical Center Groningen, RGOc, University of Groningen, Groningen, The Netherlands.

Interdisciplinary Center Psychopathology and Emotion regulation (ICPE), University Medical Center Groningen, University of Groningen, Groningen, The Netherlands.

出版信息

Depress Anxiety. 2018 Feb;35(2):148-159. doi: 10.1002/da.22695. Epub 2017 Dec 11.

Abstract

BACKGROUND

Major depressive disorder (MDD) is characterized by high relapse/recurrence rates. Predicting individual patients' relapse/recurrence risk has proven hard, possibly due to course heterogeneity among patients. This study aimed to (1) identify homogeneous data-driven subgroups with different patterns of relapse/recurrence and (2) identify associated predictors.

METHODS

For a year, we collected weekly depressive symptom ratings in 213 primary care MDD patients. Latent class growth analyses (LCGA), based on symptom-severity during the 24 weeks after no longer fulfilling criteria for the initial major depressive episode (MDE), were used to identify groups with different patterns of relapse/recurrence. Associations of baseline predictors with these groups were investigated, as were the groups' associations with 3- and 11-year follow-up depression outcomes.

RESULTS

LCGA showed that heterogeneity in relapse/recurrence after no longer fulfilling criteria for the initial MDE was best described by four classes: "quick symptom decline" (14.0%), "slow symptom decline" (23.3%), "steady residual symptoms" (38.7%), and "high residual symptoms" (24.1%). The latter two classes showed lower self-esteem at baseline, and more recurrences and higher severity at 3-year follow-up than the first two classes. Moreover, the high residual symptom class scored higher on neuroticism and lower on extraversion and self-esteem at baseline. Interestingly, the steady residual symptoms and high residual symptoms classes still showed higher severity of depressive symptoms after 11 years.

CONCLUSION

Some measures were associated with specific patterns of relapse/recurrence. Moreover, the data-driven relapse/recurrence groups were predictive of long-term outcomes, suggesting that patterns of residual symptoms could be of prognostic value in clinical practice.

摘要

背景

重度抑郁症(MDD)的特点是复发/再发率高。预测个体患者的复发/再发风险一直很困难,这可能是由于患者之间的病程异质性。本研究旨在:(1)识别具有不同复发/再发模式的同质数据驱动亚组;(2)识别相关预测因子。

方法

在一年的时间里,我们收集了 213 名初级保健 MDD 患者每周的抑郁症状评分。基于不再符合初始重度抑郁发作(MDE)标准后 24 周内症状严重程度的潜在类别增长分析(LCGA),用于识别具有不同复发/再发模式的组。研究了基线预测因子与这些组的关联,以及这些组与 3 年和 11 年随访抑郁结局的关联。

结果

LCGA 显示,不再符合初始 MDE 标准后的复发/再发异质性最好由四个类别描述:“症状快速下降”(14.0%)、“症状缓慢下降”(23.3%)、“稳定残留症状”(38.7%)和“高残留症状”(24.1%)。后两个类别在基线时自尊心较低,在 3 年随访时复发次数更多,严重程度更高。此外,高残留症状组在基线时神经质得分较高,外向性和自尊心得分较低。有趣的是,在 11 年后,稳定残留症状和高残留症状组仍然表现出较高的抑郁症状严重程度。

结论

一些措施与特定的复发/再发模式相关。此外,数据驱动的复发/再发组对长期结局具有预测性,这表明残留症状模式在临床实践中可能具有预后价值。

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