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识别重度抑郁症患者症状轨迹的潜在亚型及其预测因素。

Identifying latent subtypes of symptom trajectories in major depressive disorder patients and their predictors.

作者信息

Meng Fanyu, Ou Wenwen, Zhao Xiaotian, Wang Mi, Lu Xiaowen, Dong Qiangli, Zhang Liang, Sun Jinrong, Guo Hua, Zhao Futao, Huang Mei, Ma Mohan, Lv Guanyi, Qin Yaqi, Li Weihui, Li Zexuan, Liao Mei, Zhang Li, Liu Jin, Liu Bangshan, Ju Yumeng, Zhang Yan, Li Lingjiang

机构信息

Department of Psychiatry, and National Clinical Research Center for Mental Disorders, The Second Xiangya Hospital of Central South University, No. 139, Renmin Middle Road, Changsha, 410011, Hunan, China.

Zhumadian Psychiatric Hospital, Zhumadian, 463000, Henan, China.

出版信息

Eur Arch Psychiatry Clin Neurosci. 2024 Sep 2. doi: 10.1007/s00406-024-01883-z.

Abstract

This study aimed to identify different symptom trajectories based on the severity of depression symptoms within a 2-month follow-up, and to explore predictive factors for different symptom trajectories. Three hundred and ninety-two adults diagnosed with major depressive disorder (MDD) were recruited from two longitudinal cohorts. Patients received antidepressant treatment as usual, and the depression symptoms were evaluated by the 17-item Hamilton depression rating scale (HAMD-17) at baseline, two weeks, and eight weeks. Based on the HAMD-17 scores, different trajectories of symptom change were distinguished by applying Growth Mixture Modeling (GMM). Furthermore, the baseline sociodemographic, clinical, and cognitive characteristics were compared to identify potential predictors for different trajectories. Through GMM, three unique depressive symptom trajectories of MDD patients were identified: (1) mild-severity class with significant improvement (Mild, n = 255); (2) high-severity class with significant improvement (High, n = 39); (3) moderate-severity class with limited improvement (Limited, n = 98). Among the three trajectories, the Mild class had a relatively low level of anxiety symptoms at baseline, whereas the High class had the lowest education level and the worst cognitive performance. Additionally, participants in the Limited class exhibited an early age of onset and experienced a higher level of emotional abuse. MDD patients could be categorised into three distinct latent subtypes through different symptom trajectories in this study, and the characteristics of these subtype patients may inform identifications for trajectory-specific intervention targets.

摘要

本研究旨在基于2个月随访期间抑郁症状的严重程度识别不同的症状轨迹,并探索不同症状轨迹的预测因素。从两个纵向队列中招募了392名被诊断为重度抑郁症(MDD)的成年人。患者接受常规抗抑郁治疗,并在基线、两周和八周时通过17项汉密尔顿抑郁量表(HAMD-17)评估抑郁症状。基于HAMD-17评分,应用生长混合模型(GMM)区分症状变化的不同轨迹。此外,比较基线社会人口统计学、临床和认知特征,以确定不同轨迹的潜在预测因素。通过GMM,识别出MDD患者的三种独特抑郁症状轨迹:(1)症状显著改善的轻度严重程度组(轻度,n = 255);(2)症状显著改善的高度严重程度组(高度,n = 39);(3)改善有限的中度严重程度组(有限,n = 98)。在这三种轨迹中,轻度组在基线时焦虑症状水平相对较低,而高度组教育水平最低且认知表现最差。此外,有限组参与者发病年龄较早且遭受情感虐待的程度较高。在本研究中,MDD患者可通过不同的症状轨迹分为三种不同的潜在亚型,这些亚型患者的特征可为特定轨迹的干预目标识别提供信息。

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