Brain network predictors of changes in symptoms and serum BDNF following antidepressant treatment with escitalopram and Yueju Pill in major depressive disorder: a randomised, double-blind, placebo-controlled pilot study.

IF 6.8 3区 医学 Q1 PSYCHIATRY
General Psychiatry Pub Date : 2025-10-13 eCollection Date: 2025-01-01 DOI:10.1136/gpsych-2025-102041
Yuxuan Zhang, Yiwei Ren, Gang Chen, Haosen Wang, Jinlin Miao, Bo Cui, Zhilu Zou, Jin Feng, Chunkou Hong, Mingzhi Han, Jinhui Wang
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引用次数: 0

Abstract

Background: Yueju Pill, a classic traditional Chinese medicine, shows antidepressant effects rapidly. However, biomarkers that can predict its treatment outcomes in major depressive disorder (MDD) are still lacking. Multimodal magnetic resonance imaging (MRI) offers a promising avenue to identify such biomarkers.

Aims: This pilot study aimed to explore whether therapeutic responses to Yueju Pill could be predicted by MRI-derived brain networks and to identify drug-specific biomarkers in comparison to escitalopram, a mainstream antidepressant.

Methods: We collected multimodal MRI data and blood samples from 28 outpatients with MDD from the Fourth People's Hospital of Taizhou, who were randomly divided into two groups to receive either Yueju Pill (23 g/time/day) or escitalopram (10 mg, two times a day) for 4 days. Morphological and functional brain networks were constructed and used to predict individual changes in symptoms quantified by the 24-item Hamilton Depression Scale (HAMD-24) scores and serum brain-derived neurotrophic factor (BDNF) levels.

Results: After the treatment, both groups exhibited significant reductions in the HAMD-24 scores, while only the Yueju Pill group showed significant increases in the BDNF levels. Gyrification Index-based morphological networks predicted change rates of the HAMD-24 scores in both groups, but sulcus depth-based and cortical thickness-based morphological networks predicted change rates of the HAMD-24 scores and BDNF levels, respectively, only in the Yueju Pill group. Subnetwork analyses revealed that the visual network independently predicted the changes in both the HAMD-24 scores (sulcus depth-based networks) and BDNF levels (cortical thickness-based networks) following Yueju Pill treatment.

Conclusions: Morphological but not functional brain networks can predict symptom improvement and BDNF changes of patients with MDD after Yueju Pill treatment. Sulcus depth-based and cortical thickness-based morphological brain networks, particularly their visual subnetworks, might serve as Yueju Pill-specific biomarkers for predicting the therapeutic responses. These findings have the potential to guide personalised therapy for patients with MDD early in the therapeutic process.

Trial registration number: ChiCTR1900021114.

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Abstract Image

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重度抑郁症患者艾司西酞普兰和越菊丸抗抑郁治疗后症状和血清BDNF变化的脑网络预测因素:一项随机、双盲、安慰剂对照的初步研究
背景:越菊丸是一种具有快速抗抑郁作用的经典中药。然而,能够预测重度抑郁症(MDD)治疗结果的生物标志物仍然缺乏。多模态磁共振成像(MRI)为识别这些生物标志物提供了一种有前途的途径。目的:本初步研究旨在探讨悦菊丸的治疗反应是否可以通过mri衍生的脑网络来预测,并与主流抗抑郁药艾司西酞普兰(escitalopram)进行比较,确定药物特异性生物标志物。方法:收集台州市第四人民医院门诊MDD患者28例的多模态MRI数据和血液样本,随机分为两组,分别服用越桔丸(23 g/次/d)和艾司西酞普兰(10 mg, 2次/d),疗程4 d。构建脑形态和功能网络,并用24项汉密尔顿抑郁量表(HAMD-24)评分和血清脑源性神经营养因子(BDNF)水平来量化个体症状的变化。结果:两组治疗后HAMD-24评分均显著降低,只有悦居丸组BDNF水平显著升高。基于旋转指数的形态学网络预测了两组HAMD-24评分的变化率,但基于沟深和皮层厚度的形态学网络分别预测了HAMD-24评分和BDNF水平的变化率,仅在越桔丸组中。子网络分析显示,视觉网络独立预测了悦聚丸治疗后HAMD-24评分(基于沟深度的网络)和BDNF水平(基于皮质厚度的网络)的变化。结论:脑形态网络可预测重度抑郁症患者悦菊丸治疗后症状改善及脑源性神经营养因子的变化,但功能网络不能预测。基于脑沟深度和皮层厚度的脑形态网络,特别是它们的视觉子网络,可能作为悦居丸特异性的生物标志物来预测治疗反应。这些发现有可能在治疗过程的早期指导重度抑郁症患者的个性化治疗。试验注册号:ChiCTR1900021114。
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来源期刊
General Psychiatry
General Psychiatry 医学-精神病学
CiteScore
21.90
自引率
2.50%
发文量
848
期刊介绍: General Psychiatry (GPSYCH), an open-access journal established in 1959, has been a pioneer in disseminating leading psychiatry research. Addressing a global audience of psychiatrists and mental health professionals, the journal covers diverse topics and publishes original research, systematic reviews, meta-analyses, forums on topical issues, case reports, research methods in psychiatry, and a distinctive section on 'Biostatistics in Psychiatry'. The scope includes original articles on basic research, clinical research, community-based studies, and ecological studies, encompassing a broad spectrum of psychiatric interests.
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