Structural Brain Connectivity and Treatment Improvement in Mood Disorder.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
ACS Applied Bio Materials Pub Date : 2024-05-01 Epub Date: 2024-04-24 DOI:10.1089/brain.2023.0063
Sébastien Dam, Jean-Marie Batail, Gabriel H Robert, Dominique Drapier, Pierre Maurel, Julie Coloigner
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Abstract

Background: The treatment of depressive episodes is well established, with clearly demonstrated effectiveness of antidepressants and psychotherapies. However, more than one-third of depressed patients do not respond to treatment. Identifying the brain structural basis of treatment-resistant depression could prevent useless pharmacological prescriptions, adverse events, and lost therapeutic opportunities. Methods: Using diffusion magnetic resonance imaging, we performed structural connectivity analyses on a cohort of 154 patients with mood disorder (MD) and 77 sex- and age-matched healthy control (HC) participants. To assess illness improvement, the patients with MD went through two clinical interviews at baseline and at 6-month follow-up and were classified based on the Clinical Global Impression-Improvement score into improved or not-improved (NI). First, the threshold-free network-based statistics (NBS) was conducted to measure the differences in regional network architecture. Second, nonparametric permutations tests were performed on topological metrics based on graph theory to examine differences in connectome organization. Results: The threshold-free NBS revealed impaired connections involving regions of the basal ganglia in patients with MD compared with HC. Significant increase of local efficiency and clustering coefficient was found in the lingual gyrus, insula, and amygdala in the MD group. Compared with the NI, the improved displayed significantly reduced network integration and segregation, predominately in the default-mode regions, including the precuneus, middle temporal lobe, and rostral anterior cingulate. Conclusions: This study highlights the involvement of regions belonging to the basal ganglia, the fronto-limbic network, and the default mode network, leading to a better understanding of MD disease and its unfavorable outcome.

情绪失调症患者的大脑结构连通性与治疗效果的改善
背景:抑郁症发作的治疗方法已得到广泛认可,抗抑郁药物和心理疗法的疗效已得到明确证实。然而,超过三分之一的抑郁症患者对治疗没有反应。找出抗药性抑郁症的大脑结构基础可以避免无用的药物处方、不良事件和治疗机会的丧失:我们利用弥散磁共振成像技术,对 154 名心境障碍(MD)患者和 77 名性别和年龄匹配的健康对照组(HC)参与者进行了结构连接分析。为了评估病情改善情况,情绪障碍患者在基线和6个月随访时接受了两次临床访谈,并根据临床总体印象改善评分分为病情改善和未改善两类。首先,通过无阈值网络统计来测量区域网络结构的差异。其次,对基于图论的拓扑指标进行了非参数排列测试,以检查连接组组织的差异:结果:基于无阈值网络的统计显示,与高危人群相比,多发性硬化症患者基底节区域的连接受损。在 MD 组中,舌回、脑岛和杏仁核的局部效率和聚类系数显著增加。与未改善者相比,改善者的网络整合和分离明显减少,主要集中在默认模式区,包括楔前回、颞叶中部和喙前扣带回:本研究强调了基底神经节、前边缘网络和默认模式网络区域的参与,有助于更好地理解 MD 疾病及其不良结局。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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