Correlation between polygenic risk scores of depression and cortical morphology networks.

IF 4.1 2区 医学 Q2 NEUROSCIENCES
Journal of Psychiatry & Neuroscience Pub Date : 2025-01-03 Print Date: 2025-01-01 DOI:10.1503/jpn.240140
Qian Gong, Wei Wang, Zhaowen Nie, Simeng Ma, Enqi Zhou, Zipeng Deng, Xin-Hui Xie, Honggang Lyu, Mian-Mian Chen, Lijun Kang, Zhongchun Liu
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引用次数: 0

Abstract

Background: Cortical morphometry is an intermediate phenotype that is closely related to the genetics and onset of major depressive disorder (MDD), and cortical morphometric networks are considered more relevant to disease mechanisms than brain regions. We sought to investigate changes in cortical morphometric networks in MDD and their relationship with genetic risk in healthy controls.

Methods: We recruited healthy controls and patients with MDD of Han Chinese descent. Participants underwent DNA extraction and magnetic resonance imaging, including T 1-weighted and diffusion tensor imaging. We calculated polygenic risk scores (PRS) based on previous summary statistics from a genome-wide association study of the Chinese Han population. We used a novel method based on Kullback-Leibler divergence to construct the morphometric inverse divergence (MIND) network, and we included the classic morphometric similarity network (MSN) as a complementary approach. Considering the relationship between cortical and white matter networks, we also constructed a streamlined density network. We conducted group comparison and PRS correlation analyses at both the regional and network level.

Results: We included 130 healthy controls and 195 patients with MDD. The results indicated enhanced connectivity in the MIND network among patients with MDD and people with high genetic risk, particularly in the somatomotor (SMN) and default mode networks (DMN). We did not observe significant findings in the MSN. The white matter network showed disruption among people with high genetic risk, also primarily in the SMN and DMN. The MIND network outperformed the MSN network in distinguishing MDD status.

Limitations: Our study was cross-sectional and could not explore the causal relationships between cortical morphological changes, white matter connectivity, and disease states. Some patients had received antidepressant treatment, which may have influenced brain morphology and white matter network structure.

Conclusion: The genetic mechanisms of depression may be related to white matter disintegration, which could also be associated with decoupling of the SMN and DMN. These findings provide new insights into the genetic mechanisms and potential biomarkers of MDD.

抑郁症多基因风险评分与皮质形态学网络的相关性。
背景:皮层形态测量是一种与遗传和重度抑郁症(MDD)发病密切相关的中间表型,皮层形态测量网络被认为比大脑区域与疾病机制更相关。我们试图在健康对照中研究重度抑郁症患者皮质形态测量网络的变化及其与遗传风险的关系。方法:我们招募健康对照者和汉族重度抑郁症患者。参与者接受了DNA提取和磁共振成像,包括t1加权和扩散张量成像。我们基于先前中国汉族人群全基因组关联研究的汇总统计计算了多基因风险评分(PRS)。采用基于Kullback-Leibler散度的新方法构建了形态度量逆散度(MIND)网络,并将经典的形态度量相似网络(MSN)作为补充方法。考虑到皮层和白质网络之间的关系,我们还构建了一个流线型的密度网络。我们在区域和网络层面进行了分组比较和PRS相关性分析。结果:我们纳入了130名健康对照和195名重度抑郁症患者。结果表明,MDD患者和高遗传风险人群的MIND网络的连通性增强,特别是在躯体运动网络(SMN)和默认模式网络(DMN)中。我们在MSN上没有观察到显著的发现。在遗传风险高的人群中,白质网络也出现了紊乱,主要是在SMN和DMN。MIND网络在区分MDD状态方面优于MSN网络。局限性:我们的研究是横断面的,不能探讨皮层形态改变、白质连通性和疾病状态之间的因果关系。一些患者接受了抗抑郁治疗,这可能影响了脑形态和白质网络结构。结论:抑郁症的发生机制可能与脑白质解体有关,也可能与中脑白质和中脑白质分离有关。这些发现为MDD的遗传机制和潜在的生物标志物提供了新的见解。
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来源期刊
CiteScore
6.80
自引率
2.30%
发文量
51
审稿时长
2 months
期刊介绍: The Journal of Psychiatry & Neuroscience publishes papers at the intersection of psychiatry and neuroscience that advance our understanding of the neural mechanisms involved in the etiology and treatment of psychiatric disorders. This includes studies on patients with psychiatric disorders, healthy humans, and experimental animals as well as studies in vitro. Original research articles, including clinical trials with a mechanistic component, and review papers will be considered.
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