Disrupted gray matter connectome in vestibular migraine: a combined machine learning and individual-level morphological brain network analysis.

IF 7.3 1区 医学 Q1 CLINICAL NEUROLOGY
Wen Chen, Hongru Zhao, Qifang Feng, Xing Xiong, Jun Ke, Lingling Dai, Chunhong Hu
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引用次数: 0

Abstract

Background: Although gray matter (GM) volume alterations have been extensively documented in previous voxel-based morphometry studies on vestibular migraine (VM), little is known about the impact of this disease on the topological organization of GM morphological networks. This study investigated the altered network patterns of the GM connectome in patients with VM.

Methods: In this study, 55 patients with VM and 57 healthy controls (HCs) underwent structural T1-weighted MRI. GM morphological networks were constructed by estimating interregional similarity in the distributions of regional GM volume based on the Kullback-Leibler divergence measure. Graph-theoretical metrics and interregional morphological connectivity were computed and compared between the two groups. Partial correlation analyses were performed between significant GM connectome features and clinical parameters. Logistic regression (LR), support vector machine (SVM), and random forest (RF) classifiers were used to examine the performance of significant GM connectome features in distinguishing patients with VM from HCs.

Results: Compared with HCs, patients with VM exhibited increased clustering coefficient and local efficiency, as well as reduced nodal degree and nodal efficiency in the left superior temporal gyrus (STG). Furthermore, we identified one connected component with decreased morphological connectivity strength, and the involved regions were mainly located in the STG, temporal pole, prefrontal cortex, supplementary motor area, cingulum, fusiform gyrus, and cerebellum. In the VM group, several connections in the identified connected component were correlated with clinical measures (i.e., symptoms and emotional scales); however, these correlations did not survive multiple comparison corrections. A combination of significant graph- and connectivity-based features allowed single-subject classification of VM versus HC with significant accuracy of 77.68%, 77.68%, and 72.32% for the LR, SVM, and RF models, respectively.

Conclusion: Patients with VM had aberrant GM connectomes in terms of topological properties and network connections, reflecting potential dizziness, pain, and emotional dysfunctions. The identified features could serve as individualized neuroimaging markers of VM.

前庭性偏头痛的灰质连接组紊乱:机器学习与个体水平形态学脑网络分析的结合。
背景:尽管灰质(GM)体积的改变已在以往有关前庭性偏头痛(VM)的体素形态计量学研究中得到广泛记录,但人们对这种疾病对GM形态网络拓扑组织的影响知之甚少。本研究调查了 VM 患者 GM 连接组网络模式的改变:在这项研究中,55 名 VM 患者和 57 名健康对照组(HCs)接受了结构性 T1 加权磁共振成像检查。根据Kullback-Leibler发散度量估算区域GM体积分布的区域间相似性,从而构建GM形态学网络。计算图论指标和区域间形态连通性,并在两组之间进行比较。在重要的 GM 连接组特征和临床参数之间进行了部分相关性分析。使用逻辑回归(LR)、支持向量机(SVM)和随机森林(RF)分类器来检验重要的基因组连接组特征在区分VM患者和HC患者方面的表现:结果:与HCs相比,VM患者的聚类系数和局部效率增加,左侧颞上回(STG)的结节度和结节效率降低。此外,我们还发现了一个形态连接强度降低的连接成分,所涉及的区域主要位于颞上回、颞极、前额叶皮层、辅助运动区、齿状回、纺锤形回和小脑。在 VM 组中,已确定的连接成分中的几个连接与临床测量(即症状和情绪量表)相关;但是,这些相关性并没有通过多重比较校正。结合基于图形和连接的重要特征,可以对 VM 和 HC 进行单个受试者分类,LR、SVM 和 RF 模型的准确率分别为 77.68%、77.68% 和 72.32%:VM患者的GM连接组在拓扑特性和网络连接方面存在异常,反映了潜在的头晕、疼痛和情感功能障碍。所发现的特征可作为VM的个体化神经影像标记。
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来源期刊
Journal of Headache and Pain
Journal of Headache and Pain 医学-临床神经学
CiteScore
11.80
自引率
13.50%
发文量
143
审稿时长
6-12 weeks
期刊介绍: The Journal of Headache and Pain, a peer-reviewed open-access journal published under the BMC brand, a part of Springer Nature, is dedicated to researchers engaged in all facets of headache and related pain syndromes. It encompasses epidemiology, public health, basic science, translational medicine, clinical trials, and real-world data. With a multidisciplinary approach, The Journal of Headache and Pain addresses headache medicine and related pain syndromes across all medical disciplines. It particularly encourages submissions in clinical, translational, and basic science fields, focusing on pain management, genetics, neurology, and internal medicine. The journal publishes research articles, reviews, letters to the Editor, as well as consensus articles and guidelines, aimed at promoting best practices in managing patients with headaches and related pain.
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