用小波形态学表征偏头痛患者脑网络拓扑结构:一项描述性横断面回顾性研究。

IF 2.1 Q2 MEDICINE, GENERAL & INTERNAL
G.D.C.J. Prabhashana, R.L.T. Sirimanne, A.D.I. Amarasinghe, W.K.C. Sampath, P.P.C.R. Karunasekara, W.M. Ediri Arachchi
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引用次数: 0

摘要

背景和目的:有令人信服的证据表明,灰质变化与偏头痛有关,这反过来可能改变形态学网络拓扑结构。本研究的目的是利用基于小波的形态测量法来表征偏头痛患者和非偏头痛患者大脑的形态网络拓扑结构。方法:对45例偏头痛患者和46例非偏头痛患者进行3D、T1W脑成像。然后,提取灰质体积图像,利用小波形态学在n = 3的水平上进行分解重构。为每个受试者构建4D灰质体积,并将其划分为625个解剖区域,并建立结构协方差矩阵。通过应用一系列稀疏度阈值对每个矩阵进行二值化,并计算全局网络拓扑度量。最后,使用每个指标的曲线下面积进行两次样本t检验,以进行网络拓扑的组水平比较。结果:与非偏头痛患者相比,偏头痛患者表现出更高的小世界(p = 0.003)和整体效率(p = 0.002)。局部效率(p = 0.49)和协调性(p = 0.70)在两组网络稀疏性方面表现出相似的特征,没有显著差异。层次结构(p = 0.41)主要分散在中间稀疏度阈值(0.15-0.35)。在网络稀疏度的0.05 ~ 0.4范围内,各组间的同步特征基本一致(p = 0.32)。结论:偏头痛患者具有较好的信息处理整合能力,小波形态学结合图论为偏头痛患者脑灰质网络拓扑变化提供了有价值的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Characterizing the Morphological Brain Network Topology in Patients With Migraine Using Wavelet Based Morphometry: A Descriptive Cross-Sectional Retrospective Study

Characterizing the Morphological Brain Network Topology in Patients With Migraine Using Wavelet Based Morphometry: A Descriptive Cross-Sectional Retrospective Study

Background and Aim

There is compelling evidence that gray matter changes associated with migraine, which in turn may alter morphological network topology. The aim of this study is to characterize morphological network topology of the brains of migraineurs and non-migraine subjects using wavelet-based morphometry.

Methods

3D, T1W brain images were obtained from 45 patients with migraine and 46 non-migraine subjects. Then, gray matter volume images were developed, and they were decomposed and reconstructed at a level of n = 3 using wavelet-based morphometry. 4D gray matter volumes were constructed for each subject and they were parcellated into 625 anatomical regions, and structural covariance matrices were developed. Each matrix was binarized by applying a series of sparsity thresholds, and global network topological metrics were computed. Finally, two sample t-tests were performed using area under curves of each metric for group-level comparisons of network topology.

Results

Patients with migraine showed increased small worldness (p = 0.003) and global efficiency (p = 0.002) compared to non-migraine subjects. Local efficiency (p = 0.49) and assortativity (p = 0.70) have shown similar characteristics for both groups against network sparsity with no significant differences. Hierarchy (p = 0.41) was largely dispersed in the middle sparsity thresholds (0.15–0.35). The characteristics of synchronization (p = 0.32) between groups were almost the same from 0.05 to 0.4 of network sparsities.

Conclusion

Patients with migraine exhibit better integration of information processing and wavelet-based morphometry in combining with graph theory provides valuable information on altered gray matter network topologies in migraineurs.

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来源期刊
Health Science Reports
Health Science Reports Medicine-Medicine (all)
CiteScore
1.80
自引率
0.00%
发文量
458
审稿时长
20 weeks
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