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稀疏度依赖指标描述帕金森病脑网络连接的改变。

Sparsity Dependent Metrics Depict Alteration of Brain Network Connectivity in Parkinson's Disease.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:698-701. doi: 10.1109/EMBC48229.2022.9871258.

Abstract

To date, regional brain atrophy unfolded using neuroimaging methods is observed to be the signature of Parkinson's disease (PD). In addition, graph theory-based studies are proving altered structural connectivity in PD. This motivated us to employ regional grey matter volume of PD patients (N=70) for comparative network analysis with an equal number of age- and gender-matched healthy controls (HC). In the current study, normalized grey matter maps obtained from structural magnetic resonance imaging (sMRI) were parcellated into 56 ROI (regions of interest) for construction of symmetric matrix using partial correlation between every pair of regional grey matter volumes. Sparsity thresholding was used to binarize the matrices and MATLAB functions from brain connectivity toolbox were employed to obtain the connectivity metrics. We observed PD with a significantly lower clustering coefficient as well as local efficiency at higher sparsities (above 0.9 and 0.84, respectively) with p<0.05. The right fusiform gyrus was found to be the conserved hub, besides disruption of four hubs and regeneration of five other hubs. Lower clustering coefficient and local efficiency were indicative of reduced local integration and information processing, respectively. Hence, we suggest that global clustering coefficient and local efficiency could have a pivotal role in evaluating network topology. Thereby, our findings confirmed impairment of normal structural brain network topology reflecting disconnectivity mechanisms in PD. Clinical Relevance - Analyzing structural brain connectivity in Parkinson's disease might provide the researchers and clinicians with a signature pattern of the disease to discriminate patients from normal controls.

摘要

迄今为止,使用神经影像学方法观察到的区域性脑萎缩被认为是帕金森病 (PD) 的特征。此外,基于图论的研究证明 PD 存在结构连接改变。这促使我们使用 PD 患者(N=70)的区域灰质体积与年龄和性别匹配的健康对照组(HC)进行比较网络分析。在本研究中,从结构磁共振成像 (sMRI) 获得的归一化灰质图被分成 56 个 ROI(感兴趣区域),用于使用每对区域灰质体积之间的偏相关构建对称矩阵。稀疏阈值用于将矩阵二值化,并使用脑连接工具箱中的 MATLAB 函数获得连接度量。我们观察到 PD 在较高稀疏度(分别为 0.9 和 0.84 以上)时具有明显较低的聚类系数和局部效率,p<0.05。除了四个枢纽的破坏和五个其他枢纽的再生外,右侧梭状回被发现是保守的枢纽。较低的聚类系数和局部效率分别表示局部整合和信息处理能力降低。因此,我们认为全局聚类系数和局部效率可能在评估网络拓扑结构中发挥关键作用。因此,我们的发现证实了正常结构大脑网络拓扑的损伤,反映了 PD 中的断开连接机制。临床意义 - 分析帕金森病的结构大脑连接可能为研究人员和临床医生提供疾病的特征模式,以将患者与正常对照组区分开来。

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