Huaxi MR Research Center (HMRRC), Department of Radiology, West China Hospital of Sichuan University, No. 37 Guo Xue Xiang, Chengdu, 610041, PR China.
Department of Psychiatry and Behavioral Neuroscience, University of Cincinnati, Cincinnati, OH, USA.
Brain Struct Funct. 2021 Jun;226(5):1389-1403. doi: 10.1007/s00429-020-02200-9. Epub 2021 Apr 7.
While previous structural-covariance studies have an advanced understanding of brain alterations in Parkinson's disease (PD), brain-behavior relationships have not been examined at the individual level. This study investigated the topological organization of grey matter (GM) networks, their relation to disease severity, and their potential imaging diagnostic value in PD. Fifty-four early-stage PD patients and 54 healthy controls (HC) underwent structural T1-weighted magnetic resonance imaging. GM networks were constructed by estimating interregional similarity in the distributions of regional GM volume using the Kullback-Leibler divergence measure. Results were analyzed using graph theory and network-based statistics (NBS), and the relationship to disease severity was assessed. Exploratory support vector machine analyses were conducted to discriminate PD patients from HC and different motor subtypes. Compared with HC, GM networks in PD showed a higher clustering coefficient (P = 0.014) and local efficiency (P = 0.014). Locally, nodal centralities in PD were lower in postcentral gyrus and temporal-occipital regions, and higher in right superior frontal gyrus and left putamen. NBS analysis revealed decreased morphological connections in the sensorimotor and default mode networks and increased connections in the salience and frontoparietal networks in PD. Connection matrices and graph-based metrics allowed single-subject classification of PD and HC with significant accuracy of 73.1 and 72.7%, respectively, while graph-based metrics allowed single-subject classification of tremor-dominant and akinetic-rigid motor subtypes with significant accuracy of 67.0%. The topological organization of GM networks was disrupted in early-stage PD in a way that suggests greater segregation of information processing. There is potential for application to early imaging diagnosis.
虽然之前的结构协变研究对帕金森病 (PD) 中的大脑改变有了更深入的了解,但尚未在个体水平上研究大脑-行为关系。本研究旨在探究灰质 (GM) 网络的拓扑组织,及其与疾病严重程度的关系,以及在 PD 中的潜在影像诊断价值。54 例早期 PD 患者和 54 例健康对照 (HC) 接受了结构 T1 加权磁共振成像检查。使用 Kullback-Leibler 散度测量估计区域 GM 体积分布的区域间相似性,构建 GM 网络。使用图论和基于网络的统计学 (NBS) 分析结果,并评估与疾病严重程度的关系。进行探索性支持向量机分析以区分 PD 患者与 HC 和不同的运动亚型。与 HC 相比,PD 患者的 GM 网络具有更高的聚类系数 (P=0.014) 和局部效率 (P=0.014)。局部来看,PD 患者的中央后回和颞枕部区域的节点中心度较低,而右侧额上回和左侧壳核的节点中心度较高。NBS 分析显示,PD 患者的感觉运动和默认模式网络的形态连接减少,突显和额顶网络的连接增加。连接矩阵和基于图的指标允许对 PD 和 HC 进行单个体分类,准确率分别为 73.1%和 72.7%,而基于图的指标允许对震颤优势和无动性僵硬运动亚型进行单个体分类,准确率分别为 67.0%。早期 PD 中 GM 网络的拓扑组织被破坏,表明信息处理的隔离程度更高。有应用于早期影像诊断的潜力。