Siva Karthik, Ponnusamy Palanisamy, Ramanathan Malmathanraj
Department of Electronics and Communication Engineering, National Institute of Technology, Tiruchirappalli 620015, India.
Brain Sci. 2024 Jul 8;14(7):685. doi: 10.3390/brainsci14070685.
Neuroscience has revolved around brain structural changes, functional activity, and connectivity alteration in Parkinson's Disease (PD); however, how the network topology organization becomes altered is still unclear, specifically in Parkinson's patients with severe hyposmia. In this study, we have examined the functional network topological alteration in patients affected by Parkinson's Disease with normal cognitive ability (ODN), Parkinson's Disease with severe hyposmia (ODP), and healthy controls (HCs) using resting-state functional magnetic resonance imaging (rsfMRI) data. We have analyzed brain topological organization using popular graph measures such as network segregation (clustering coefficient, modularity), network integration (participation coefficient, path length), small-worldness, efficiency, centrality, and assortativity. Then, we used a feature ranking approach based on the diagonal adaptation of neighborhood component analysis, aiming to determine a graph measure that is sensitive enough to distinguish between these three different groups. We noted significantly lower segregation and local efficiency and small-worldness in ODP compared to ODN and HCs. On the contrary, we did not find differences in network integration in ODP compared to ODN and HCs, which indicates that the brain network becomes fragmented in ODP. At the brain network level, a progressive increase in the DMN (Default Mode Network) was observed from healthy controls to ODN to ODP, and a continuous decrease in the cingulo-opercular network was observed from healthy controls to ODN to ODP. Further, the feature ranking approach has shown that the whole-brain clustering coefficient and small-worldness are sensitive measures to classify ODP vs. ODN, as well as HCs. Looking at the brain regional network segregation, we have found that the cerebellum and limbic, fronto-parietal, and occipital lobes have higher ODP reductions than ODN and HCs. Our results suggest network topological measures, specifically whole-brain segregation and small-worldness decreases. At the network level, an increase in DMN and a decrease in the cingulo-opercular network could be used as biomarkers to characterize ODN and ODP.
神经科学一直围绕帕金森病(PD)的脑结构变化、功能活动和连接改变展开;然而,网络拓扑组织是如何改变的仍不清楚,尤其是在患有严重嗅觉减退的帕金森病患者中。在本研究中,我们使用静息态功能磁共振成像(rsfMRI)数据,研究了认知能力正常的帕金森病患者(ODN)、患有严重嗅觉减退的帕金森病患者(ODP)和健康对照者(HCs)的功能网络拓扑改变。我们使用了诸如网络隔离(聚类系数、模块性)、网络整合(参与系数、路径长度)、小世界特性、效率、中心性和 assortativity 等常用的图论指标来分析脑拓扑组织。然后,我们使用基于邻域成分分析对角适应的特征排序方法,旨在确定一种足够敏感以区分这三个不同组别的图论指标。我们注意到,与 ODN 和 HCs 相比,ODP 中的隔离、局部效率和小世界特性显著降低。相反,与 ODN 和 HCs 相比,我们在 ODP 中未发现网络整合方面的差异,这表明 ODP 中的脑网络变得碎片化。在脑网络层面,从健康对照者到 ODN 再到 ODP,默认模式网络(DMN)逐渐增加,从健康对照者到 ODN 再到 ODP,扣带回 - 脑岛网络持续减少。此外,特征排序方法表明,全脑聚类系数和小世界特性是区分 ODP 与 ODN 以及 HCs 的敏感指标。从脑区网络隔离来看,我们发现小脑以及边缘叶、额顶叶和枕叶在 ODP 中的减少比 ODN 和 HCs 更明显。我们的结果表明网络拓扑指标,特别是全脑隔离和小世界特性降低。在网络层面,DMN 的增加和扣带回 - 脑岛网络的减少可作为表征 ODN 和 ODP 的生物标志物。