利用 fNIRS 探索帕金森病的运动皮层功能连通性

Edgar Guevara , Eleazar Samuel Kolosovas-Machuca , Ildefonso Rodríguez-Leyva
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引用次数: 0

摘要

本研究提出使用功能性近红外光谱(fNIRS)作为研究帕金森病(PD)运动皮层功能连接的非侵入性替代方法。fNIRS 探头覆盖了双侧运动区,并应用图论网络分析和基于网络的统计方法研究了不同组间网络拓扑结构和特定子网络的差异。计算并比较了帕金森病患者和对照组在不同稀疏阈值下的小世界属性,如聚类系数、特征路径长度和小世界指数。与对照组相比,帕金森病患者的聚类系数和小世界指数较低。基于网络的统计在帕金森氏症组中发现了一个断开的、主要是双侧的子网络,由九条边和十个节点组成。平均功能连通性与两组的聚类系数和小世界指数呈正相关,但对照组的相关性更大。这两个属性之间的强耦合表明,子网络内更强的功能连通性可能会导致对照组的运动功能网络更加有效。这些结果提供了对帕金森病患者运动皮层功能连通性和网络组织改变的见解,证明了 fNIRS 在研究该疾病症状的神经基础方面的潜力。
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Exploring motor cortex functional connectivity in Parkinson's disease using fNIRS

This work proposes using functional Near-Infrared Spectroscopy (fNIRS) as a non-invasive alternative to study the motor cortex's functional connectivity in Parkinson’s Disease (PD). The bilateral motor regions were covered with the fNIRS probe, and graph theoretical network analysis and network-based statistics were applied to investigate differences in network topology and specific sub-networks between groups. Small-world properties like clustering coefficient, characteristic path length, and small-world index were computed and compared between PD patients and controls across various sparsity thresholds. PD patients exhibited a lower clustering coefficient and small-world index than controls. Network-based statistics identified a disconnected, mostly bilateral subnetwork in the PD group comprising nine edges and ten nodes. Mean functional connectivity was positively correlated with both groups' clustering coefficient and small world index, albeit this correlation was greater in the control group. A strong coupling between these two properties suggests that greater functional connectivity within the subnetwork may cause a more effective functional motor network in controls. The results provide insights into alterations in functional connectivity and network organization in the motor cortex of individuals with PD, demonstrating the potential of fNIRS for studying the neural basis of symptoms in this disease.

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