Department of Radiology, The Second Affiliated Hospital, Zhejiang University School of Medicine, 310009 Hangzhou, China.
Department of Neurology, The Second Affiliated Hospital, Zhejiang University School of Medicine, 310009 Hangzhou, China.
Neurobiol Dis. 2023 Aug;184:106216. doi: 10.1016/j.nbd.2023.106216. Epub 2023 Jun 28.
Gait impairment is a common symptom of Parkinson's disease (PD), but its neural signature remains unclear due to the interindividual variability of gait performance. Identifying a robust gait-brain correlation at the individual level would provide insight into a generalizable neural basis of gait impairment. In this context, this study aimed to detect connectome that can predict individual gait function of PD, and follow-up analyses assess the molecular architecture underlying the connectome by relating it to the neurotransmitter-receptor/transporter density maps. Resting-state functional magnetic resonance imaging was used to detect the functional connectome, and gait function was assessed via a 10 m-walking test. The functional connectome was first detected within drug-naive patients (N = 48) by using connectome-based predictive modeling following cross-validation and then successfully validated within drug-managed patients (N = 30). The results showed that the motor, subcortical, and visual networks played an important role in predicting gait function. The connectome generated from patients failed to predict the gait function of 33 normal controls (NCs) and had distinct connection patterns compared to NCs. The negative connections (connection negatively correlated with 10 m-walking-time) pattern of the PD connectome was associated with the density of the D2 receptor and VAChT transporter. These findings suggested that gait-associated functional alteration induced by PD pathology differed from that induced by aging degeneration. The brain dysfunction related to gait impairment was more commonly found in regions expressing more dopaminergic and cholinergic neurotransmitters, which may aid in developing targeted treatments.
步态障碍是帕金森病(PD)的常见症状,但由于步态表现的个体间可变性,其神经特征仍不清楚。在个体水平上识别稳健的步态-大脑相关性将深入了解步态障碍的可推广神经基础。在这种情况下,本研究旨在检测能够预测 PD 个体步态功能的连接组,并通过将其与神经递质-受体/转运体密度图谱相关联,对连接组进行后续分析以评估其分子结构。使用静息态功能磁共振成像来检测功能连接组,通过 10 米步行测试评估步态功能。首先通过交叉验证在未经药物治疗的患者(N=48)中使用基于连接组的预测模型来检测功能连接组,然后在药物治疗的患者(N=30)中成功验证。结果表明,运动、皮质下和视觉网络在预测步态功能方面起着重要作用。从患者中生成的连接组无法预测 33 名正常对照(NC)的步态功能,并且与 NC 相比具有不同的连接模式。PD 连接组的负连接(与 10 米步行时间呈负相关的连接)模式与 D2 受体和 VAChT 转运体的密度有关。这些发现表明,由 PD 病理引起的与步态相关的功能改变与由衰老退变引起的改变不同。与步态障碍相关的大脑功能障碍在表达更多多巴胺和胆碱能神经递质的区域更为常见,这可能有助于开发靶向治疗方法。