Department of Radiology and Nuclear Medicine, Xuanwu Hospital, Capital Medical University, Beijing, China.
Beijing Key Laboratory of Magnetic Resonance Imaging and Brain Informatics, Xuanwu Hospital, Beijing, China.
Hum Brain Mapp. 2024 Oct;45(14):e70026. doi: 10.1002/hbm.70026.
Metabolic network analysis in Parkinson's disease (PD) based on F-FDG PET has revealed PD-related metabolic patterns. However, alterations at the systemic metabolic network level and at the connection level between different brain regions still remain unknown. This study aimed to explore metabolic network alterations at multiple network levels among PD patients using an individual-specific metabolic network (ISMN) approach. F-FDG-PET images of patients with PD (n = 34) and healthy subjects (n = 47) were collected. Healthy subjects were further separated into reference group (n = 28) and control group (n = 19) randomly. Standardized uptake value normalized by lean body mass ratio (SULr) maps was calculated from the PET images. ISMNs were constructed based on SULr maps for PD patients and controls with reference to the reference group. Comparisons of nodal and edge features were performed between PD and control groups. Correlation analysis was conducted between multilevel network properties and clinical scales in PD group. A linear classifier was trained based on nodal or edge features to distinguish PD from controls. The distance from each patient's ISMN to the group-level difference network showed a negative correlation with Hoehn and Yahr stage (r = -0.390, p = .023). Eight nodes from ISMN were identified which exhibited significantly increased nodal degree in PD patients compared to controls (p < .05). Eleven edges were observed which demonstrated significant distinctions in Z-score values in comparisons to the control group (p < .05). Furthermore, the nodal and edge features showed comparable performances in PD diagnosis compared to the traditional SULr values, with area under the receiver operating characteristic curve larger than 0.91. The proposed ISMN approach revealed systemic metabolic deviations, as well as nodal and edge distinctions in PD, which might be supplementary to the existing findings on PD-related metabolic patterns.
基于 F-FDG PET 的帕金森病 (PD) 代谢网络分析揭示了与 PD 相关的代谢模式。然而,在系统代谢网络水平和不同脑区之间的连接水平上的改变仍然未知。本研究旨在使用个体特异性代谢网络 (ISMN) 方法探索 PD 患者在多个网络水平上的代谢网络改变。收集了 PD 患者 (n=34) 和健康对照者 (n=47) 的 F-FDG-PET 图像。健康对照者进一步随机分为参考组 (n=28) 和对照组 (n=19)。从 PET 图像中计算标准化摄取值与瘦体重比 (SULr) 图。根据参考组构建了 PD 患者和对照组的 SULr 图的 ISMN。在 PD 组中进行了节点和边缘特征的比较。在 PD 组中进行了多水平网络特性与临床量表之间的相关性分析。基于节点或边缘特征训练线性分类器以区分 PD 与对照组。每个患者的 ISMN 与组水平差异网络的距离与 Hoehn 和 Yahr 分期呈负相关 (r=-0.390, p=0.023)。与对照组相比,ISMN 中 8 个节点的节点度明显增加 (p<0.05)。与对照组相比,11 条边缘的 Z 分数值存在显著差异 (p<0.05)。此外,与传统的 SULr 值相比,节点和边缘特征在 PD 诊断中的表现相当,受试者工作特征曲线下面积大于 0.91。所提出的 ISMN 方法揭示了 PD 中的系统性代谢偏差以及节点和边缘差异,这可能对现有 PD 相关代谢模式的研究结果进行补充。