Individual Structural Covariance Network Predicts Long-Term Motor Improvement in Parkinson Disease with Subthalamic Nucleus Deep Brain Stimulation.

Yu Diao, Hutao Xie, Yanwen Wang, Baotian Zhao, Anchao Yang, Jianguo Zhang
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Abstract

Background and purpose: The efficacy of long-term chronic subthalamic nucleus deep brain stimulation (STN-DBS) in treating Parkinson disease (PD) exhibits substantial variability among individuals. The preoperative identification of suitable deep brain stimulation (DBS) candidates through predictive means becomes crucial. Our study aims to investigate the predictive value of characterizing individualized structural covariance networks for long-term efficacy of DBS, offering patients a precise and cost-effective preoperative screening tool.

Materials and methods: We included 138 patients with PD and 40 healthy controls. We developed individualized structural covariance networks from T1-weighted images utilizing network template perturbation, and computed the networks' topological characteristics. Patients were categorized according to their long-term motor improvement following STN-DBS. Intergroup analyses were conducted on individual network edges and topological indices, alongside correlation analyses with long-term outcomes for the entire patient cohort. Finally, machine learning algorithms were employed for regression and classification to predict post-DBS motor improvement.

Results: Among the patients with PD, 6 edges (left middle frontal and left caudate nucleus, right olfactory and right insula, left superior medial frontal gyrus and right insula, right middle frontal and left paracentral lobule, right middle frontal and cerebellum, left lobule VIIb of the cerebellum and the vermis of the cerebellum) exhibited significant results in intergroup comparisons and correlation analyses. Increased degree centrality and local efficiency of the cerebellum, parahippocampal gyrus, and postcentral gyrus were associated with DBS improvement. A regression model constructed from these 6 edges revealed a significant correlation between predicted and observed changes in the unified PD rating scale (R = 0.671, P < .001) and receiver operating characteristic analysis demonstrated an area under the curve of 0.802, effectively distinguishing between patients with good and moderate improvement post-DBS.

Conclusions: Our findings reveal the link between individual structural covariance network fingerprints in patients with PD and long-term motor outcome following STN-DBS. Additionally, binary and continuous cerebellum-basal ganglia-frontal structural covariance network edges have emerged as potential predictive biomarkers for DBS motor outcome.

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个体结构协方差网络预测 STN-DBS 治疗帕金森病的长期运动改善效果
背景和目的:长期慢性丘脑下核深部脑刺激(STN-DBS)治疗帕金森病(PD)的疗效在个体之间存在很大差异。通过预测手段在术前确定合适的 DBS 候选者变得至关重要。我们的研究旨在探讨表征个体化结构协方差网络对 DBS 长期疗效的预测价值,为患者提供精确且经济有效的术前筛查工具:我们纳入了 138 名帕金森病患者和 40 名健康对照者。我们利用网络模板扰动(Network Template Perturbation)技术从 T1 加权图像中建立了个性化的结构协方差网络,并计算了网络的拓扑特征。我们根据患者在 STN-DBS 治疗后的长期运动改善情况对其进行分类。对单个网络边缘和拓扑指数进行了组间分析,同时还对整个患者队列的长期疗效进行了相关分析。最后,采用机器学习(ML)算法进行回归和分类,以预测 DBS 后的运动改善情况:结果:在帕金森病患者中,有六个边缘(左额叶中部和左尾状核、右嗅觉和右脑岛、左额叶内上回和右脑岛、右额叶中部和左侧旁中心小叶、右额叶中部和小脑、左侧小脑第 VIIb 小叶和小脑蚓部)在组间比较和相关性分析中表现出显著结果。小脑、海马旁回和中央后回的度中心性和局部效率的提高与 DBS 的改善有关。根据这六个边缘构建的回归模型显示,统一帕金森病评分量表的预测变化与观察变化之间存在显著相关性(R=0.671,PC结论:我们的研究结果揭示了帕金森病患者个体结构协方差网络指纹与 STN-DBS 治疗后长期运动结果之间的联系。此外,二元和连续的小脑-基底节-额叶结构协方差网络边缘已成为 DBS 运动结果的潜在预测性生物标志物。缩写:丘脑下核深部脑刺激 = STN-DBS;帕金森病 = PD;机器学习 = ML);网络模板扰动 = NTP。
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