IEEE Trans Neural Syst Rehabil Eng. 2024;32:3719-3728. doi: 10.1109/TNSRE.2024.3469576. Epub 2024 Oct 9.
The pathogenesis of essential tremor (ET) remains unclear, and the efficacy of related drug treatment is inadequate for proper tremor control. Hence, in the current study, consecutive low-frequency repetitive transcranial magnetic stimulation (rTMS) modulation on cerebellum was accomplished in a population of ET patients, along with pre- and post-treatment resting-state electroencephalogram (EEG) networks being constructed. The results primarily clarified the decreasing of resting-state network interactions occurring in ET, especially the weaker frontal-parietal connectivity, compared to healthy individuals. While after the rTMS stimulation, promotions in both network connectivity and properties, as well as clinical scales, were identified. Furthermore, significant correlations between network characteristics and clinical scale scores enabled the development of predictive models for assessing rTMS intervention efficacy. Using a multivariable linear model, clinical scales after one-month rTMS treatment were accurately predicted, underscoring the potential of brain networks in evaluating rTMS effectiveness for ET. The findings consistently demonstrated that repetitive low-frequency rTMS neuromodulation on cerebellum can significantly improve the manifestations of ET, and individual networks will be reliable tools for evaluating the rTMS efficacy, thereby guiding personalized treatment strategies for ET patients.
特发性震颤(ET)的发病机制仍不清楚,相关药物治疗的疗效也不足以有效控制震颤。因此,在目前的研究中,对一群 ET 患者进行了小脑连续低频重复经颅磁刺激(rTMS)调节,并构建了治疗前后的静息态脑电图(EEG)网络。结果主要阐明了 ET 中存在的静息态网络相互作用的减少,特别是与健康个体相比,额顶连接较弱。而在 rTMS 刺激后,网络连接和特性以及临床量表都得到了改善。此外,网络特征与临床量表评分之间的显著相关性使得能够开发用于评估 rTMS 干预效果的预测模型。使用多变量线性模型,可以准确预测 rTMS 治疗一个月后的临床量表,这强调了脑网络在评估 rTMS 对 ET 有效性方面的潜力。研究结果一致表明,小脑重复低频 rTMS 神经调节可显著改善 ET 的表现,个体网络将是评估 rTMS 疗效的可靠工具,从而为 ET 患者指导个性化治疗策略。