Omniscient Neurotechnology, Sydney, New South Wales, Australia.
Cingulum Health, Sydney, New South Wales, Australia.
Brain Behav. 2023 May;13(5):e2914. doi: 10.1002/brb3.2914. Epub 2023 Mar 22.
Data-driven approaches to transcranial magnetic stimulation (TMS) might yield more consistent and symptom-specific results based on individualized functional connectivity analyses compared to previous traditional approaches due to more precise targeting. We provide a proof of concept for an agile target selection paradigm based on using connectomic methods that can be used to detect patient-specific abnormal functional connectivity, guide treatment aimed at the most abnormal regions, and optimize the rapid development of new hypotheses for future study.
We used the resting-state functional MRI data of 28 patients with medically refractory generalized anxiety disorder to perform agile target selection based on abnormal functional connectivity patterns between the Default Mode Network (DMN) and Central Executive Network (CEN). The most abnormal areas of connectivity within these regions were selected for subsequent targeted TMS treatment by a machine learning based on an anomalous functional connectivity detection matrix. Areas with mostly hyperconnectivity were stimulated with continuous theta burst stimulation and the converse with intermittent theta burst stimulation. An image-guided accelerated theta burst stimulation paradigm was used for treatment.
Areas 8Av and PGs demonstrated consistent abnormalities, particularly in the left hemisphere. Significant improvements were demonstrated in anxiety symptoms, and few, minor complications were reported (fatigue (n = 2) and headache (n = 1)).
Our study suggests that a left-lateralized DMN is likely the primary functional network disturbed in anxiety-related disorders, which can be improved by identifying and targeting abnormal regions with a rapid, data-driven, agile aTBS treatment on an individualized basis.
与传统方法相比,基于个体化功能连接分析的经颅磁刺激(TMS)数据驱动方法可能会产生更一致和更具症状特异性的结果,因为其具有更精确的靶向性。我们提供了一个基于连接组学方法的敏捷目标选择范例的概念验证,该方法可用于检测患者特定的异常功能连接,指导针对最异常区域的治疗,并优化针对未来研究的新假设的快速发展。
我们使用 28 名药物难治性广泛性焦虑症患者的静息态功能 MRI 数据,根据默认模式网络(DMN)和中央执行网络(CEN)之间的异常功能连接模式进行敏捷目标选择。基于异常功能连接检测矩阵,使用机器学习选择这些区域内连接最异常的区域进行后续靶向 TMS 治疗。具有高度连通性的区域接受连续 theta 爆发刺激,反之则接受间歇性 theta 爆发刺激。使用图像引导的加速 theta 爆发刺激方案进行治疗。
区域 8Av 和 PGs 表现出一致的异常,特别是在左半球。焦虑症状显著改善,仅报告了少数轻微并发症(疲劳(n=2)和头痛(n=1))。
我们的研究表明,左侧化的 DMN 可能是与焦虑相关障碍中主要受干扰的功能网络,通过识别和靶向异常区域,采用快速、数据驱动、个体化的敏捷 aTBS 治疗,可以改善这种情况。