Precision Neuroscience & Neuromodulation Program, Gordon Center for Medical Imaging, Department of Radiology, Massachusetts General Hospital, Harvard Medical School, Boston, MA, USA; Department of Neuroscience & Padova Neuroscience Center, University of Padova, Padova, Italy.
Department of Neuroscience, Imaging and Clinical Sciences, University "G. d'Annunzio", Chieti, Italy; Krembil Centre for Neuroinformatics, Centre for Addiction & Mental Health, Toronto, Canada.
Brain Stimul. 2022 Nov-Dec;15(6):1418-1431. doi: 10.1016/j.brs.2022.09.011. Epub 2022 Oct 14.
In recent years, the possibility to noninvasively interact with the human brain has led to unprecedented diagnostic and therapeutic opportunities. However, the vast majority of approved interventions and approaches still rely on anatomical landmarks and rarely on the individual structure of networks in the brain, drastically reducing the potential efficacy of neuromodulation.
Here we implemented a target search algorithm leveraging on mathematical tools from Network Control Theory (NCT) and whole brain connectomics analysis. By means of computational simulations, we aimed to identify the optimal stimulation target(s)- at the individual brain level- capable of reaching maximal engagement of the stimulated networks' nodes.
At the model level, in silico predictions suggest that stimulation of NCT-derived cerebral sites might induce significantly higher network engagement, compared to traditionally employed neuromodulation sites, demonstrating NCT to be a useful tool in guiding brain stimulation. Indeed, NCT allows us to computationally model different stimulation scenarios tailored on the individual structural connectivity profiles and initial brain states.
The use of NCT to computationally predict TMS pulse propagation suggests that individualized targeting is crucial for more successful network engagement. Future studies will be needed to verify such prediction in real stimulation scenarios.
近年来,非侵入式与人类大脑互动的可能性带来了前所未有的诊断和治疗机会。然而,绝大多数已批准的干预措施和方法仍然依赖于解剖学标志物,很少依赖于大脑网络的个体结构,这极大地降低了神经调节的潜在效果。
本研究利用网络控制理论(NCT)和全脑连接组学分析的数学工具,实施了一种目标搜索算法。通过计算模拟,旨在确定能够达到最大程度激活受刺激网络节点的最佳刺激靶点(个体大脑水平)。
在模型水平上,计算机预测表明,与传统使用的神经调节靶点相比,NCT 衍生的脑区刺激可能会引起更高的网络激活,证明 NCT 是指导脑刺激的有用工具。事实上,NCT 允许我们针对个体结构连接图谱和初始大脑状态,计算出不同的刺激场景。
使用 NCT 来计算预测 TMS 脉冲传播表明,个体化靶向对于更成功的网络激活至关重要。未来的研究将需要在真实的刺激场景中验证这一预测。