Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, Oxford, UK; MRC Brain Networks Dynamics Unit, Nuffield Department of Clinical Neurosciences, University of Oxford, Oxford, UK.
Department of Neurological Surgery, Weill Institute for Neurosciences, University of California San Francisco, San Francisco, CA, USA.
Brain Stimul. 2023 Sep-Oct;16(5):1412-1424. doi: 10.1016/j.brs.2023.08.026. Epub 2023 Sep 6.
The exact mechanisms of deep brain stimulation (DBS) are still an active area of investigation, in spite of its clinical successes. This is due in part to the lack of understanding of the effects of stimulation on neuronal rhythms. Entrainment of brain oscillations has been hypothesised as a potential mechanism of neuromodulation. A better understanding of entrainment might further inform existing methods of continuous DBS, and help refine algorithms for adaptive methods. The purpose of this study is to develop and test a theoretical framework to predict entrainment of cortical rhythms to DBS across a wide range of stimulation parameters.
We fit a model of interacting neural populations to selected features characterising PD patients' off-stimulation finely-tuned gamma rhythm recorded through electrocorticography. Using the fitted models, we predict basal ganglia DBS parameters that would result in 1:2 entrainment, a special case of sub-harmonic entrainment observed in patients and predicted by theory.
We show that the neural circuit models fitted to patient data exhibit 1:2 entrainment when stimulation is provided across a range of stimulation parameters. Furthermore, we verify key features of the region of 1:2 entrainment in the stimulation frequency/amplitude space with follow-up recordings from the same patients, such as the loss of 1:2 entrainment above certain stimulation amplitudes.
Our results reveal that continuous, constant frequency DBS in patients may lead to nonlinear patterns of neuronal entrainment across stimulation parameters, and that these responses can be predicted by modelling. Should entrainment prove to be an important mechanism of therapeutic stimulation, our modelling framework may reduce the parameter space that clinicians must consider when programming devices for optimal benefit.
尽管深部脑刺激 (DBS) 已在临床上取得成功,但刺激对神经元节律的影响仍缺乏了解,因此其确切机制仍在研究中。这部分是由于对刺激引起的脑振荡同步现象的潜在机制理解不足。振荡同步已被假设为神经调节的一种潜在机制。更好地理解同步可能会进一步为现有的连续 DBS 方法提供信息,并有助于改进自适应方法的算法。本研究的目的是开发和测试一种理论框架,以预测在广泛的刺激参数范围内 DBS 对皮质节律的同步。
我们根据记录的帕金森病患者去刺激精细调谐的伽马节律的特征,拟合了一个相互作用的神经元群体模型。使用拟合的模型,我们预测了基底节 DBS 参数,这些参数将导致 1:2 同步,这是一种在患者中观察到的亚谐波同步的特殊情况,并且已被理论预测。
我们表明,拟合患者数据的神经回路模型在提供一系列刺激参数时会表现出 1:2 同步。此外,我们通过对同一患者的后续记录验证了刺激频率/幅度空间中 1:2 同步区域的关键特征,例如在某些刺激幅度以上会失去 1:2 同步。
我们的结果表明,在患者中连续的、恒定频率的 DBS 可能导致刺激参数下神经元同步的非线性模式,并且这些反应可以通过建模来预测。如果同步被证明是治疗性刺激的重要机制,我们的建模框架可以减少临床医生在为最佳效果编程设备时必须考虑的参数空间。