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Predicting beta bursts from local field potentials to improve closed-loop DBS paradigms in Parkinson’s patients

机译:预测β从本地领域电位突发,以改善帕金森病人的闭环DBS范例

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Motor symptoms in Parkinson's disease (PD) correlate with an excess in synchrony in the beta frequency band (13-30Hz) of local field potentials recorded from basal ganglia circuits. Recent results have suggested that this abnormal activity arises as a result of changes in specific dynamical features of the underlying neural signatures. In particular, patterns of activity in the beta band have been shown to be structured in bursts of longer durations and higher amplitudes in untreated patients with PD. Closed-loop deep brain stimulation (DBS) paradigms that specifically target these pathological bursts of activity hold promises to help trim, and thus normalize, their abnormal behavior in real-time. Here, we developed classification algorithms that predict pathological beta bursts based on ongoing changes in LFP frequency dynamics. We then compared simulations of prediction-based DBS profiles with existing `adaptive DBS' alternatives. We show that model-driven stimulation profiles are more precise in restricting the delivery of stimulation to bursts that are considered pathological, while preserving physiological ones. The overall stimulation time required is also diminished, thus supporting longer battery life. These results represent a conceptual and algorithmic framework for the development of more precise DBS strategies that are selectively tailored to the electrophysiological profile of each patient.
机译:帕金森病(PD)的电机症状(PD)与来自BASAL Ganglia电路的局部现场电位的Beta频段(13-30Hz)的同步相关联。最近的结果表明,由于潜在的神经签名的特定动态特征的变化,这种异常活动产生。特别地,已经显示了β带中的活性模式以在未经处理的Pd患者中持续更长的持续时间和更高众巨大的突发。闭环深脑刺激(DBS)范式,专门针对这些病态的活动爆发的承担有望帮助修剪,从而正常化,实际情况下它们的异常行为。在这里,我们开发了基于LFP频率动态的持续变化来预测病理β突发的分类算法。然后,使用现有的“自适应DBS”替代品进行比较基于预测的DBS配置文件的模拟。我们表明,模型驱动的刺激型材更精确地限制刺激的刺激,以被认为是病理的爆发,同时保留生理学。所需的整体刺激时间也在减少,因此支持更长的电池寿命。这些结果代表了一种概念和算法框架,用于开发更精确的DBS策略,这些策略选择性地定制了每个患者的电生理学概况。

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