Ahn Minkyu, Lee Shane, Lauro Peter M, Schaeffer Erin L, Akbar Umer, Asaad Wael F
Department of Neuroscience, Brown University, Providence, RI 02912, United States of America. Robert J. and Nancy D. Carney Institute for Brain Science, Brown University, Providence, RI 02912, United States of America.
J Neural Eng. 2020 Aug 27;17(4):046042. doi: 10.1088/1741-2552/abaca3.
Identifying neural activity biomarkers of brain disease is essential to provide objective estimates of disease burden, obtain reliable feedback regarding therapeutic efficacy, and potentially to serve as a source of control for closed-loop neuromodulation. In Parkinson's disease (PD), microelectrode recordings (MER) are routinely performed in the basal ganglia to guide electrode implantation for deep brain stimulation (DBS). While pathologically-excessive oscillatory activity has been observed and linked to PD motor dysfunction broadly, the extent to which these signals provide quantitative information about disease expression and fluctuations, particularly at short timescales, is unknown. Furthermore, the degree to which informative signal features are similar or different across patients has not been rigorously investigated. We sought to determine the extent to which motor error in PD across patients can be decoded on a rapid timescale using spectral features of neural activity.
Here, we recorded neural activity from the subthalamic nucleus (STN) of subjects with PD undergoing awake DBS surgery while they performed an objective, continuous behavioral assessment that synthesized heterogenous PD motor manifestations to generate a scalar measure of motor dysfunction at short timescales. We then leveraged natural motor performance variations as a 'ground truth' to identify corresponding neurophysiological biomarkers.
Support vector machines using multi-spectral decoding of neural signals from the STN succeeded in tracking the degree of motor impairment at short timescales (as short as one second). Spectral power across a wide range of frequencies, beyond the classic 'β' oscillations, contributed to this decoding, and multi-spectral models consistently outperformed those generated using more isolated frequency bands. While generalized decoding models derived across subjects were able to estimate motor impairment, patient-specific models typically performed better.
These results demonstrate that quantitative information about short-timescale PD motor dysfunction is available in STN neural activity, distributed across various patient-specific spectral components, such that an individualized approach will be critical to fully harness this information for optimal disease tracking and closed-loop neuromodulation.
识别脑部疾病的神经活动生物标志物对于提供疾病负担的客观评估、获得有关治疗效果的可靠反馈以及可能作为闭环神经调节的控制源至关重要。在帕金森病(PD)中,常规在基底神经节进行微电极记录(MER)以指导深部脑刺激(DBS)的电极植入。虽然已观察到病理性过度振荡活动并广泛将其与PD运动功能障碍联系起来,但这些信号在多大程度上提供有关疾病表现和波动的定量信息,特别是在短时间尺度上,尚不清楚。此外,跨患者信息丰富的信号特征相似或不同的程度尚未得到严格研究。我们试图确定使用神经活动的频谱特征在快速时间尺度上对PD患者的运动误差进行解码的程度。
在此,我们记录了接受清醒DBS手术的PD患者丘脑底核(STN)的神经活动,同时他们进行了客观的、连续的行为评估,该评估综合了不同的PD运动表现,以在短时间尺度上生成运动功能障碍的标量测量。然后,我们利用自然运动表现变化作为“地面真值”来识别相应的神经生理生物标志物。
使用来自STN的神经信号的多谱解码的支持向量机成功地在短时间尺度(短至一秒)上跟踪运动损伤程度。超出经典“β”振荡的广泛频率范围内的频谱功率有助于这种解码,并且多谱模型始终优于使用更孤立频段生成的模型。虽然跨受试者推导的广义解码模型能够估计运动损伤,但患者特异性模型通常表现更好。
这些结果表明,关于短时间尺度PD运动功能障碍的定量信息存在于STN神经活动中,分布在各种患者特异性频谱成分中,因此个性化方法对于充分利用这些信息以实现最佳疾病跟踪和闭环神经调节至关重要。