LeMoyne Robert, Mastroianni Timothy, Whiting Donald, Tomycz Nestor
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:3606-3611. doi: 10.1109/EMBC44109.2020.9175408.
Deep brain stimulation enables highly specified patient-unique therapeutic intervention ameliorating the symptoms of Parkinson's disease. Inherent to the efficacy of deep brain stimulation is the acquisition of an optimal parameter configuration. Using conventional methods, the optimization process for tuning the deep brain stimulation system parameters can intrinsically induce strain on clinical resources. An advanced means of quantifying Parkinson's hand tremor and distinguishing between parameter settings would be highly beneficial. The conformal wearable and wireless inertial sensor system, such as the BioStamp nPoint, has a volumetric profile on the order of a bandage that readily enables convenient quantification of Parkinson's disease hand tremor. Furthermore, the BioStamp nPoint has been certified by the FDA as a 510(k) medical device for acquisition of medical grade data. Parametric variation of the amplitude parameter for deep brain stimulation can be quantified through the BioStamp nPoint conformal wearable and wireless inertial sensor system mounted to the dorsum of the hand. The acquired inertial sensor signal data can be wirelessly transmitted to a secure Cloud computing environment for post-processing. The quantified inertial sensor data for the parametric study of the effects of varying amplitude can be distinguished through machine learning classification. Software automation through Python can consolidate the inertial sensor data into a suitable feature set format. Using the multilayer perceptron neural network considerable machine learning classification accuracy is attained to distinguish multiple parametric settings of amplitude for deep brain stimulation, such as 4.0 mA, 2.5 mA, 1.0 mA, and 'Off' status representing a baseline. These findings constitute an advance toward the pathway of attaining real-time closed loop automated parameter configuration tuning for treatment of Parkinson's disease using deep brain stimulation.
深部脑刺激能够实现高度特定的、针对患者个体的治疗干预,从而改善帕金森病的症状。深部脑刺激疗效的内在要求是获得最佳参数配置。使用传统方法时,调整深部脑刺激系统参数的优化过程本质上会给临床资源带来压力。一种先进的量化帕金森病手部震颤并区分参数设置的方法将非常有益。适形可穿戴式无线惯性传感器系统,如BioStamp nPoint,其体积与绷带相当,能够方便地对帕金森病手部震颤进行量化。此外,BioStamp nPoint已获得美国食品药品监督管理局(FDA)的510(k)医疗器械认证,可用于获取医学级数据。通过安装在手背部的BioStamp nPoint适形可穿戴式无线惯性传感器系统,可以量化深部脑刺激幅度参数的变化。采集到的惯性传感器信号数据可以无线传输到安全的云计算环境进行后处理。通过机器学习分类,可以区分用于研究不同幅度影响的参数研究的量化惯性传感器数据。通过Python进行软件自动化,可以将惯性传感器数据整合为合适的特征集格式。使用多层感知器神经网络,可以获得相当高的机器学习分类准确率,以区分深部脑刺激幅度的多个参数设置,如4.0毫安、2.5毫安、1.0毫安以及代表基线的“关闭”状态。这些发现朝着使用深部脑刺激治疗帕金森病实现实时闭环自动参数配置调整的方向迈出了一步。