Phokaewvarangkul Onanong, Vateekul Peerapon, Wichakam Itsara, Anan Chanawat, Bhidayasiri Roongroj
Department of Medicine, Faculty of Medicine, Chulalongkorn Centre of Excellence for Parkinson's Disease and Related Disorders, Chulalongkorn University and King Chulalongkorn Memorial Hospital, Bangkok, Thailand.
Department of Computer Engineering, Faculty of Engineering, Chulalongkorn University, Bangkok, Thailand.
Front Aging Neurosci. 2021 Sep 10;13:727654. doi: 10.3389/fnagi.2021.727654. eCollection 2021.
Recent studies have identified that peripheral stimulation in Parkinson's disease (PD) is effective in tremor reduction, indicating that a peripheral feedback loop plays an important role in the tremor reset mechanism. This was an open-label, quasi-experimental, pre- and post-test design, single-blind, single-group study involving 20 tremor-dominant PD patients. The objective of this study is to explore the effect of electrical muscle stimulation (EMS) as an adjunctive treatment for resting tremor during "on" period and to identify the best machine learning model to predict the suitable stimulation level that will yield the longest period of tremor reduction or tremor reset time. In this study, we used a Parkinson's glove to evaluate, stimulate, and quantify the tremors of PD patients. This adjustable glove incorporates a 3-axis gyroscope to measure tremor signals and an EMS to provide an on-demand muscle stimulation to suppress tremors. Machine learning models were applied to identify the suitable pulse amplitude (stimulation level) in five classes that led to the longest tremor reset time. The study was registered at the www.clinicaltrials.gov under the name "The Study of Rest Tremor Suppression by Using Electrical Muscle Stimulation" (NCT02370108). Twenty tremor-dominant PD patients were recruited. After applying an average pulse amplitude of 6.25 (SD 2.84) mA and stimulation period of 440.7 (SD 560.82) seconds, the total time of tremor reduction, or tremor reset time, was 329.90 (SD 340.91) seconds. A significant reduction in tremor parameters during stimulation was demonstrated by a reduction of Unified Parkinson's Disease Rating Scale (UPDRS) scores, and objectively, with a reduction of gyroscopic data ( < 0.05, each). None of the subjects reported any serious adverse events. We also compared gyroscopic data with five machine learning techniques: Logistic Regression, Random Forest, Support Vector Machine (SVM), Neural Network (NN), and Long-Short-Term-Memory (LSTM). The machine learning model that gave the highest accuracy was LSTM, which obtained: accuracy = 0.865 and macro-F1 = 0.736. This study confirms the efficacy of EMS in the reduction of resting tremors in PD. LSTM was identified as the most effective model for predicting pulse amplitude that would elicit the longest tremor reset time. Our study provides further insight on the tremor reset mechanism in PD.
近期研究发现,帕金森病(PD)中的外周刺激对减轻震颤有效,这表明外周反馈回路在震颤重置机制中起重要作用。这是一项开放标签、准实验性、前后测试设计、单盲、单组研究,涉及20名以震颤为主的PD患者。本研究的目的是探讨肌肉电刺激(EMS)作为“开”期静止性震颤辅助治疗的效果,并确定最佳机器学习模型以预测能产生最长震颤减轻期或震颤重置时间的合适刺激水平。在本研究中,我们使用帕金森手套来评估、刺激和量化PD患者的震颤。这种可调节手套集成了一个三轴陀螺仪来测量震颤信号和一个EMS,以提供按需肌肉刺激来抑制震颤。应用机器学习模型来确定导致最长震颤重置时间的五类合适脉冲幅度(刺激水平)。该研究在www.clinicaltrials.gov上注册,名称为“使用肌肉电刺激抑制静止性震颤的研究”(NCT02370108)。招募了20名以震颤为主的PD患者。在施加平均脉冲幅度为6.25(标准差2.84)mA和刺激期为440.7(标准差560.82)秒后,震颤减轻的总时间或震颤重置时间为329.90(标准差340.91)秒。刺激期间震颤参数的显著降低通过统一帕金森病评定量表(UPDRS)评分的降低得以证明,客观上,通过陀螺仪数据的降低(均<0.05)。没有受试者报告任何严重不良事件。我们还将陀螺仪数据与五种机器学习技术进行了比较:逻辑回归、随机森林、支持向量机(SVM)、神经网络(NN)和长短期记忆(LSTM)。给出最高准确率的机器学习模型是LSTM,其结果为:准确率=0.865,宏F1=0.736。本研究证实了EMS在减轻PD静止性震颤方面的疗效。LSTM被确定为预测能引发最长震颤重置时间的脉冲幅度的最有效模型。我们的研究为PD中的震颤重置机制提供了进一步的见解。