Huo Weiguang, Angeles Paolo, Tai Yen F, Pavese Nicola, Wilson Samuel, Hu Michele T, Vaidyanathan Ravi
IEEE Trans Neural Syst Rehabil Eng. 2020 Jun;28(6):1397-1406. doi: 10.1109/TNSRE.2020.2978197. Epub 2020 Apr 13.
Parkinson's disease (PD) is the second most common neurodegenerative disease affecting millions worldwide. Bespoke subject-specific treatment (medication or deep brain stimulation (DBS)) is critical for management, yet depends on precise assessment cardinal PD symptoms - bradykinesia, rigidity and tremor. Clinician diagnosis is the basis of treatment, yet it allows only a cross-sectional assessment of symptoms which can vary on an hourly basis and is liable to inter- and intra-rater subjectivity across human examiners. Automated symptomatic assessment has attracted significant interest to optimise treatment regimens between clinician visits, however, no wearable has the capacity to simultaneously assess all three cardinal symptoms. Challenges in the measurement of rigidity, mapping muscle activity out-of-clinic and sensor fusion have inhibited translation. In this study, we address all through a novel wearable sensor system and machine learning algorithms. The sensor system is composed of a force-sensor, three inertial measurement units (IMUs) and four custom mechanomyography (MMG) sensors. The system was tested in its capacity to predict Unified Parkinson's Disease Rating Scale (UPDRS) scores based on quantitative assessment of bradykinesia, rigidity and tremor in PD patients. 23 PD patients were tested with the sensor system in parallel with exams conducted by treating clinicians and 10 healthy subjects were recruited as a comparison control group. Results prove the system accurately predicts UPDRS scores for all symptoms (85.4% match on average with physician assessment) and discriminates between healthy subjects and PD patients (96.6% on average). MMG features can also be used for remote monitoring of severity and fluctuations in PD symptoms out-of-clinic. This closed-loop feedback system enables individually tailored and regularly updated treatment, facilitating better outcomes for a very large patient population.
帕金森病(PD)是全球影响数百万人的第二常见神经退行性疾病。定制的针对个体的治疗方法(药物治疗或脑深部电刺激(DBS))对治疗至关重要,但依赖于对帕金森病主要症状——运动迟缓、僵硬和震颤的精确评估。临床医生的诊断是治疗的基础,但它只能对症状进行横断面评估,而症状可能每小时都在变化,并且不同检查者之间以及同一检查者内部都存在主观性。自动症状评估引起了人们极大的兴趣,以优化临床医生就诊之间的治疗方案,然而,没有可穿戴设备能够同时评估所有这三种主要症状。在测量僵硬程度、在门诊外绘制肌肉活动以及传感器融合方面的挑战阻碍了其转化应用。在本研究中,我们通过一种新型可穿戴传感器系统和机器学习算法来解决所有这些问题。该传感器系统由一个力传感器、三个惯性测量单元(IMU)和四个定制的肌动电流图(MMG)传感器组成。该系统基于对帕金森病患者运动迟缓、僵硬和震颤的定量评估,测试了其预测统一帕金森病评定量表(UPDRS)分数的能力。23名帕金森病患者使用该传感器系统进行测试,同时由治疗临床医生进行检查,并招募了10名健康受试者作为对照比较组。结果证明该系统能够准确预测所有症状的UPDRS分数(平均与医生评估的匹配度为85.4%),并区分健康受试者和帕金森病患者(平均为96.6%)。MMG特征还可用于在门诊外远程监测帕金森病症状的严重程度和波动情况。这种闭环反馈系统能够实现个性化定制且定期更新的治疗,为非常大量的患者群体带来更好的治疗效果。