IEEE J Biomed Health Inform. 2018 Nov;22(6):1765-1774. doi: 10.1109/JBHI.2018.2865218. Epub 2018 Aug 13.
Inertial measurement units (IMUs) have a long-lasting popularity in a variety of industrial applications from navigation systems to guidance and robotics. Their use in clinical practice is now becoming more common, thanks to miniaturization and the ability to integrate on-board computational and decision-support features. IMU-based gait analysis is a paradigm of this evolving process, and in this study its use for the assessment of Parkinson's disease (PD) is comprehensively analyzed. Data coming from 25 individuals with different levels of PD symptoms severity and an equal number of age-matched healthy individuals were included into a set of 6 different machine learning (ML) techniques, processing 18 different configurations of gait parameters taken from 8 IMU sensors. Classification accuracy was calculated for each configuration and ML technique, adding two meta-classifiers based on the results obtained from all individual techniques through majority of voting, with two different weighting schemes. Average classification accuracy ranged between 63% and 80% among classifiers and increased up to 96% for one meta-classifier configuration. Configurations based on a statistical preselection process showed the highest average classification accuracy. When reducing the number of sensors, features based on the joint range of motion were more accurate than those based on spatio-temporal parameters. In particular, best results were obtained with the knee range of motion, calculated with four IMUs, placed bilaterally. The obtained findings provide data-driven evidence on which combination of sensor configurations and classification methods to be used during IMU-based gait analysis to grade the severity level of PD.
惯性测量单元 (IMU) 在从导航系统到制导和机器人等各种工业应用中一直很受欢迎。由于其小型化和能够集成板载计算和决策支持功能,它们在临床实践中的使用现在变得越来越普遍。基于 IMU 的步态分析就是这种不断发展的过程的一个范例,在这项研究中,全面分析了它在帕金森病 (PD) 评估中的应用。来自 25 名具有不同 PD 症状严重程度的个体和数量相等的年龄匹配健康个体的数据被纳入了 6 种不同机器学习 (ML) 技术的一组中,对来自 8 个 IMU 传感器的 18 种不同的步态参数配置进行了处理。为每个配置和 ML 技术计算了分类准确性,并通过多数投票从所有个体技术的结果中添加了两个基于元的分类器,具有两种不同的加权方案。在分类器之间,分类准确性的平均范围在 63%到 80%之间,对于一个元分类器配置,增加到 96%。基于统计预选过程的配置显示出最高的平均分类准确性。当减少传感器数量时,基于关节运动范围的特征比基于时空参数的特征更准确。特别是,使用四个 IMU 双侧放置的膝关节运动范围计算得出的结果最佳。所得结果为基于 IMU 的步态分析中使用哪种传感器配置和分类方法组合来对 PD 的严重程度进行分级提供了数据驱动的证据。