Unit of Medical Technology and Intelligent Information Systems, Department of Materials Science and Engineering, University of Ioannina, GR 45110 Ioannina, Greece.
PD Neurotechnology Ltd., GR 45500 Ioannina, Greece.
Sensors (Basel). 2023 Apr 12;23(8):3902. doi: 10.3390/s23083902.
Parkinson's disease (PD) is characterized by a variety of motor and non-motor symptoms, some of them pertaining to gait and balance. The use of sensors for the monitoring of patients' mobility and the extraction of gait parameters, has emerged as an objective method for assessing the efficacy of their treatment and the progression of the disease. To that end, two popular solutions are pressure insoles and body-worn IMU-based devices, which have been used for precise, continuous, remote, and passive gait assessment. In this work, insole and IMU-based solutions were evaluated for assessing gait impairment, and were subsequently compared, producing evidence to support the use of instrumentation in everyday clinical practice. The evaluation was conducted using two datasets, generated during a clinical study, in which patients with PD wore, simultaneously, a pair of instrumented insoles and a set of wearable IMU-based devices. The data from the study were used to extract and compare gait features, independently, from the two aforementioned systems. Subsequently, subsets comprised of the extracted features, were used by machine learning algorithms for gait impairment assessment. The results indicated that insole gait kinematic features were highly correlated with those extracted from IMU-based devices. Moreover, both had the capacity to train accurate machine learning models for the detection of PD gait impairment.
帕金森病(PD)的特征是多种运动和非运动症状,其中一些与步态和平衡有关。使用传感器监测患者的活动能力并提取步态参数,已成为评估其治疗效果和疾病进展的客观方法。为此,两种流行的解决方案是压力鞋垫和基于身体佩戴的 IMU 设备,它们已被用于精确、连续、远程和被动的步态评估。在这项工作中,评估了基于鞋垫和 IMU 的解决方案在评估步态障碍方面的性能,并对它们进行了比较,为在日常临床实践中使用仪器提供了证据支持。评估使用了两个数据集,这些数据集是在一项临床研究中生成的,在该研究中,PD 患者同时佩戴了一对装有仪器的鞋垫和一组基于可穿戴的 IMU 设备。该研究的数据被用于从上述两个系统中独立提取和比较步态特征。随后,使用机器学习算法对包含提取特征的子集进行步态障碍评估。结果表明,鞋垫步态运动学特征与从基于 IMU 的设备中提取的特征高度相关。此外,两者都有能力训练用于检测 PD 步态障碍的准确机器学习模型。