Griffiths Benjamin, Diment Laura, Granat Malcolm H
School of Health and Society, University of Salford, Salford M5 4WT, UK.
People Powered Prosthetic Group, University of Southampton, Southampton SO17 1BJ, UK.
Sensors (Basel). 2021 Nov 10;21(22):7458. doi: 10.3390/s21227458.
There are currently limited data on how prosthetic devices are used to support lower-limb prosthesis users in their free-living environment. Possessing the ability to monitor a patient's physical behaviour while using these devices would enhance our understanding of the impact of different prosthetic products. The current approaches for monitoring human physical behaviour use a single thigh or wrist-worn accelerometer, but in a lower-limb amputee population, we have the unique opportunity to embed a device within the prosthesis, eliminating compliance issues. This study aimed to develop a model capable of accurately classifying postures (sitting, standing, stepping, and lying) by using data from a single shank-worn accelerometer. Free-living posture data were collected from 14 anatomically intact participants and one amputee over three days. A thigh worn activity monitor collected labelled posture data, while a shank worn accelerometer collected 3-axis acceleration data. Postures and the corresponding shank accelerations were extracted in window lengths of 5-180 s and used to train several machine learning classifiers which were assessed by using stratified cross-validation. A random forest classifier with a 15 s window length provided the highest classification accuracy of 93% weighted average F-score and between 88 and 98% classification accuracy across all four posture classes, which is the best performance achieved to date with a shank-worn device. The results of this study show that data from a single shank-worn accelerometer with a machine learning classification model can be used to accurately identify postures that make up an individual's daily physical behaviour. This opens up the possibility of embedding an accelerometer-based activity monitor into the shank component of a prosthesis to capture physical behaviour information in both above and below-knee amputees. The models and software used in this study have been made open source in order to overcome the current restrictions of applying activity monitoring methods to lower-limb prosthesis users.
目前,关于在自由生活环境中,假肢装置如何用于支持下肢假肢使用者的数据有限。具备在患者使用这些装置时监测其身体行为的能力,将增进我们对不同假肢产品影响的理解。当前监测人类身体行为的方法使用单个大腿或手腕佩戴的加速度计,但对于下肢截肢者群体,我们有独特的机会将设备嵌入假肢中,从而消除依从性问题。本研究旨在开发一种模型,该模型能够通过使用来自单个小腿佩戴的加速度计的数据准确分类姿势(坐、站、步和躺)。在三天时间内,从14名解剖结构完整的参与者和一名截肢者那里收集了自由生活姿势数据。一个大腿佩戴的活动监测器收集标记的姿势数据,而一个小腿佩戴的加速度计收集三轴加速度数据。在5 - 180秒的窗口长度内提取姿势和相应的小腿加速度,并用于训练几个机器学习分类器,这些分类器通过分层交叉验证进行评估。窗口长度为15秒的随机森林分类器提供了最高的分类准确率,加权平均F分数为93%,在所有四个姿势类别中的分类准确率在88%至98%之间,这是迄今为止小腿佩戴设备取得的最佳性能。本研究结果表明,来自单个小腿佩戴的加速度计的数据与机器学习分类模型可用于准确识别构成个体日常身体行为的姿势。这为将基于加速度计的活动监测器嵌入假肢的小腿部件中以获取膝上和膝下截肢者的身体行为信息开辟了可能性。本研究中使用的模型和软件已开源,以克服目前将活动监测方法应用于下肢假肢使用者的限制。