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使用惯性传感器对康复锻炼进行依从性监测:一项临床验证研究。

Adherence monitoring of rehabilitation exercise with inertial sensors: A clinical validation study.

作者信息

Bavan Luckshman, Surmacz Karl, Beard David, Mellon Stephen, Rees Jonathan

机构信息

Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences, University of Oxford, Botnar Research Centre, Old Road, Oxford, OX3 7LD, United Kingdom.

McLaren Applied Technologies, McLaren Technology Centre, Chertsey Road, Woking, GU21 4YH, United Kingdom.

出版信息

Gait Posture. 2019 May;70:211-217. doi: 10.1016/j.gaitpost.2019.03.008. Epub 2019 Mar 16.

Abstract

BACKGROUND

Rehabilitation has an established role in the management of a wide range of musculoskeletal conditions. Much of this treatment relies on self-directed exercises at home, where adherence of execution is unknown. Demonstrating treatment fidelity is necessary to draw conclusions about the efficacy of rehabilitation interventions in both clinical and research settings. There is a lack of tools and methods to achieve this.

RESEARCH QUESTION

This study aims to evaluate the feasibility of using a single inertial sensor to recognise and classify shoulder rehabilitation activity using supervised machine learning techniques.

METHODS

Twenty patients with shoulder pain were monitored performing five rehabilitation exercises routinely prescribed for their condition. Accelerometer, gyroscope and magnetometer data were collected via a device mounted onto an arm sleeve. Non-specific motion data was included in the analysis. Time and frequency domain features were calculated from labelled data segments and ranked in terms of their predictive importance using the ReliefF algorithm. Selected features were used to train four supervised learning algorithms: decision tree, k-nearest neighbour, support vector machine and random forests. Performance of algorithms in accurately classifying exercise activity was evaluated with ten-fold cross-validation and leave-one-subject-out-validation methods.

RESULTS

Optimal predictive accuracies for ten-fold cross-validation (97.2%) and leave-one-subject-out-validation (80.5%) were achieved by support vector machine and random forests algorithms, respectively. Time domain features derived from accelerometer, magnetometer and orientation data streams were shown to have the highest predictive value for classifying rehabilitation activity.

SIGNIFICANCE

Classification models performed well in differentiating patient exercise activity from non-specific movement and identifying specific exercise type using inertial sensor data. A clinically useful account of home rehabilitation activity will help guide treatment strategies and facilitate methods to improve patient engagement. Future work should focus on evaluating the performance of such systems in natural and unsupervised settings.

摘要

背景

康复在多种肌肉骨骼疾病的管理中具有既定作用。这种治疗大多依赖于在家中自行进行的锻炼,而锻炼的执行依从性尚不清楚。在临床和研究环境中,证明治疗的保真度对于得出康复干预效果的结论是必要的。目前缺乏实现这一目标的工具和方法。

研究问题

本研究旨在评估使用单个惯性传感器通过监督机器学习技术识别和分类肩部康复活动的可行性。

方法

对20名肩部疼痛患者进行监测,他们进行了针对其病情常规规定的五项康复锻炼。通过安装在手臂袖套上的设备收集加速度计、陀螺仪和磁力计数据。分析中纳入了非特定运动数据。从标记的数据段计算时域和频域特征,并使用ReliefF算法根据其预测重要性进行排序。选择的特征用于训练四种监督学习算法:决策树、k近邻、支持向量机和随机森林。使用十折交叉验证和留一法验证方法评估算法在准确分类锻炼活动方面的性能。

结果

支持向量机和随机森林算法分别在十折交叉验证(97.2%)和留一法验证(80.5%)中实现了最佳预测准确率。从加速度计、磁力计和方向数据流导出的时域特征在分类康复活动方面具有最高的预测价值。

意义

分类模型在使用惯性传感器数据区分患者锻炼活动与非特定运动以及识别特定锻炼类型方面表现良好。对家庭康复活动进行临床上有用的记录将有助于指导治疗策略,并促进提高患者参与度的方法。未来的工作应侧重于评估此类系统在自然和无监督环境中的性能。

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