Tsakanikas Vassilios, Gatsios Dimitris, Pardalis Athanasios, Tsiouris Kostas M, Georga Eleni, Bamiou Doris-Eva, Pavlou Marousa, Nikitas Christos, Kikidis Dimitrios, Walz Isabelle, Maurer Christoph, Fotiadis Dimitrios
Unit of Medical Technology and Intelligent Information Systems, Department of Materials Science and Engineering, University of Ioannina, Ioannina, Greece.
Ear Institute, University College London, London, United Kingdom.
JMIR Rehabil Assist Technol. 2022 Aug 31;9(3):e37229. doi: 10.2196/37229.
Balance rehabilitation programs represent the most common treatments for balance disorders. Nonetheless, lack of resources and lack of highly expert physiotherapists are barriers for patients to undergo individualized rehabilitation sessions. Therefore, balance rehabilitation programs are often transferred to the home environment, with a considerable risk of the patient misperforming the exercises or failing to follow the program at all. Holobalance is a persuasive coaching system with the capacity to offer full-scale rehabilitation services at home. Holobalance involves several modules, from rehabilitation program management to augmented reality coach presentation.
The aim of this study was to design, implement, test, and evaluate a scoring model for the accurate assessment of balance rehabilitation exercises, based on data-driven techniques.
The data-driven scoring module is based on an extensive data set (approximately 1300 rehabilitation exercise sessions) collected during the Holobalance pilot study. It can be used as a training and testing data set for training machine learning (ML) models, which can infer the scoring components of all physical rehabilitation exercises. In that direction, for creating the data set, 2 independent experts monitored (in the clinic) 19 patients performing 1313 balance rehabilitation exercises and scored their performance based on a predefined scoring rubric. On the collected data, preprocessing, data cleansing, and normalization techniques were applied before deploying feature selection techniques. Finally, a wide set of ML algorithms, like random forests and neural networks, were used to identify the most suitable model for each scoring component.
The results of the trained model improved the performance of the scoring module in terms of more accurate assessment of a performed exercise, when compared with a rule-based scoring model deployed at an early phase of the system (k-statistic value of 15.9% for sitting exercises, 20.8% for standing exercises, and 26.8% for walking exercises). Finally, the resulting performance of the model resembled the threshold of the interobserver variability, enabling trustworthy usage of the scoring module in the closed-loop chain of the Holobalance coaching system.
The proposed set of ML models can effectively score the balance rehabilitation exercises of the Holobalance system. The models had similar accuracy in terms of Cohen kappa analysis, with interobserver variability, enabling the scoring module to infer the score of an exercise based on the collected signals from sensing devices. More specifically, for sitting exercises, the scoring model had high classification accuracy, ranging from 0.86 to 0.90. Similarly, for standing exercises, the classification accuracy ranged from 0.85 to 0.92, while for walking exercises, it ranged from 0.81 to 0.90.
ClinicalTrials.gov NCT04053829; https://clinicaltrials.gov/ct2/show/NCT04053829.
平衡康复计划是平衡障碍最常见的治疗方法。然而,资源匮乏和缺乏高技能的物理治疗师是患者接受个性化康复训练的障碍。因此,平衡康复计划常常转移到家庭环境中进行,但患者很可能错误地进行锻炼或根本不遵循计划。Holobalance是一个有说服力的指导系统,能够在家中提供全面的康复服务。Holobalance包含多个模块,从康复计划管理到增强现实教练展示。
本研究的目的是基于数据驱动技术设计、实施、测试和评估一种用于准确评估平衡康复训练的评分模型。
数据驱动评分模块基于Holobalance试点研究期间收集的大量数据集(约1300次康复训练课程)。它可用作训练机器学习(ML)模型的训练和测试数据集,该模型可以推断所有物理康复训练的评分组件。为此,在创建数据集时,2名独立专家在诊所监测了19名患者进行的1313次平衡康复训练,并根据预定义的评分标准对他们的表现进行评分。在收集的数据上,在部署特征选择技术之前应用了预处理、数据清理和归一化技术。最后,使用了广泛的ML算法,如随机森林和神经网络,来确定每个评分组件最合适的模型。
与系统早期部署的基于规则的评分模型相比,训练模型的结果在更准确地评估所进行训练方面提高了评分模块的性能(坐姿训练的k统计值为15.9%,站姿训练为20.8%,步行训练为26.8%)。最后,模型的最终性能类似于观察者间变异性的阈值,使得评分模块能够在Holobalance指导系统的闭环链中可靠使用。
所提出的一组ML模型可以有效地对Holobalance系统的平衡康复训练进行评分。在Cohen kappa分析方面,这些模型具有与观察者间变异性相似的准确性,使评分模块能够根据从传感设备收集的信号推断训练的分数。更具体地说,对于坐姿训练,评分模型具有较高的分类准确率,范围从0.86到0.90。同样,对于站姿训练,分类准确率范围从0.85到0.92,而对于步行训练,范围从0.81到0.90。
ClinicalTrials.gov NCT04053829;https://clinicaltrials.gov/ct2/show/NCT04053829。