IEEE Trans Neural Syst Rehabil Eng. 2023;31:1857-1866. doi: 10.1109/TNSRE.2023.3260815.
Trunk rehabilitation exercises such as those for remediating core stability can help improve the seated balance of patients with weakness or loss of proprioception caused by diseases such as stroke, and aid the recovery of other functions such as gait. However, there has not yet been any reported method for automatically determining the parameters that define exercise difficulty on a trunk rehabilitation robot (TRR) based on data such as the patient's demographic information, balancing ability, and training sequence, etc. We have proposed a machine learning (ML)-based difficulty adjustment method to determine an appropriate virtual damping gain (D) of the controller for the TRR's unstable training mode. Training data for the proposed system is obtained from 37 healthy young adults, and the trained ML model thus obtained is tested through experiments with a separate population of 25 healthy young adults. The leave-one-out cross validation results (37 subjects) from the training group for validation of the designed ML model showed 80.90% average accuracy (R2 score) for using the given information to predict the desired difficulty levels, which are represented by the level of balance performance quantified as Mean Velocity Displacement (MVD) of the center of pressure. Statistical analysis (Repeated measures analysis of variance) of subject performance also showed that ground truth difficulty levels from the training data and predicted difficulty levels did not differ significantly under any of the three exercise modes used in this study (Hard, Medium, and Easy), and the standard deviations were reduced by 16.39, 41.39, and 25.68%, respectively. Moreover, the Planar Deviation (PD) of the center of pressure, which was not the target parameter here, also showed results similar to the MVD, which indicates that the predicted D affected the difficulty level of balance performance. Therefore, the proposed ML model-based difficulty adjustment method has potential for use with people who have varied balancing abilities.
躯干康复练习,如纠正核心稳定性的练习,可以帮助改善因疾病(如中风)导致的虚弱或本体感觉丧失的患者的坐姿平衡,并有助于恢复其他功能,如步态。然而,目前还没有任何报道的方法可以根据患者的人口统计学信息、平衡能力和训练顺序等数据,自动确定躯干康复机器人(TRR)上的运动难度参数。我们提出了一种基于机器学习(ML)的难度调整方法,以确定 TRR 不稳定训练模式的控制器的适当虚拟阻尼增益(D)。该系统的训练数据来自 37 名健康的年轻成年人,通过对 25 名健康年轻成年人的单独人群进行实验来测试由此获得的训练有素的 ML 模型。从验证所设计的 ML 模型的训练组进行的 37 个受试者的留一交叉验证结果显示,使用给定信息预测所需难度水平的平均准确率(R2 得分)为 80.90%,所述难度水平表示为压力中心的平衡性能的定量表示,即平均速度位移(MVD)。受试者表现的统计分析(重复测量方差分析)还表明,在本研究中使用的三种运动模式(Hard、Medium 和 Easy)下,训练数据中的真实难度水平和预测难度水平没有显著差异,标准偏差分别降低了 16.39%、41.39%和 25.68%。此外,压力中心的平面偏差(PD),这里不是目标参数,也显示出与 MVD 相似的结果,这表明预测的 D 影响了平衡性能的难度水平。因此,基于所提出的 ML 模型的难度调整方法具有适用于具有不同平衡能力的人的潜力。