Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA.
Neurorehabil Neural Repair. 2010 Jan;24(1):62-9. doi: 10.1177/1545968309343214. Epub 2009 Aug 14.
Human-administered clinical scales are the accepted standard for quantifying motor performance of stroke subjects. Although they are widely accepted, these measurement tools are limited by interrater and intrarater reliability and are time-consuming to apply. In contrast, robot-based measures are highly repeatable, have high resolution, and could potentially reduce assessment time. Although robotic and other objective metrics have proliferated in the literature, they are not as well established as clinical scales and their relationship to clinical scales is mostly unknown.
To test the performance of linear regression models to estimate clinical scores for the upper extremity from systematic robot-based metrics.
Twenty kinematic and kinetic metrics were derived from movement data recorded with the shoulder-and-elbow InMotion2 robot (Interactive Motion Technologies, Inc), a commercial version of the MIT-Manus. Kinematic metrics were aggregated into macro-metrics and micro-metrics and collected from 111 chronic stroke subjects. Multiple linear regression models were developed to calculate Fugl-Meyer Assessment, Motor Status Score, Motor Power, and Modified Ashworth Scale from these robot-based metrics.
Best performance-complexity trade-off was achieved by the Motor Status Score model with 8 kinematic macro-metrics (R = .71 for training; R = .72 for validation). Models including kinematic micro-metrics did not achieve significantly higher performance. Performances of the Modified Ashworth Scale models were consistently low (R = .35-.42 for training; R = .08-.17 for validation).
The authors identified a set of kinetic and kinematic macro-metrics that may be used for fast outcome evaluations. These metrics represent a first step toward the development of unified, automated measures of therapy outcome.
人为管理的临床量表是量化中风患者运动表现的公认标准。尽管这些测量工具被广泛接受,但它们存在评分者间和评分者内可靠性的限制,并且应用起来耗时。相比之下,基于机器人的测量具有高度的可重复性、高分辨率,并且有可能减少评估时间。尽管机器人和其他客观指标在文献中大量涌现,但它们不如临床量表成熟,其与临床量表的关系大多未知。
测试线性回归模型从系统的基于机器人的指标估算上肢临床评分的性能。
从肩部和肘部 InMotion2 机器人(Interactive Motion Technologies,Inc.)记录的运动数据中得出了 20 个运动学和动力学指标,InMotion2 机器人是 MIT-Manus 的商业版本。运动学指标被聚合为宏观指标和微观指标,从 111 名慢性中风患者中收集。开发了多个线性回归模型,从这些基于机器人的指标计算 Fugl-Meyer 评估、运动状态评分、运动力量和改良 Ashworth 量表。
最佳性能-复杂度折衷是通过包含 8 个运动学宏观指标的运动状态评分模型实现的(训练时 R =.71;验证时 R =.72)。包含运动学微观指标的模型并未显著提高性能。改良 Ashworth 量表模型的性能一直较低(训练时 R =.35-.42;验证时 R =.08-.17)。
作者确定了一组可能用于快速结果评估的动力学和运动学宏观指标。这些指标代表了朝着开发统一、自动化的治疗结果测量方法迈出的第一步。