de Lucena Diogo S, Stoller Oliver, Rowe Justin B, Chan Vicky, Reinkensmeyer David J
IEEE Int Conf Rehabil Robot. 2017 Jul;2017:1603-1608. doi: 10.1109/ICORR.2017.8009477.
Wearable sensing is a new tool for quantifying upper extremity (UE) rehabilitation after stroke. However, it is unclear whether it provides information beyond what is available through standard clinical assessments. To investigate this question, people with a chronic stroke (n=9) wore accelerometers on both wrists for 9 hours on a single day during their daily activities. We used principal components analysis (PCA) to characterize how novel kinematic measures of jerk and acceleration asymmetry, along with conventional measures of limb use asymmetry and clinical function, explained the behavioral variance of UE recovery across participants. The first PC explained 55% of the variance and described a strong correlation between standard clinical assessments and limb use asymmetry, as has been observed previously. The second PC explained a further 31% of the variance and described a strong correlation between bimanual magnitude and jerk asymmetry. Because of the nature of PCA, this second PC is mathematically orthogonal to the first and thus uncorrelated with the clinical assessments. Therefore, kinematic metrics obtainable from bimanual accelerometry, including bimanual jerk asymmetry, encoded additional information about UE recovery. One interpretation is that the first PC relates to "functional status" and the second to "movement quality". We also describe a new graphical format for presenting bimanual wrist accelerometry data that facilitates identification of asymmetries.
可穿戴传感技术是一种用于量化中风后上肢(UE)康复情况的新工具。然而,尚不清楚它所提供的信息是否超出了标准临床评估所能提供的范围。为了研究这个问题,9名慢性中风患者在日常活动期间,一天内双手腕佩戴加速度计9小时。我们使用主成分分析(PCA)来描述加加速度和加速度不对称的新运动学测量指标,以及肢体使用不对称和临床功能的传统测量指标,如何解释参与者上肢恢复的行为差异。第一主成分解释了55%的方差,并描述了标准临床评估与肢体使用不对称之间的强相关性,这与之前的观察结果一致。第二主成分进一步解释了31%的方差,并描述了双手大小和加加速度不对称之间的强相关性。由于主成分分析的性质,这第二个主成分在数学上与第一个主成分正交,因此与临床评估不相关。因此,从双手加速度测量中获得的运动学指标,包括双手加加速度不对称,编码了关于上肢恢复的额外信息。一种解释是,第一个主成分与“功能状态”相关,第二个主成分与“运动质量”相关。我们还描述了一种新的图形格式,用于呈现双手腕加速度测量数据,便于识别不对称性。