Kim Won-Seok, Cho Sungmin, Baek Dongyoub, Bang Hyunwoo, Paik Nam-Jong
Department of Rehabilitation Medicine, Seoul National University College of Medicine, Seoul National University Bundang Hospital, Seongnam-si, Gyeonggi-do, South Korea.
Department of Mechanical and Aerospace Engineering, Seoul National University, Seoul, South Korea.
PLoS One. 2016 Jul 1;11(7):e0158640. doi: 10.1371/journal.pone.0158640. eCollection 2016.
Virtual home-based rehabilitation is an emerging area in stroke rehabilitation. Functional assessment tools are essential to monitor recovery and provide current function-based rehabilitation. We developed the Fugl-Meyer Assessment (FMA) tool using Kinect (Microsoft, USA) and validated it for hemiplegic stroke patients. Forty-one patients with hemiplegic stroke were enrolled. Thirteen of 33 items were selected for upper extremity motor FMA. One occupational therapist assessed the motor FMA while recording upper extremity motion with Kinect. FMA score was calculated using principal component analysis and artificial neural network learning from the saved motion data. The degree of jerky motion was also transformed to jerky scores. Prediction accuracy for each of the 13 items and correlations between real FMA scores and scores using Kinect were analyzed. Prediction accuracies ranged from 65% to 87% in each item and exceeded 70% for 9 items. Correlations were high for the summed score for the 13 items between real FMA scores and scores obtained using Kinect (Pearson's correlation coefficient = 0.873, P<0.0001) and those between total upper extremity scores (66 in full score) and scores using Kinect (26 in full score) (Pearson's correlation coefficient = 0.799, P<0.0001). Log transformed jerky scores were significantly higher in the hemiplegic side (1.81 ± 0.76) compared to non-hemiplegic side (1.21 ± 0.43) and showed significant negative correlations with Brunnstrom stage (3 to 6; Spearman correlation coefficient = -0.387, P = 0.046). FMA using Kinect is a valid way to assess upper extremity function and can provide additional results for movement quality in stroke patients. This may be useful in the setting of unsupervised home-based rehabilitation.
基于家庭的虚拟康复是中风康复领域中一个新兴的领域。功能评估工具对于监测恢复情况和提供基于当前功能的康复至关重要。我们使用Kinect(美国微软公司)开发了Fugl - Meyer评估(FMA)工具,并对其在偏瘫中风患者中的有效性进行了验证。招募了41例偏瘫中风患者。上肢运动FMA从33项中选取了13项。一名职业治疗师在使用Kinect记录上肢运动的同时评估运动FMA。FMA得分通过主成分分析和从保存的运动数据中进行人工神经网络学习来计算。不平稳运动的程度也被转换为不平稳得分。分析了13项中每项的预测准确性以及实际FMA得分与使用Kinect得出的得分之间的相关性。每项的预测准确性在65%至87%之间,9项超过70%。13项的汇总得分在实际FMA得分与使用Kinect获得的得分之间具有高度相关性(Pearson相关系数 = 0.873,P<0.0001),上肢总分(满分66分)与使用Kinect的得分(满分26分)之间也具有高度相关性(Pearson相关系数 = 0.799,P<0.0001)。经对数转换的不平稳得分在偏瘫侧(1.81±0.76)显著高于非偏瘫侧(1.21±0.43),并且与Brunnstrom分期(3至6期)呈显著负相关(Spearman相关系数 = -0.387,P = 0.046)。使用Kinect的FMA是评估上肢功能的有效方法,并且可以为中风患者的运动质量提供额外的结果。这在无监督的家庭康复环境中可能会很有用。