The MITRE Corporation, McLean, VA 22102, USA.
Department of Biomedical Engineering, Catholic University of America, Washington, DC 20064, USA.
Sensors (Basel). 2023 Mar 14;23(6):3111. doi: 10.3390/s23063111.
Trials for therapies after an upper limb amputation (ULA) require a focus on the real-world use of the upper limb prosthesis. In this paper, we extend a novel method for identifying upper extremity functional and nonfunctional use to a new patient population: upper limb amputees. We videotaped five amputees and 10 controls performing a series of minimally structured activities while wearing sensors on both wrists that measured linear acceleration and angular velocity. The video data was annotated to provide ground truth for annotating the sensor data. Two different analysis methods were used: one that used fixed-size data chunks to create features to train a Random Forest classifier and one that used variable-size data chunks. For the amputees, the fixed-size data chunk method yielded good results, with 82.7% median accuracy (range of 79.3-85.8) on the 10-fold cross-validation intra-subject test and 69.8% in the leave-one-out inter-subject test (range of 61.4-72.8). The variable-size data method did not improve classifier accuracy compared to the fixed-size method. Our method shows promise for inexpensive and objective quantification of functional upper extremity (UE) use in amputees and furthers the case for use of this method in assessing the impact of UE rehabilitative treatments.
在上肢截肢(ULA)后的治疗试验中,需要关注上肢假肢的实际使用情况。在本文中,我们将一种新颖的方法用于识别上肢功能和非功能使用,扩展到一个新的患者群体:上肢截肢者。我们对 5 名截肢者和 10 名对照者进行了录像,他们在佩戴测量手腕线性加速度和角速度的传感器的情况下进行了一系列最小结构的活动。视频数据被注释,以提供传感器数据注释的真实情况。使用了两种不同的分析方法:一种使用固定大小的数据块来创建特征,以训练随机森林分类器;另一种使用可变大小的数据块。对于截肢者,固定大小的数据块方法产生了很好的结果,在 10 折交叉验证内个体测试中,中位数准确率为 82.7%(范围为 79.3-85.8),在 1 折外个体测试中准确率为 69.8%(范围为 61.4-72.8)。与固定大小的方法相比,可变大小的数据方法并没有提高分类器的准确性。我们的方法有望对截肢者进行廉价且客观的上肢(UE)功能使用进行量化,并进一步支持使用这种方法来评估 UE 康复治疗的效果。