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Robust Classification of Functional and Nonfunctional Arm Movement after Stroke Using a Single Wrist-Worn Sensor Device

机译:使用单个腕戴式传感器设备对中风后手臂功能性运动和非功能性运动的可靠分类

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Upper Extremity (UE) rehabilitation is often needed post-stroke. The main goal of UE treatment in stroke survivors is to increase the use of the affected UE in the home and community. However, the effectiveness of UE treatments are difficult to quantify because no objective evaluation of UE use exists. In practice, a clinician rates the patient's ability to perform specific motor tasks associated with functional use in a clinic or the patient self-reports the amount or quality of arm movement for a standard set of activities. Both methods do not objectively measure the performance of the affected UE in the home or community environment, and there is growing evidence that motor performance in the laboratory is a poor proxy for the actual amount of UE use. Using a single wrist-worn sensor (i.e., accelerometry data) and machine learning, we have reported that it is possible to separate UE functional use from nonfunctional movement after stroke. Specifically, we reported that we correctly classified sensor data with an average of 94.80% in controls and 88.38% in stroke subjects in intra-subject test trials, and 91.53% for controls and 70.18% in stroke subjects in inter-subject test trials. In this paper, we employed feature selection techniques and explored different machine learning methods to improve the classification accuracy. Our enhanced methods are robust and reliable, and work in both intra-subject and inter-subject training and testing. Our result showed better accuracy in stroke patients than previously reported with the same dataset. The enhanced models reached an average of 96% accuracy in control subjects and 94% in stroke subjects for intra-subject trials, and an average of 90% accuracy in control subjects and 83% in stroke subjects for the inter-subject trials. The proposed methods provide an inexpensive and feasible way to quantify the UE functional use in home and community. This information can provide guidance for clinical practice in the rehabilitative care of adults recovering from stroke.
机译:中风后经常需要上肢(UE)康复。中风幸存者中UE治疗的主要目标是增加家庭和社区中受影响UE的使用。然而,由于不存在对UE使用的客观评估,因此难以量化UE治疗的有效性。在实践中,临床医生会评估患者执行与诊所功能用途相关的特定运动任务的能力,或者患者会针对一系列标准活动自行报告手臂运动的数量或质量。两种方法都不能客观地衡量家庭或社区环境中受影响的UE的性能,并且越来越多的证据表明,实验室中的运动性能不能很好地替代UE的实际使用量。我们已经报告了使用单个腕戴式传感器(即加速度计数据)和机器学习,可以将UE功能的使用与中风后的非功能性运动区分开来。具体而言,我们报告说,我们在受试者间测试试验中对传感器数据进行了正确分类,对照组为94.80%,中风受试者为88.38%,受试者间试验为对照组91.53%,中风受试者为70.18%。在本文中,我们采用了特征选择技术并探索了不同的机器学习方法,以提高分类的准确性。我们增强的方法是可靠且可靠的,并且可以在受试者内部和受试者之间进行训练和测试。我们的结果显示,中风患者的准确性比以前使用相同数据集报告的准确性更高。对于受试者内部试验,增强模型在对照受试者中平均准确度达到96%,在卒中受试者中达到94%,而受试者间试验中对照受试者平均达到90%准确度,在卒中受试者中达到83%。所提出的方法提供了一种廉价且可行的方式来量化家庭和社区中的UE功能使用。该信息可为中风康复的成年人的康复护理提供临床实践指导。

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