Venkataraman Vinay, Turaga Pavan, Lehrer Nicole, Baran Michael, Rikakis Thanassis, Wolf Steven L
Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:3154-9. doi: 10.1109/EMBC.2014.6944292.
This paper proposes a computational framework for movement quality assessment using a decision tree model that can potentially assist a physical therapist in a telerehabilitation context. Using a dataset of key kinematic attributes collected from eight stroke survivors, we demonstrate that the framework can be reliably used for movement quality assessment of a reach-to-grasp cone task, an activity commonly used in upper extremity stroke rehabilitation therapy. The proposed framework is capable of providing movement quality scores that are highly correlated to the ratings provided by therapists, who used a custom rating rubric created by rehabilitation experts. Our hypothesis is that a decision tree model could be easily utilized by therapists as a potential assistive tool, especially in evaluating movement quality on a large-scale dataset collected during unsupervised rehabilitation (e.g., training at the home), thereby reducing the time and cost of rehabilitation treatment.
本文提出了一种使用决策树模型进行运动质量评估的计算框架,该框架在远程康复环境中可能会帮助物理治疗师。利用从八名中风幸存者收集的关键运动学属性数据集,我们证明了该框架可可靠地用于评估抓握锥体任务的运动质量,这是上肢中风康复治疗中常用的一项活动。所提出的框架能够提供与治疗师给出的评分高度相关的运动质量分数,治疗师使用的是康复专家创建的自定义评分标准。我们的假设是,治疗师可以轻松地将决策树模型用作潜在的辅助工具,尤其是在评估无监督康复(例如在家训练)期间收集的大规模数据集的运动质量时,从而减少康复治疗的时间和成本。