Hunt Michael Anthony
Department of Physical Therapy, University of British Columbia.
J Vis Exp. 2013 Jan 17(71):e50182. doi: 10.3791/50182.
Any modification of movement - especially movement patterns that have been honed over a number of years - requires re-organization of the neuromuscular patterns responsible for governing the movement performance. This motor learning can be enhanced through a number of methods that are utilized in research and clinical settings alike. In general, verbal feedback of performance in real-time or knowledge of results following movement is commonly used clinically as a preliminary means of instilling motor learning. Depending on patient preference and learning style, visual feedback (e.g. through use of a mirror or different types of video) or proprioceptive guidance utilizing therapist touch, are used to supplement verbal instructions from the therapist. Indeed, a combination of these forms of feedback is commonplace in the clinical setting to facilitate motor learning and optimize outcomes. Laboratory-based, quantitative motion analysis has been a mainstay in research settings to provide accurate and objective analysis of a variety of movements in healthy and injured populations. While the actual mechanisms of capturing the movements may differ, all current motion analysis systems rely on the ability to track the movement of body segments and joints and to use established equations of motion to quantify key movement patterns. Due to limitations in acquisition and processing speed, analysis and description of the movements has traditionally occurred offline after completion of a given testing session. This paper will highlight a new supplement to standard motion analysis techniques that relies on the near instantaneous assessment and quantification of movement patterns and the display of specific movement characteristics to the patient during a movement analysis session. As a result, this novel technique can provide a new method of feedback delivery that has advantages over currently used feedback methods.
任何运动的改变——尤其是经过多年磨练的运动模式——都需要重新组织负责控制运动表现的神经肌肉模式。这种运动学习可以通过研究和临床环境中都使用的多种方法来增强。一般来说,实时的运动表现言语反馈或运动后的结果知识在临床上通常被用作灌输运动学习的初步手段。根据患者的偏好和学习方式,视觉反馈(例如通过使用镜子或不同类型的视频)或利用治疗师触摸的本体感觉引导,被用于补充治疗师的言语指导。实际上,这些反馈形式的组合在临床环境中很常见,以促进运动学习并优化结果。基于实验室的定量运动分析一直是研究环境中的主要手段,用于对健康和受伤人群的各种运动进行准确和客观的分析。虽然捕捉运动的实际机制可能不同,但所有当前的运动分析系统都依赖于跟踪身体节段和关节的运动并使用既定的运动方程来量化关键运动模式的能力。由于采集和处理速度的限制,运动的分析和描述传统上是在给定测试 session 完成后离线进行的。本文将重点介绍一种对标准运动分析技术的新补充,该技术依赖于在运动分析 session 期间对运动模式的近乎即时评估和量化以及向患者显示特定运动特征。因此,这种新技术可以提供一种新的反馈传递方法,它比目前使用的反馈方法具有优势。