Lemmens Ryanne J M, Janssen-Potten Yvonne J M, Timmermans Annick A A, Smeets Rob J E M, Seelen Henk A M
Research School CAPHRI, Department of Rehabilitation Medicine, Maastricht University, Maastricht, the Netherlands; Adelante, Centre of Expertise in Rehabilitation and Audiology, Hoensbroek, the Netherlands.
BIOMED Biomedical Research Institute, Hasselt University, Diepenbeek, Belgium.
PLoS One. 2015 Mar 3;10(3):e0118642. doi: 10.1371/journal.pone.0118642. eCollection 2015.
To evaluate arm-hand therapies for neurological patients it is important to be able to assess actual arm-hand performance objectively. Because instruments that measure the actual quality and quantity of specific activities in daily life are lacking, a new measure needs to be developed. The aims of this study are to a) elucidate the techniques used to identify upper extremity activities, b) provide a proof-of-principle of this method using a set of activities tested in a healthy adult and in a stroke patient, and c) provide an example of the method's applicability in daily life based on readings taken from a healthy adult. Multiple devices, each of which contains a tri-axial accelerometer, a tri-axial gyroscope and a tri-axial magnetometer were attached to the dominant hand, wrist, upper arm and chest of 30 healthy participants and one stroke patient, who all performed the tasks 'drinking', 'eating' and 'brushing hair' in a standardized environment. To establish proof-of-principle, a prolonged daily life recording of 1 participant was used to identify the task 'drinking'. The activities were identified using multi-array signal feature extraction and pattern recognition algorithms and 2D-convolution. The activities 'drinking', 'eating' and 'brushing hair' were unambiguously recognized in a sequence of recordings of multiple standardized daily activities in a healthy participant and in a stroke patient. It was also possible to identify a specific activity in a daily life recording. The long term aim is to use this method to a) identify arm-hand activities that someone performs during daily life, b) determine the quantity of activity execution, i.e. amount of use, and c) determine the quality of arm-hand skill performance.
为了评估针对神经疾病患者的上肢治疗方法,能够客观地评估实际的上肢表现非常重要。由于缺乏测量日常生活中特定活动实际质量和数量的仪器,因此需要开发一种新的测量方法。本研究的目的是:a)阐明用于识别上肢活动的技术;b)使用一组在健康成年人和中风患者中测试的活动来提供该方法的原理证明;c)基于从健康成年人获取的读数,提供该方法在日常生活中适用性的示例。将多个设备(每个设备都包含一个三轴加速度计、一个三轴陀螺仪和一个三轴磁力计)连接到30名健康参与者和一名中风患者的优势手、手腕、上臂和胸部,他们都在标准化环境中执行“喝水”“吃饭”和“梳头”任务。为了建立原理证明,使用一名参与者的长时间日常生活记录来识别“喝水”任务。通过多阵列信号特征提取、模式识别算法和二维卷积来识别活动。在健康参与者和中风患者的多个标准化日常活动记录序列中,能够明确识别出“喝水”“吃饭”和“梳头”活动。还能够在日常生活记录中识别特定活动。长期目标是使用这种方法:a)识别某人在日常生活中执行的上肢活动;b)确定活动执行的数量,即使用量;c)确定上肢技能表现的质量。