Giggins Oonagh M, Sweeney Kevin T, Caulfield Brian
School of Public Health, Physiotherapy and Population Science, University College Dublin, Dublin, Ireland.
J Neuroeng Rehabil. 2014 Nov 27;11:158. doi: 10.1186/1743-0003-11-158.
Accurate assessments of adherence and exercise performance are required in order to ensure that patients adhere to and perform their rehabilitation exercises correctly within the home environment. Inertial sensors have previously been advocated as a means of achieving these requirements, by using them as an input to an exercise biofeedback system. This research sought to investigate whether inertial sensors, and in particular a single sensor, can accurately classify exercise performance in patients performing lower limb exercises for rehabilitation purposes.
Fifty-eight participants (19 male, 39 female, age: 53.9 ± 8.5 years, height: 1.69 ± 0.08 m, weight: 74.3 ± 13.0 kg) performed ten repetitions of seven lower limb exercises (hip abduction, hip flexion, hip extension, knee extension, heel slide, straight leg raise, and inner range quadriceps). Three inertial sensor units, secured to the thigh, shin and foot of the leg being exercised, were used to acquire data during each exercise. Machine learning classification methods were applied to quantify the acquired data.
The classification methods achieved relatively high accuracy at distinguishing between correct and incorrect performance of an exercise using three, two, or one sensor while moderate efficacy scores were also achieved by the classifier when attempting to classify the particular error in exercise performance. Results also illustrated that a reduction in the number of inertial sensor units employed has little effect on the overall efficacy results.
The results revealed that it is possible to classify lower limb exercise performance using inertial sensors with satisfactory levels of accuracy and reducing the number of sensors employed does not reduce the accuracy of the method.
为确保患者在家中环境下正确坚持并完成康复锻炼,需要对依从性和锻炼表现进行准确评估。惯性传感器此前被提倡作为实现这些要求的一种手段,即将其用作锻炼生物反馈系统的输入。本研究旨在调查惯性传感器,尤其是单个传感器,能否准确分类进行下肢康复锻炼患者的锻炼表现。
58名参与者(19名男性,39名女性,年龄:53.9±8.5岁,身高:1.69±0.08米,体重:74.3±13.0千克)对七种下肢锻炼(髋关节外展、髋关节屈曲、髋关节伸展、膝关节伸展、足跟滑动、直腿抬高和内收肌范围)各进行10次重复动作。在每次锻炼过程中,使用三个固定在正在锻炼腿部的大腿、小腿和足部的惯性传感器单元来获取数据。应用机器学习分类方法对获取的数据进行量化。
在使用三个、两个或一个传感器区分锻炼的正确和错误表现时,分类方法取得了相对较高的准确率,并且在尝试对锻炼表现中的特定错误进行分类时,分类器也取得了中等的效能分数。结果还表明,减少所使用的惯性传感器单元数量对总体效能结果影响不大。
结果显示,使用惯性传感器对下肢锻炼表现进行分类是可行的,且准确率令人满意,减少所使用的传感器数量并不会降低该方法的准确性。