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Mobile App to Streamline the Development of Wearable Sensor-Based Exercise Biofeedback Systems: System Development and Evaluation

机译:移动应用程序可简化基于传感器的可穿戴运动生物反馈系统的开发:系统开发和评估

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Background: Biofeedback systems that use inertial measurement units (IMUs) have been shown recently to have the ability to objectively assess exercise technique. However, there are a number of challenges in developing such systems; vast amounts of IMU exercise datasets must be collected and manually labeled for each exercise variation, and naturally occurring technique deviations may not be well detected. One method of combatting these issues is through the development of personalized exercise technique classifiers. Objective: We aimed to create a tablet app for physiotherapists and personal trainers that would automate the development of personalized multiple and single IMU-based exercise biofeedback systems for their clients. We also sought to complete a preliminary investigation of the accuracy of such individualized systems in a real-world evaluation. Methods: A tablet app was developed that automates the key steps in exercise technique classifier creation through synchronizing video and IMU data collection, automatic signal processing, data segmentation, data labeling of segmented videos by an exercise professional, automatic feature computation, and classifier creation. Using a personalized single IMU-based classification system, 15 volunteers (12 males, 3 females, age: 23.8 [standard deviation, SD 1.8] years, height: 1.79 [SD 0.07] m, body mass: 78.4 [SD 9.6] kg) then completed 4 lower limb compound exercises. The real-world accuracy of the systems was evaluated. Results: The tablet app successfully automated the process of creating individualized exercise biofeedback systems. The personalized systems achieved 89.50% (1074/1200) accuracy, with 90.00% (540/600) sensitivity and 89.00% (534/600) specificity for assessing aberrant and acceptable technique with a single IMU positioned on the left thigh. Conclusions: A tablet app was developed that automates the process required to create a personalized exercise technique classification system. This tool can be applied to any cyclical, repetitive exercise. The personalized classification model displayed excellent system accuracy even when assessing acute deviations in compound exercises with a single IMU.
机译:背景:最近已经证明了使用惯性测量单元(IMU)的生物反馈系统具有客观评估运动技术的能力。但是,开发这样的系统存在许多挑战。必须收集大量IMU运动数据集并为每种运动变化手动标记,并且可能无法很好地检测到自然发生的技术偏差。解决这些问题的一种方法是开发个性化运动技术分类器。目标:我们旨在为物理治疗师和私人教练创建一款平板电脑应用程序,该程序将为其客户自动开发个性化的基于多个IMU的个性化运动生物反馈系统。我们还试图在实际评估中完成对此类个性化系统准确性的初步调查。方法:开发了一款平板电脑应用程序,通过同步视频和IMU数据收集,自动信号处理,数据分割,运动专业人士对分割后的视频进行数据标记,自动特征计算和分类器创建,来自动化锻炼技术分类器创建中的关键步骤。使用个性化的基于IMU的单一分类系统,共有15名志愿者(男性12名,女性3名,年龄:23​​.8 [标准差,SD 1.8]岁,身高:1.79 [SD 0.07] m,体重:78.4 [SD 9.6] kg)然后完成4下肢复合练习。评估了系统的实际精度。结果:该平板电脑应用程序成功地自动化了创建个性化运动生物反馈系统的过程。个性化的系统达到了89.50%(1074/1200)的准确度,具有90.00%(540/600)的灵敏度和89.00%(534/600)的特异性,用于评估位于左大腿上的单个IMU的异常和可接受的技术。结论:开发了一款平板电脑应用程序,可自动执行创建个性化运动技术分类系统所需的过程。该工具可以应用于任何周期性的重复性练习。个性化分类模型即使在使用单个IMU评估复合练习中的急性偏差时也显示出出色的系统准确性。

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