Tsakanikas Vassilios D, Gatsios Dimitrios, Dimopoulos Dimitrios, Pardalis Athanasios, Pavlou Marousa, Liston Matthew B, Fotiadis Dimitrios I
Unit of Medical Technology and Intelligent Information Systems, Department of Materials Science and Engineering, University of Ioannina, Ioannina, Greece.
Centre for Human and Applied Physiological Sciences, King's College London, London, United Kingdom.
Front Digit Health. 2020 Nov 27;2:545885. doi: 10.3389/fdgth.2020.545885. eCollection 2020.
Rehabilitation programs play an important role in improving the quality of life of patients with balance disorders. Such programs are usually executed in a home environment, due to lack of resources. This procedure usually results in poorly performed exercises or even complete drop outs from the programs, as the patients lack guidance and motivation. This paper introduces a novel system for managing balance disorders in a home environment using a virtual coach for guidance, instruction, and inducement. The proposed system comprises sensing devices, augmented reality technology, and intelligent inference agents, which capture, recognize, and evaluate a patient's performance during the execution of exercises. More specifically, this work presents a home-based motion capture and assessment module, which utilizes a sensory platform to recognize an exercise performed by a patient and assess it. The sensory platform comprises IMU sensors (Mbientlab MMR 9axis), pressure insoles (Moticon), and a depth RGB camera (Intel D415). This module is designed to deliver messages both during the performance of the exercise, delivering personalized notifications and alerts to the patient, and after the end of the exercise, scoring the overall performance of the patient. A set of proof of concept validation studies has been deployed, aiming to assess the accuracy of the different components for the sub-modules of the motion capture and assessment module. More specifically, Euler angle calculation algorithm in 2D ( = 0.99) and in 3D ( = 0.82 in yaw plane and = 0.91 for the pitch plane), as well as head turns speed ( = 0.96), showed good correlation between the calculated and ground truth values provided by experts' annotations. The posture assessment algorithm resulted to = 0.83, while the gait metrics were validated against two well-established gait analysis systems ( = 0.78 for double support, = 0.71 for single support, = 0.80 for step time, = 0.75 for stride time (WinTrack), = 0.82 for cadence, and = 0.79 for stride time (RehaGait). Validation results provided evidence that the proposed system can accurately capture and assess a physiotherapy exercise within the balance disorders context, thus providing a robust basis for the virtual coaching ecosystem and thereby improve a patient's commitment to rehabilitation programs while enhancing the quality of the performed exercises. In summary, virtual coaching can improve the quality of the home-based rehabilitation programs as long as it is combined with accurate motion capture and assessment modules, which provides to the virtual coach the capacity to tailor the interaction with the patient and deliver personalized experience.
康复计划在改善平衡障碍患者的生活质量方面发挥着重要作用。由于资源匮乏,此类计划通常在家庭环境中执行。由于患者缺乏指导和动力,这一过程通常会导致锻炼效果不佳,甚至患者完全退出计划。本文介绍了一种新颖的系统,该系统利用虚拟教练进行指导、教学和激励,以管理家庭环境中的平衡障碍。所提出的系统包括传感设备、增强现实技术和智能推理代理,它们在患者进行锻炼时捕捉、识别并评估患者的表现。更具体地说,这项工作提出了一个基于家庭的运动捕捉和评估模块,该模块利用一个传感平台来识别患者进行的锻炼并对其进行评估。传感平台包括IMU传感器(Mbientlab MMR 9轴)、压力鞋垫(Moticon)和深度RGB相机(英特尔D415)。该模块旨在在锻炼过程中发送消息,向患者发送个性化通知和警报,并在锻炼结束后对患者的整体表现进行评分。已经开展了一组概念验证研究,旨在评估运动捕捉和评估模块子模块中不同组件的准确性。更具体地说,二维欧拉角计算算法( = 0.99)和三维欧拉角计算算法(偏航平面中 = 0.82,俯仰平面中 = 0.91)以及头部转动速度( = 0.96),显示出计算值与专家注释提供的地面真值之间具有良好的相关性。姿势评估算法的结果为 = 0.83,而步态指标针对两个成熟的步态分析系统进行了验证(双支撑时 = 0.78,单支撑时 = 0.71,步长时间时 = 0.80,步幅时间时 = 0.75(WinTrack),步频时 = 0.82,步幅时间时 = 0.79(RehaGait))。验证结果表明,所提出的系统能够在平衡障碍背景下准确捕捉和评估物理治疗锻炼,从而为虚拟教练生态系统提供坚实基础,进而提高患者对康复计划的投入度,同时提高所进行锻炼的质量。总之,只要虚拟教练与准确的运动捕捉和评估模块相结合,就可以提高基于家庭的康复计划的质量,这为虚拟教练提供了根据患者情况调整互动并提供个性化体验的能力。