We here present work a generalized low-level technical framework aimed to provide musical biofeedback in post-stroke balance and gait rehabilitation, built by an iterative user-centered process. The framework comprises wireless wearable inertial sensors and a software interface developed using inexpensive and open-source tools. The interface enables layered and adjustable music synthesis, real-time control over biofeedback parameters in several training modes, and extensive supplementary functionality. We evaluated the system in terms of technical performance, finding that the system has sufficiently low loop delay (~90 ms), good sensor range (>9 m) and low computational load even in its most demanding operation mode. In a series of expert interviews, selected training interactions using the system were deemed by clinicians to be meaningful and relevant to clinical protocols with comprehensible feedback (albeit sometimes unpleasant or disturbing) for a wide patient demographic. Future studies will focus on using this framework with real patients to both develop the interactions further and measure their effects during therapy.
翻译:我们在此介绍一个一般性的低层次技术框架,目的是通过一个以用户为中心的迭代程序,在试播后平衡和步态恢复中提供音乐生物回馈,该框架由无线穿戴惯性传感器和使用廉价和开放源工具开发的软件界面组成。界面使多种培训模式中的生物回馈参数能够分层和可调整的音乐合成、对生物回馈参数的实时控制以及广泛的补充功能。我们从技术性能的角度对系统进行了评估,发现系统具有足够低的循环延迟(~90米)、良好的传感器范围(>9米)和低计算负荷,即使是在最严格的操作模式中也是如此。在一系列专家访谈中,临床医生认为,使用该系统进行的某些培训互动对临床协议有意义且具有相关性,对广大病人有易懂的反馈(尽管有时不愉快或令人不安)。未来研究将侧重于与真正的病人一起使用这一框架,以进一步发展互动并在治疗期间衡量其影响。