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基于惯性的接触和摆动时间算法在足部穿戴式物联网设备跑步分析中的验证。

Validation of an inertial-based contact and swing time algorithm for running analysis from a foot mounted IoT enabled wearable.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:6818-6821. doi: 10.1109/EMBC46164.2021.9631046.

DOI:10.1109/EMBC46164.2021.9631046
PMID:34892673
Abstract

Running gait assessment for shoe type recommendation to avoid injury often takes place within commercial premises. That is not representative of a natural running environment and may influence normal/usual running characteristics. Typically, assessments are costly and performed by an untrained biomechanist or physiotherapist. Thus, use of a low-cost assessment of running gait to recommend shoe type is warranted. Indeed, the recent impact of COVID has heightened the need for a shift toward remote assessment in general due to social-distancing guidelines and restriction of movement to bespoke assessment facilities. Mymo is a Bluetooth-enabled, inertial measurement unit (IMU) wearable worn on the foot. The wearable transmits inertial data via a smartphone application to the Cloud, where algorithms work to recommend a running shoe based upon the users/runner's pronation and foot-strike location/pattern. Here, an additional algorithm is presented to quantify ground contact time and swing/flight time within the Mymo platform to further inform the assessment of a runner's gait. A large cohort of healthy adult and adolescents (n=203, 91M:112F) were recruited to run on a treadmill while wearing the Mymo wearable. Validity of the inertial-based algorithm to quantify ground contact time was established through manual labelling of reference standard ground truth video data, with a presented accuracy between 96.6-98.7% across the two classes with respect to each foot.Clinical Relevance-This establishes the validity of a ground contact and swing times for runner with a low-cost IoT wearable.

摘要

为避免受伤而推荐鞋型的跑步步态评估通常在商业场所进行。这不能代表自然的跑步环境,可能会影响正常/通常的跑步特征。通常,评估费用高昂,且由未经训练的生物力学专家或物理治疗师进行。因此,有必要使用低成本的跑步步态评估来推荐鞋型。实际上,由于社交距离准则和对定制评估设施的运动限制,最近 COVID 的影响加剧了对远程评估的需求。Mymo 是一款蓝牙智能、惯性测量单元(IMU)可穿戴设备,可佩戴在脚上。可穿戴设备通过智能手机应用程序将惯性数据传输到云端,云端的算法根据用户/跑步者的内旋和脚部着地位置/模式来推荐跑鞋。在这里,提出了一个额外的算法来量化 Mymo 平台内的地面接触时间和摆动/飞行时间,以进一步为跑步者的步态评估提供信息。一项针对健康成年和青少年(n=203,91M:112F)的大型队列研究招募了他们在跑步机上穿着 Mymo 可穿戴设备跑步。通过对参考标准地面实况视频数据进行手动标记来验证基于惯性的算法来量化地面接触时间的有效性,对于每只脚,两个类别的准确率在 96.6-98.7%之间。临床相关性-这确立了低成本物联网可穿戴设备对跑步者的地面接触和摆动时间的有效性。

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