Estimating Running Speed From Wrist- or Waist-Worn Wearable Accelerometer Data: A Machine Learning Approach

John J. Davis, Blaise E. Oeding, A. Gruber
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Abstract

Background: Running is a popular form of exercise, and its physiological effects are strongly modulated by speed. Accelerometry-based activity monitors are commonly used to measure physical activity in research, but no method exists to estimate running speed from only accelerometer data. Methods: Using three cohorts totaling 72 subjects performing treadmill and outdoor running, we developed linear, ridge, and gradient-boosted tree regression models to estimate running speed from raw accelerometer data from waist- or wrist-worn devices. To assess model performance in a real-world scenario, we deployed the best-performing model to data from 16 additional runners completing a 13-week training program while equipped with waist-worn accelerometers and commercially available foot pods. Results: Linear, ridge, and boosted tree models estimated speed with 12.0%, 11.6%, and 11.2% mean absolute percentage error, respectively, using waist-worn accelerometer data. Errors were greater using wrist-worn data, with linear, ridge, and boosted tree models achieving 13.8%, 14.0%, and 12.8% error. Across 663 free-living runs, speed was significantly associated with run duration (p = .009) and perceived run intensity (p = .008). Speed was nonsignificantly associated with fatigue (p = .07). Estimated speeds differed from foot pod measurements by 7.25%; associations and statistical significance were similar when speed was assessed via accelerometry versus via foot pod. Conclusion: Raw accelerometry data can be used to estimate running speed in free-living data with sufficient accuracy to detect associations with important measures of health and performance. Our approach is most useful in studies where research grade accelerometry is preferable to traditional global positioning system or foot pod-based measurements, such as in large-scale observational studies on physical activity.
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从手腕或腰部佩戴的可穿戴加速度计数据估计跑步速度:一种机器学习方法
背景:跑步是一种流行的运动形式,其生理效果受速度的强烈调节。基于加速度计的活动监测器通常用于测量研究中的身体活动,但目前还没有办法仅从加速度计的数据来估计跑步速度。方法:使用三个队列共72名受试者进行跑步机和户外跑步,我们开发了线性、脊线和梯度增强树回归模型,从腰部或手腕佩戴的设备的原始加速度计数据估计跑步速度。为了评估模型在真实场景中的表现,我们将表现最好的模型部署到另外16名跑步者的数据中,这些跑步者完成了为期13周的训练计划,同时配备了腰戴式加速度计和商用脚舱。结果:线性模型、脊形模型和提升树模型使用腰部加速度计数据估计速度的平均绝对百分比误差分别为12.0%、11.6%和11.2%。使用腕带数据的误差更大,线性、脊状和增强树模型的误差分别为13.8%、14.0%和12.8%。在663次自由生活跑步中,速度与跑步持续时间(p = 0.009)和感知跑步强度(p = 0.008)显著相关。速度与疲劳无显著相关(p = .07)。估计的速度与脚舱测量值相差7.25%;当通过加速度计和足舱评估速度时,相关性和统计学意义相似。结论:原始加速度计数据可用于估计自由生活数据中的跑步速度,具有足够的准确性,可以检测与健康和表现重要指标的关联。我们的方法在研究级加速度测量比传统的全球定位系统或基于脚舱的测量更可取的研究中最有用,例如在大规模的体育活动观察研究中。
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