School of Kinesiology, University of Michigan, 1402 Washington Heights, Ann Arbor, Michigan.
Department of Orthopedic Surgery, University of Michigan , Ann Arbor, Michigan.
J Appl Physiol (1985). 2019 Feb 1;126(2):462-468. doi: 10.1152/japplphysiol.00374.2018. Epub 2018 Dec 13.
Step frequency (SF) in running has received substantial interest from researchers, coaches, therapists, and runners. It has been widely studied in controlled settings, but no published study has measured it continuously in elite-level competition. The present study used wrist-based accelerometers in consumer-grade watches to monitor SF and SF variability of competitors in the 2016 100-km World Championship road race. Using linear mixed-model regression, SF and SF variability were assessed across the race. The average SF (steps-per-minute) of competitors ( n = 20) was 182.0 spm (range: 155.4-203.1 spm). Race fluctuations in SF were influenced only by the speed the competitors were running, with faster speeds being associated with greater SF (5.6 spm/m·s, P < 0.001). Independently of this speed relation, SF did not significantly change over the course of the race. SF was further linked to the runner's stature (-123.1 spm/m, P = 0.01) but not significantly related to sex, weight, age, or years of experience. The SF coefficient-of-variation was inversely associated with running speed and distance covered, with runners demonstrating decreasing variability both at faster speeds and as the race progressed. Together, these results add ecological evidence to observations of a speed dependency of SF in a highly trained, elite population of runners and suggest that in road race conditions, SF changes only with speed and not fatigue. Furthermore, it presents evidence that the variability of an elite runner's SF is linked to both speed and fatigue but not to any other characteristics of the runner. The current findings are important for runners, clinicians, and coaches as they seek to monitor or manipulate SF. NEW & NOTEWORTHY Stride frequency (SF; or the synonymous "cadence") has become a popular point of monitoring and manipulation in runners. Advances in wearable technology have enabled continuous monitoring of SF. This study is the first to examine SF and SF variability patterns throughout an entire road race in elite ultramarathon runners. This adds ecological, normative data to the field's understanding of SF and demonstrates how it relates to running speed, fatigue, and individual characteristics.
步频(SF)在跑步中受到了研究人员、教练、治疗师和跑步者的广泛关注。它在受控环境中得到了广泛研究,但没有发表的研究连续测量了精英级别的比赛中的步频。本研究使用基于手腕的加速度计在消费级手表中监测 2016 年 100 公里世界公路锦标赛比赛中竞争者的 SF 和 SF 变异性。使用线性混合模型回归,评估了比赛中 SF 和 SF 变异性。竞争者的平均 SF(每分钟步数)为 182.0 spm(范围:155.4-203.1 spm)。SF 的比赛波动仅受竞争者跑步速度的影响,速度越快,SF 越大(5.6 spm/m·s,P<0.001)。独立于这种速度关系,SF 在比赛过程中没有显著变化。SF 进一步与跑步者的身材有关(-123.1 spm/m,P=0.01),但与性别、体重、年龄或经验年限无关。SF 变异系数与跑步速度和覆盖距离呈反比,跑步者在速度更快和比赛进行时表现出变异性降低。这些结果共同为在高度训练的精英跑步者中观察到的 SF 速度依赖性提供了生态证据,并表明在公路赛条件下,SF 仅随速度而变化,而不是随疲劳而变化。此外,它证明了精英跑步者 SF 的变异性与速度和疲劳有关,但与跑步者的任何其他特征无关。这些发现对于寻求监测或操纵 SF 的跑步者、临床医生和教练来说非常重要。新的和值得注意的是,步频(SF;或同义词“步频”)已成为跑步者监测和操纵的热门指标。可穿戴技术的进步使 SF 的连续监测成为可能。这项研究首次检查了精英超长距离跑步者整个公路赛中的 SF 和 SF 变异性模式。这为该领域对 SF 的理解增加了生态、规范数据,并展示了它如何与跑步速度、疲劳和个体特征相关。