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业余自行车手作为研究参与者的分类:一项观察性研究的结果。

The categorization of amateur cyclists as research participants: findings from an observational study.

机构信息

a Biophysics and Medical Physics Group, Department of Physiology , University of Valencia , Valencia , Spain.

b Research Group in Sports Biomechanics (GIBD), Department of Physical Education and Sports , University of Valencia , Valencia , Spain.

出版信息

J Sports Sci. 2018 Sep;36(17):2018-2024. doi: 10.1080/02640414.2018.1432239. Epub 2018 Jan 25.

Abstract

Sampling bias is an issue for research involving cyclists. The heterogeneity of cyclist populations, on the basis of skill level and riding purpose, can generate incorrect inferences about one specific segment of the population of interest. In addition, a more accurate categorization would be helpful when physiological parameters are not available. This study proposes using self-reported data to categorize amateur cyclist types by varying skill levels and riding purposes, therefore improving sample selection in experimental studies. A total of 986 cyclists completed an online questionnaire between February and October 2016. Two-step cluster analyses were performed to generate distinct groups, and dependent variables of these groups were compared (demographics and characteristics of cycling practice). The cluster analysis relied on 4 descriptors (cycling weekly volume, average cycling speed, riding purpose, and cycling discipline) and yielded five distinct groups: competitive road, recreational road, competitive mountain bike (MTB), recreational MTB and competitive triathlon. Among these groups, averages and distributions for age, height, body mass, body mass index, training volume and intensity, and years of experience varied. This categorization can potentially help researchers recruit specific groups of cyclists based upon self-reported data and therefore better align the sample characteristic with the research aims.

摘要

抽样偏差是涉及自行车手的研究中的一个问题。自行车手群体的异质性,基于技能水平和骑行目的,可能会对特定感兴趣人群的一个特定群体产生不正确的推断。此外,当生理参数不可用时,更准确的分类将是有帮助的。本研究提出使用自我报告的数据,通过不同的技能水平和骑行目的来对业余自行车手类型进行分类,从而改进实验研究中的样本选择。共有 986 名自行车手在 2016 年 2 月至 10 月期间完成了在线问卷。进行了两步聚类分析以生成不同的组,比较这些组的因变量(人口统计学和骑行实践特征)。聚类分析依赖于 4 个描述符(每周骑行量、平均骑行速度、骑行目的和骑行运动项目),并产生了五个不同的组:竞技路自行车、休闲路自行车、竞技山地自行车、休闲山地自行车和竞技铁人三项。在这些组中,年龄、身高、体重、体重指数、训练量和强度以及经验年限的平均值和分布有所不同。这种分类可以帮助研究人员根据自我报告的数据招募特定的自行车手群体,从而使样本特征更好地与研究目的保持一致。

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