Winter E M, Eston R G, Lamb K L
The Centre for Sport and Exercise Science, Sheffield Hallam University, UK.
J Sports Sci. 2001 Oct;19(10):761-75. doi: 10.1080/026404101317015429.
Research into the physiology of exercise and kinanthropometry is intended to improve our understanding of how the body responds and adapts to exercise. If such studies are to be meaningful, they have to be well designed and analysed. Advances in personal computing have made available statistical analyses that were previously the preserve of elaborate mainframe systems and have increased opportunities for investigation. However, the ease with which analyses can be performed can mask underlying philosophical and epistemological shortcomings. The aim of this review is to examine the use of four techniques that are especially relevant to physiological studies: (1) bivariate correlation and linear and non-linear regression, (2) multiple regression, (3) repeated-measures analysis of variance and (4) multi-level modelling. The importance of adhering to underlying statistical assumptions is emphasized and ways to accommodate violations of these assumptions are identified.
对运动生理学和人体测量学的研究旨在增进我们对身体如何对运动做出反应和适应的理解。如果此类研究要有意义,就必须精心设计和分析。个人计算机的发展使得以前只有大型主机系统才能进行的统计分析变得可行,增加了研究机会。然而,分析执行的简便性可能掩盖潜在的哲学和认识论缺陷。本综述的目的是研究四种与生理学研究特别相关的技术的应用:(1)双变量相关性以及线性和非线性回归,(2)多元回归,(3)重复测量方差分析,以及(4)多层次建模。强调了遵守基本统计假设的重要性,并确定了处理违反这些假设情况的方法。