Moreno L F, Stratton H H, Newell J C, Feustel P J
J Appl Physiol (1985). 1986 Jan;60(1):335-43. doi: 10.1152/jappl.1986.60.1.335.
The need frequently arises in the scientific environment to investigate the relationship between quantities that are calculated from a common set of directly measured variables. However, the presence of error in the common set of measured variables distorts the relationship among the calculated quantities and can lead to incorrect conclusions. This article presents a method of correcting for such distortions in the Pearson correlation coefficient and in the linear regression coefficient for linear calculations involving two measured variables. The errors considered may be either independent of, or proportional to, the value of the variable being measured. Tests to determine whether these popular coefficients have values significantly different from zero are presented. An example from the physiology literature is presented to illustrate these techniques.
在科学环境中,经常需要研究从一组共同的直接测量变量计算得出的量之间的关系。然而,测量变量的公共集合中存在的误差会扭曲计算量之间的关系,并可能导致错误的结论。本文提出了一种方法,用于校正涉及两个测量变量的线性计算中的皮尔逊相关系数和线性回归系数中的此类扭曲。所考虑的误差可以与被测量变量的值无关,也可以与之成比例。本文还介绍了用于确定这些常用系数的值是否显著不同于零的检验方法。文中给出了一个生理学文献中的例子来说明这些技术。