Moran John L, Solomon Patricia J
Department of Intensive Care Medicine, Queen Elizabeth Hospital, Adelaide, SA, Australia.
Crit Care Resusc. 2007 Mar;9(1):81-90.
Statistics and biomedical literature have historically had an uneasy alliance. A critical approach to the application of statistics is developed. Initially, we survey graphical data display and trace the historical development of the "testing" statistical paradigm, and the contributions of A R Fisher and J Neyman and E Pearson. The nuances of data summary and testing are illustrated by way of population versus sample estimation. The importance of the normality assumption is stressed, and the recurring contrast of parametric (t test) versus non-parametric (Mann-Whitney) approaches to summary statistics is discussed. The t test is found to be adequate. Effect measures are outlined, and we demonstrate the utility of the unpaired t test for binary data analysis. The theory of linear models is introduced, and the underlying assumptions of the standard ordinary least squares regression are presented. The implications of transformations, in particular log transformation, are detailed, and we conclude with an overview of the principles of model selection.
统计学与生物医学文献在历史上一直有着不太稳固的关系。一种批判性的统计学应用方法得以发展。首先,我们考察图形数据展示,并追溯“检验”统计学范式的历史发展,以及A·R·费希尔、J·奈曼和E·皮尔逊的贡献。通过总体估计与样本估计来说明数据汇总和检验的细微差别。强调了正态性假设的重要性,并讨论了参数(t检验)与非参数(曼-惠特尼检验)汇总统计方法的反复对比。发现t检验是足够的。概述了效应量,并展示了不成对t检验在二元数据分析中的效用。引入了线性模型理论,并阐述了标准普通最小二乘回归的基本假设。详细说明了变换的影响,特别是对数变换,最后我们对模型选择的原则进行了概述。