Tu Yu-Kang, Baelum Vibeke, Gilthorpe Mark S
Department of Periodontology, Leeds Dental Institute, University of Leeds, Leeds, UK.
Eur J Oral Sci. 2008 Aug;116(4):291-6. doi: 10.1111/j.1600-0722.2008.00549.x.
Analysis of change is probably the most commonly adopted study design in medical and dental research when comparing the efficacy of two or more treatment modalities. The most commonly used methods for testing the difference in treatment efficacy are the two-sample t-test and the analysis of covariance (ANCOVA). It has been suggested that ancova should be used in the analysis of change for data from randomized controlled trials (RCTs) as a result of its greater statistical power. However, it is less well known that although both methods will give rise to similar results in the analysis of change for RCTs, there are different assumptions behind these methods in terms of the relationship between baseline value and the subsequent change, and the results may therefore differ if baseline values are not balanced between groups. This article uses structural equation modelling as a conceptual framework to explain the assumptions behind these methods, and two examples are used to show when the two methods yield similar results and why, in some non-randomized studies, the two methods might give substantially different results, known as 'Lord's paradox' in the statistical literature. For the appropriate interpretation of non-randomized studies, the assumptions underlying these methods therefore need to be taken into consideration.
在比较两种或更多治疗方式的疗效时,变化分析可能是医学和牙科研究中最常用的研究设计。检验治疗效果差异最常用的方法是两样本t检验和协方差分析(ANCOVA)。有人认为,由于协方差分析具有更大的统计效力,因此应该用于随机对照试验(RCT)数据的变化分析。然而,鲜为人知的是,尽管这两种方法在RCT变化分析中会产生相似的结果,但就基线值与后续变化之间的关系而言,这些方法背后存在不同的假设,因此,如果组间基线值不均衡,结果可能会有所不同。本文使用结构方程模型作为概念框架来解释这些方法背后的假设,并通过两个例子来说明这两种方法何时会产生相似的结果,以及为什么在一些非随机研究中,这两种方法可能会给出截然不同的结果,这在统计文献中被称为“洛德悖论”。因此,为了对非随机研究进行恰当的解释,需要考虑这些方法背后的假设。