Funatogawa Takashi, Funatogawa Ikuko, Shyr Yu
Department of Biostatistics, Vanderbilt University School of Medicine, Nashville, TN 37232-6838, USA.
Biom J. 2011 May;53(3):512-24. doi: 10.1002/bimj.201000200.
When primary endpoints of randomized trials are continuous variables, the analysis of covariance (ANCOVA) with pre-treatment measurements as a covariate is often used to compare two treatment groups. In the ANCOVA, equal slopes (coefficients of pre-treatment measurements) and equal residual variances are commonly assumed. However, random allocation guarantees only equal variances of pre-treatment measurements. Unequal covariances and variances of post-treatment measurements indicate unequal slopes and, usually, unequal residual variances. For non-normal data with unequal covariances and variances of post-treatment measurements, it is known that the ANCOVA with equal slopes and equal variances using an ordinary least-squares method provides an asymptotically normal estimator for the treatment effect. However, the asymptotic variance of the estimator differs from the variance estimated from a standard formula, and its property is unclear. Furthermore, the asymptotic properties of the ANCOVA with equal slopes and unequal variances using a generalized least-squares method are unclear. In this paper, we consider non-normal data with unequal covariances and variances of post-treatment measurements, and examine the asymptotic properties of the ANCOVA with equal slopes using the variance estimated from a standard formula. Analytically, we show that the actual type I error rate, thus the coverage, of the ANCOVA with equal variances is asymptotically at a nominal level under equal sample sizes. That of the ANCOVA with unequal variances using a generalized least-squares method is asymptotically at a nominal level, even under unequal sample sizes. In conclusion, the ANCOVA with equal slopes can be asymptotically justified under random allocation.
当随机试验的主要终点为连续变量时,常使用以治疗前测量值作为协变量的协方差分析(ANCOVA)来比较两个治疗组。在ANCOVA中,通常假定斜率相等(治疗前测量值的系数)且残差方差相等。然而,随机分配仅保证治疗前测量值的方差相等。治疗后测量值的协方差和方差不相等表明斜率不相等,且通常残差方差也不相等。对于治疗后测量值的协方差和方差不相等的非正态数据,已知使用普通最小二乘法的斜率相等且方差相等的ANCOVA为治疗效果提供了一个渐近正态估计量。然而,该估计量的渐近方差与从标准公式估计的方差不同,其性质尚不清楚。此外,使用广义最小二乘法的斜率相等且方差不相等的ANCOVA的渐近性质也不清楚。在本文中,我们考虑治疗后测量值的协方差和方差不相等的非正态数据,并使用从标准公式估计的方差来检验斜率相等的ANCOVA的渐近性质。通过分析,我们表明在样本量相等的情况下,方差相等的ANCOVA的实际I型错误率(即覆盖率)渐近处于名义水平。即使在样本量不相等的情况下,使用广义最小二乘法的方差不相等的ANCOVA的实际I型错误率也渐近处于名义水平。总之,在随机分配的情况下,斜率相等的ANCOVA在渐近意义上是合理的。