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Bias, precision and statistical power of analysis of covariance in the analysis of randomized trials with baseline imbalance: a simulation study

机译:基线不平衡的随机试验分析中协方差分析的偏差,精度和统计功效:模拟研究

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Background Analysis of variance (ANOVA), change-score analysis (CSA) and analysis of covariance (ANCOVA) respond differently to baseline imbalance in randomized controlled trials. However, no empirical studies appear to have quantified the differential bias and precision of estimates derived from these methods of analysis, and their relative statistical power, in relation to combinations of levels of key trial characteristics. This simulation study therefore examined the relative bias, precision and statistical power of these three analyses using simulated trial data. Methods 126 hypothetical trial scenarios were evaluated (126 000 datasets), each with continuous data simulated by using a combination of levels of: treatment effect; pretest-posttest correlation; direction and magnitude of baseline imbalance. The bias, precision and power of each method of analysis were calculated for each scenario. Results Compared to the unbiased estimates produced by ANCOVA, both ANOVA and CSA are subject to bias, in relation to pretest-posttest correlation and the direction of baseline imbalance. Additionally, ANOVA and CSA are less precise than ANCOVA, especially when pretest-posttest correlation?≥?0.3. When groups are balanced at baseline, ANCOVA is at least as powerful as the other analyses. Apparently greater power of ANOVA and CSA at certain imbalances is achieved in respect of a biased treatment effect. Conclusions Across a range of correlations between pre- and post-treatment scores and at varying levels and direction of baseline imbalance, ANCOVA remains the optimum statistical method for the analysis of continuous outcomes in RCTs, in terms of bias, precision and statistical power.
机译:在随机对照试验中,方差的背景分析(ANOVA),变化评分分析(CSA)和协方差分析(ANCOVA)对基线失衡的反应不同。但是,没有经验研究量化这些分析方法得出的估计值的差异偏差和精确度,以及相对于关键试验特征水平组合的相对统计能力。因此,该模拟研究使用模拟试验数据检查了这三种分析的相对偏差,精度和统计功效。方法评估了126个假设的试验方案(126 000个数据集),每个方案都使用以下水平的组合来模拟连续数据:前测后测相关基线失衡的方向和程度。针对每种情况计算每种分析方法的偏差,精度和功效。结果与ANCOVA得出的无偏估计相比,ANOVA和CSA在测试前,测试后的相关性和基线失衡的方向上都存在偏差。此外,方差分析和CSA的精确度不及ANCOVA,特别是在前测与后测相关性≥0.3的情况下。当各组在基线达到平衡时,ANCOVA至少与其他分析一样强大。相对于偏向的治疗效果,在某些失衡情况下,显然可以实现ANOVA和CSA的更大功效。结论在治疗前和治疗后评分之间的一系列相关性以及基线失衡的不同水平和方向上,ANCOVA仍然是从偏倚,准确性和统计功效方面分析RCT连续结果的最佳统计方法。

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