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Mixed models for data from thorough QT studies: Part 2. One-step assessment of conditional QT prolongation

机译:全面QT研究数据的混合模型:第2部分。有条件QT延长的一步评估

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We investigate mixed analysis of covariance models for the 'one-step' assessment of conditional QT prolongation. Initially, we consider three different covariance structures for the data, where between-treatment covariance of repeated measures is modelled respectively through random effects, random coefficients, and through a combination of random effects and random coefficients. In all three of those models, an unstructured covariance pattern is used to model within-treatment covariance. In a fourth model, proposed earlier in the literature, between-treatment covariance is modelled through random coefficients but the residuals are assumed to be independent identically distributed (i.i.d.). Finally, we consider a mixed model with saturated covariance structure. We investigate the precision and robustness of those models by fitting them to a large group of real data sets from thorough QT studies. Our findings suggest: (i) Point estimates of treatment contrasts from all five models are similar, (ii) The random coefficients model with i.i.d. residuals is not robust; the model potentially leads to both under- and overestimation of standard errors of treatment contrasts and therefore cannot be recommended for the analysis of conditional QT prolongation, (iii) The combined random effects/random coefficients model does not always converge; in the cases where it converges, its precision is generally inferior to the other models considered, (iv) Both the random effects and the random coefficients model are robust, (v) The random effects, the random coefficients, and the saturated model have similar precision and all three models are suitable for the one-step assessment of conditional QT prolongation.
机译:我们研究了用于条件QT延长的“一步”评估的协方差模型的混合分析。最初,我们考虑三种不同的数据协方差结构,其中重复测量的处理间协方差分别通过随机效应,随机系数以及随机效应和随机系数的组合来建模。在所有这三个模型中,都使用非结构化协方差模式对治疗内协方差进行建模。在文献中较早提出的第四个模型中,通过随机系数对治疗之间的协方差进行建模,但假设残差是独立的相同分布(即i.d.)。最后,我们考虑具有饱和协方差结构的混合模型。我们通过将它们拟合到来自全面QT研究的一大组真实数据集,来研究这些模型的精度和鲁棒性。我们的发现表明:(i)来自所有五个模型的治疗对比的点估计都是相似的;(ii)具有i.i.d的随机系数模型。残差不稳健;该模型可能导致对治疗对比标准误差的低估和高估,因此不建议用于条件性QT延长的分析。(iii)随机效应/随机系数组合模型并不总是收敛;在收敛的情况下,其精度通常不如所考虑的其他模型,(iv)随机效应和随机系数模型均很健壮,(v)随机效应,随机系数和饱和模型的相似性精度和所有三个模型都适合于条件QT延长的一步评估。

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