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Testing the proportional odds assumption in multiply imputed ordinal longitudinal data

机译:在多重推算序数纵向数据中测试比例赔率假设

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A popular choice when analyzing ordinal data is to consider the cumulative proportional odds model to relate the marginal probabilities of the ordinal outcome to a set of covariates. However, application of this model relies on the condition of identical cumulative odds ratios across the cut-offs of the ordinal outcome; the well-known proportional odds assumption. This paper focuses on the assessment of this assumption while accounting for repeated and missing data. In this respect, we develop a statistical method built on multiple imputation (MI)based on generalized estimating equations that allows to test the proportionality assumption under the missing at random setting. The performance of the proposed method is evaluated for two MI algorithms for incomplete longitudinal ordinal data. The impact of both MI methods is compared with respect to the type I error rate and the power for situations covering various numbers of categories of the ordinal outcome, sample sizes, rates of missingness, well-balanced and skewed data. The comparison of both MI methods with the complete-case analysis is also provided. We illustrate the use of the proposed methods on a quality of life data from a cancer clinical trial.
机译:分析序数数据时,一个流行的选择是考虑累积比例赔率模型,以将序数结果的边际概率与一组协变量相关联。但是,该模型的应用依赖于顺序结果的临界值具有相同的累积比值比的条件。众所周知的比例赔率假设。本文着重于对该假设的评估,同时考虑了重复和丢失的数据。在这方面,我们开发了一种基于广义估计方程的基于多重插补(MI)的统计方法,该方法允许在随机设置缺失的情况下测试比例假设。针对不完整的纵向序数数据的两种MI算法,评估了该方法的性能。比较了两种MI方法的影响(相对于I型错误率),以及在涉及序数结果的各种类别,样本量,缺失率,数据均衡和偏斜的情况下的功效。还提供了两种MI方法与完整案例分析的比较。我们说明了从癌症临床试验中对生活质量数据提出的方法的使用。

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