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Modeling overdispersed longitudinal binary data using a combined beta and normal random-effects model

机译:使用组合的beta和正常随机效应模型对过度分散的纵向二进制数据进行建模

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BackgroundIn medical and biomedical areas, binary and binomial outcomes are very common. Such data are often collected longitudinally from a given subject repeatedly overtime, which result in clustering of the observations within subjects, leading to correlation, on the one hand. The repeated binary outcomes from a given subject, on the other hand, constitute a binomial outcome, where the prescribed mean-variance relationship is often violated, leading to the so-called overdispersion. MethodsTwo longitudinal binary data sets, collected in south western Ethiopia: the Jimma infant growth study, where the child’s early growth is studied, and the Jimma longitudinal family survey of youth where the adolescent’s school attendance is studied over time, are considered. A new model which combines both overdispersion, and correlation simultaneously, also known as the combined model is applied. In addition, the commonly used methods for binary and binomial data, such as the simple logistic, which accounts neither for the overdispersion nor the correlation, the beta-binomial model, and the logistic-normal model, which accommodate only for the overdispersion, and correlation, respectively, are also considered for comparison purpose. As an alternative estimation technique, a Bayesian implementation of the combined model is also presented. ResultsThe combined model results in model improvement in fit, and hence the preferred one, based on likelihood comparison, and DIC criterion. Further, the two estimation approaches result in fairly similar parameter estimates and inferences in both of our case studies. Early initiation of breastfeeding has a protective effect against the risk of overweight in late infancy (p?=?0.001), while proportion of overweight seems to be invariant among males and females overtime (p?=?0.66). Gender is significantly associated with school attendance, where girls have a lower rate of attendance (p?=?0.001) as compared to boys. ConclusionWe applied a flexible modeling framework to analyze binary and binomial longitudinal data. Instead of accounting for overdispersion, and correlation separately, both can be accommodated simultaneously, by allowing two separate sets of the beta, and the normal random effects at once.
机译:背景技术在医学和生物医学领域,二元和二项式结果非常普遍。这样的数据通常是随着时间的推移从给定的受检者纵向重复地收集的,这一方面导致了受检者内观察值的聚类,从而导致了相关性。另一方面,来自给定主题的重复二元结果构成二项式结果,其中经常违反规定的均值-方差关系,从而导致所谓的过度分散。方法考虑了在埃塞俄比亚西南部收集的两个纵向二元数据集:吉马婴儿生长研究(该研究对儿童的早期生长进行了研究)和吉马纵向家庭调查(对青少年进行了一段时间的入学研究)。应用了同时结合了过度分散和相关的新模型,也称为组合模型。另外,常用的二进制和二项式数据方法,例如既不考虑过度分散也不考虑相关性的简单logistic方法,β-二项式模型和仅适用于过度分散的logistic正态模型,以及分别将相关性也考虑用于比较目的。作为一种替代估计技术,还提出了组合模型的贝叶斯实现。结果基于似然比较和DIC标准,组合后的模型可提高模型的拟合度,因此是首选模型。此外,在我们的两个案例研究中,两种估计方法都得出了相当相似的参数估计和推论。尽早开始母乳喂养对婴儿后期超重的风险具有保护作用(p≥0.001),而男性和女性加班的超重比例似乎不变(p≥0.66)。性别与入学率显着相关,与男孩相比,女孩的出勤率较低(p?=?0.001)。结论我们应用了一个灵活的建模框架来分析二进制和二项式纵向数据。无需考虑过度分散和相关性,可以通过同时允许两组独立的beta和正常随机效应同时容纳两者。

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