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Logistic random effects regression models: a comparison of statistical packages for binary and ordinal outcomes

机译:Logistic随机效应回归模型:比较二进制和序数结果的统计软件包

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Background Logistic random effects models are a popular tool to analyze multilevel also called hierarchical data with a binary or ordinal outcome. Here, we aim to compare different statistical software implementations of these models. Methods We used individual patient data from 8509 patients in 231 centers with moderate and severe Traumatic Brain Injury (TBI) enrolled in eight Randomized Controlled Trials (RCTs) and three observational studies. We fitted logistic random effects regression models with the 5-point Glasgow Outcome Scale (GOS) as outcome, both dichotomized as well as ordinal, with center and/or trial as random effects, and as covariates age, motor score, pupil reactivity or trial. We then compared the implementations of frequentist and Bayesian methods to estimate the fixed and random effects. Frequentist approaches included R (lme4), Stata (GLLAMM), SAS (GLIMMIX and NLMIXED), MLwiN ([R]IGLS) and MIXOR, Bayesian approaches included WinBUGS, MLwiN (MCMC), R package MCMCglmm and SAS experimental procedure MCMC. Three data sets (the full data set and two sub-datasets) were analysed using basically two logistic random effects models with either one random effect for the center or two random effects for center and trial. For the ordinal outcome in the full data set also a proportional odds model with a random center effect was fitted. Results The packages gave similar parameter estimates for both the fixed and random effects and for the binary (and ordinal) models for the main study and when based on a relatively large number of level-1 (patient level) data compared to the number of level-2 (hospital level) data. However, when based on relatively sparse data set, i.e. when the numbers of level-1 and level-2 data units were about the same, the frequentist and Bayesian approaches showed somewhat different results. The software implementations differ considerably in flexibility, computation time, and usability. There are also differences in the availability of additional tools for model evaluation, such as diagnostic plots. The experimental SAS (version 9.2) procedure MCMC appeared to be inefficient. Conclusions On relatively large data sets, the different software implementations of logistic random effects regression models produced similar results. Thus, for a large data set there seems to be no explicit preference (of course if there is no preference from a philosophical point of view) for either a frequentist or Bayesian approach (if based on vague priors). The choice for a particular implementation may largely depend on the desired flexibility, and the usability of the package. For small data sets the random effects variances are difficult to estimate. In the frequentist approaches the MLE of this variance was often estimated zero with a standard error that is either zero or could not be determined, while for Bayesian methods the estimates could depend on the chosen "non-informative" prior of the variance parameter. The starting value for the variance parameter may be also critical for the convergence of the Markov chain.
机译:背景Logistic随机效应模型是一种流行的工具,可以分析具有二进制或序数结果的多层(也称为层次数据)。在这里,我们旨在比较这些模型的不同统计软件实现。方法我们使用来自231个中度和重度颅脑外伤(TBI)中心的8509例患者的个人患者数据,参与了8项随机对照试验(RCT)和3项观察性研究。我们将Logistic随机效应回归模型与5点格拉斯哥结果量表(GOS)进行了拟合,分为二分和序数,以中心和/或试验作为随机效应,并作为年龄,运动评分,瞳孔反应性或试验的协变量。然后,我们比较了常客和贝叶斯方法的实现,以估计固定效应和随机效应。常见方法包括R(lme4),Stata(GLLAMM),SAS(GLIMMIX和NLMIXED),MLwiN(RIGLS)和MIXOR,贝叶斯方法包括WinBUGS,MLwiN(MCMC),R包MCMCglmm和SAS实验程序MCMC。使用基本两个逻辑随机效应模型分析了三个数据集(完整数据集和两个子数据集),其中一个对中心的随机效应或对中心和试验的两个随机效应。对于完整数据集中的序数结果,还拟合了具有随机中心效应的比例赔率模型。结果该软件包针对固定和随机效应以及针对主要研究的二元(和有序)模型提供了相似的参数估计,并且基于与数量相对应的1级(患者水平)数据进行比较-2(医院水平)数据。但是,当基于相对稀疏的数据集时,即,当级别1和级别2数据单元的数量大致相同时,常压和贝叶斯方法显示出一些不同的结果。该软件的实现在灵活性,计算时间和可用性上有很大的不同。用于模型评估的其他工具(例如诊断图)的可用性也存在差异。实验性SAS(9.2版)程序MCMC似乎效率不高。结论在相对较大的数据集上,逻辑随机效应回归模型的不同软件实现产生了相似的结果。因此,对于大型数据集,似乎似乎没有频繁偏爱或贝叶斯方法(如果基于模糊先验)的明确偏好(当然,如果从哲学的角度来看没有偏好)。特定实现方式的选择可能在很大程度上取决于所需的灵活性和包装的可用性。对于较小的数据集,很难估计随机效应方差。在常识性方法中,通常用零或无法确定的标准误差将方差的MLE估计为零,而对于贝叶斯方法,估计值可能取决于方差参数之前选择的“非信息性”。方差参数的起始值对于马尔可夫链的收敛也可能至关重要。

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