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A comparison of joint models for longitudinal and competing risks data, with application to an epilepsy drug randomized controlled trial

机译:纵向和竞争性风险数据联合模型的比较,并应用于癫痫药物随机对照试验

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摘要

Joint modelling of longitudinal data and competing risks has grown over the past decade. Despite the recent methodological developments, there are still limited options for fitting these models in standard statistical software programs, which prohibits their adoption by applied biostatisticians. We summarize four published models, each of which has software available for model estimation. Each model features a different hazard function, latent association structure between the submodels, estimation approach and software implementation. Of the four models considered here, the model specifications and association structures are substantially different, thus complicating model-to-model comparison. The models are applied to the Standard and new anti-epileptic drugs' trial of anti-epileptic drugs to investigate the effect of drug titration on the treatment effects of lamotrigine and carbamazepine on the mode of treatment failure. Notwithstanding the vastly different association structures, we show that the inference from each model is consistent, namely, that there is a beneficial effect of lamotrigine on unacceptable adverse events over carbamazepine and a non-significant effect on the hazard of inadequate seizure control. The association between anti-epileptic drug titration and treatment failure was significant in most models. To allow for the routine adoption of joint modelling of competing risks and longitudinal data in the analysis of clinical data sets, further work is required on the development of model diagnostics to aid model choice.
机译:纵向数据和竞争风险的联合建模在过去十年中不断发展。尽管最近在方法上取得了进展,但将这些模型拟合到标准统计软件程序中的选择仍然有限,这禁止了应用生物统计学家采用它们。我们总结了四个已发布的模型,每个模型都有可用于模型估计的软件。每个模型具有不同的危害函数,子模型之间的潜在关联结构,估计方法和软件实现。在这里考虑的四个模型中,模型规格和关联结构实质上不同,因此使模型之间的比较变得复杂。将这些模型应用于标准和新抗癫痫药的抗癫痫药试验,以研究药物滴定对拉莫三嗪和卡马西平治疗失败模式的影响。尽管关联结构差异很大,但我们显示,每种模型的推论是一致的,即拉莫三嗪对卡马西平的不良不良反应有有益的作用,而对癫痫发作控制不充分的危害则无明显作用。在大多数模型中,抗癫痫药滴定度与治疗失败之间的相关性显着。为了在临床数据集的分析中常规采用竞争风险和纵向数据的联合建模,需要进行进一步的模型诊断开发以帮助模型选择。

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