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Bayesian inference for joint modelling of longitudinal continuous, binary and ordinal events

机译:贝叶斯推理对纵向连续,二进制和序数事件的联合建模

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In medical studies, repeated measurements of continuous, binary and ordinal outcomes are routinely collected from the same patient. Instead of modelling each outcome separately, in this study we propose to jointly model the trivariate longitudinal responses, so as to take account of the inherent association between the different outcomes and thus improve statistical inferences. This work is motivated by a large cohort study in the North West of England, involving trivariate responses from each patient: Body Mass Index, Depression (Yes/No) ascertained with cut-off score not less than 8 at the Hospital Anxiety and Depression Scale, and Pain Interference generated from the Medical Outcomes Study 36-item short-form health survey with values returned on an ordinal scale 1-5. There are some well-established methods for combined continuous and binary, or even continuous and ordinal responses, but little work was done on the joint analysis of continuous, binary and ordinal responses. We propose conditional joint random-effects models, which take into account the inherent association between the continuous, binary and ordinal outcomes. Bayesian analysis methods are used to make statistical inferences. Simulation studies show that, by jointly modelling the trivariate outcomes, standard deviations of the estimates of parameters in the models are smaller and much more stable, leading to more efficient parameter estimates and reliable statistical inferences. In the real data analysis, the proposed joint analysis yields a much smaller deviance information criterion value than the separate analysis, and shows other good statistical properties too.
机译:在医学研究中,通常从同一位患者中收集连续,二进制和序贯结果的重复测量值。代替对每个结果进行单独建模,在本研究中,我们建议对三变量纵向响应进行联合建模,以便考虑不同结果之间的内在联系,从而改善统计推断。这项工作是由在英格兰西北部进行的一项大型队列研究激发的,涉及每个患者的三因素反应:体重指数,抑郁(是/否),在医院焦虑和抑郁量表中的截断得分不少于8 ,以及从“医学成果研究” 36个项目的简短健康调查中产生的疼痛干扰,其值按序数范围1-5返回。对于组合的连续和二进制响应,甚至连续和序数响应,有一些公认的方法,但是对连续,二进制和序数响应的联合分析工作很少。我们提出了条件联合随机效应模型,该模型考虑了连续,二进制和序数结果之间的内在联系。贝叶斯分析方法用于进行统计推断。仿真研究表明,通过对三变量结果进行联合建模,模型中参数估计的标准偏差更小且更稳定,从而导致更有效的参数估计和可靠的统计推断。在实际数据分析中,所提出的联合分析产生的偏差信息准则值比单独的分析小得多,并且还显示出其他良好的统计特性。

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