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Bayesian dynamic regression models for interval censored survival data with application to children dental health

机译:贝叶斯动态回归模型的区间检查生存数据及其在儿童牙齿健康中的应用

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Cox models with time-varying coefficients offer great flexibility in capturing the temporal dynamics of covariate effects on event times, which could be hidden from a Cox proportional hazards model. Methodology development for varying coefficient Cox models, however, has been largely limited to right censored data; only limited work on interval censored data has been done. In most existing methods for varying coefficient models, analysts need to specify which covariate coefficients are time-varying and which are not at the time of fitting. We propose a dynamic Cox regression model for interval censored data in a Bayesian framework, where the coefficient curves are piecewise constant but the number of pieces and the jump points are covariate specific and estimated from the data. The model automatically determines the extent to which the temporal dynamics is needed for each covariate, resulting in smoother and more stable curve estimates. The posterior computation is carried out via an efficient reversible jump Markov chain Monte Carlo algorithm. Inference of each coefficient is based on an average of models with different number of pieces and jump points. A simulation study with three covariates, each with a coefficient of different degree in temporal dynamics, confirmed that the dynamic model is preferred to the existing time-varying model in terms of model comparison criteria through conditional predictive ordinate. When applied to a dental health data of children with age between 7 and 12 years, the dynamic model reveals that the relative risk of emergence of permanent tooth 24 between children with and without an infected primary predecessor is the highest at around age 7.5, and that it gradually reduces to one after age 11. These findings were not seen from the existing studies with Cox proportional hazards models.
机译:具有随时间变化的系数的Cox模型在捕获事件发生时间的协变量影响的时间动态方面提供了极大的灵活性,而Cox比例风险模型可能会将其隐藏起来。但是,针对不同系数的Cox模型的方法开发主要局限于正确的审查数据。仅对间隔检查数据进行了有限的工作。在大多数现有的可变系数模型方法中,分析人员需要指定哪些协变量系数是时变的,而哪些不是拟合时的。我们为贝叶斯框架中的区间删失数据提出了动态Cox回归模型,其中系数曲线是分段恒定的,但块数和跳变点是协变量特定的,并根据数据进行估计。该模型自动确定每个协变量需要时间动态的程度,从而使曲线估计更加平滑和稳定。通过有效的可逆跳跃马尔可夫链蒙特卡洛算法进行后验计算。每个系数的推论是基于具有不同件数和跳跃点的模型的平均值。通过对三个协变量的仿真研究,每个协变量在时间动力学中具有不同程度的系数,证实通过条件预测纵坐标,在模型比较标准方面,动力学模型优于现有的时变模型。当将其应用于7至12岁儿童的牙齿健康数据时,该动态模型显示,有和没有感染原发性前辈的儿童之间出现恒牙24的相对风险在7.5岁左右最高,并且它在11岁以后逐渐减少到1岁。这些发现在现有的Cox比例风险模型研究中未见。

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