首页> 外文期刊>BMC Medical Research Methodology >Fitting a shared frailty illness-death model to left-truncated semi-competing risks data to examine the impact of education level on incident dementia
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Fitting a shared frailty illness-death model to left-truncated semi-competing risks data to examine the impact of education level on incident dementia

机译:将共享的脆弱性疾病 - 死亡模式拟合到左截断的半竞争风险数据,以检查教育水平对入射痴呆的影响

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Semi-competing risks arise when interest lies in the time-to-event for some non-terminal event, the observation of which is subject to some terminal event. One approach to assessing the impact of covariates on semi-competing risks data is through the illness-death model with shared frailty, where hazard regression models are used to model the effect of covariates on the endpoints. The shared frailty term, which can be viewed as an individual-specific random effect, acknowledges dependence between the events that is not accounted for by covariates. Although methods exist for fitting such a model to right-censored semi-competing risks data, there is currently a gap in the literature for fitting such models when a flexible baseline hazard specification is desired and the data are left-truncated, for example when time is on the age scale. We provide a modeling framework and openly available code for implementation. We specified the model and the likelihood function that accounts for left-truncated data, and provided an approach to estimation and inference via maximum likelihood. Our model was fully parametric, specifying baseline hazards via Weibull or B-splines. Using simulated data we examined the operating characteristics of the implementation in terms of bias and coverage. We applied our methods to a dataset of 33,117 Kaiser Permanente Northern California members aged 65 or older examining the relationship between educational level (categorized as: high school or less; trade school, some college or college graduate; post-graduate) and incident dementia and death. A simulation study showed that our implementation provided regression parameter estimates with negligible bias and good coverage. In our data application, we found higher levels of education are associated with a lower risk of incident dementia, after adjusting for sex and race/ethnicity. As illustrated by our analysis of Kaiser data, our proposed modeling framework allows the analyst to assess the impact of covariates on semi-competing risks data, such as incident dementia and death, while accounting for dependence between the outcomes when data are left-truncated, as is common in studies of aging and dementia.
机译:当某些非终端事件的次次发生时,出现半竞争风险时出现了兴趣,观察到某些终端事件。评估协变量对半竞争风险数据的一种方法是通过与共享体现的疾病 - 死亡模型,其中危险回归模型用于模拟协变量对端点的影响。可以被视为个人特定的随机效应的共享体积术语,承认协变量不占的事件之间的依赖。尽管存在用于拟合这样的模型的方法以右缩小的半竞争风险数据,但是当需要柔性基线危险规范并且数据被截断时,目前在文献中拟合这些模型的差距,例如截断的数据在年龄级。我们提供建模框架和公开可用的执行代码。我们指定了左截断数据的模型和似然函数,并提供了通过最大可能性估计和推断的方法。我们的模型是全参数的,通过Wibull或B样条指定基线危险。使用模拟数据,我们在偏差和覆盖范围内检查了实施的操作特征。我们将我们的方法应用于33,117 kaiser永久北加州成员的数据集,年龄在65岁或以上审查教育水平之间的关系(分类为:高中或更低;贸易学校,一些大学或大学毕业生;毕业后的事件痴呆和事件痴呆死亡。仿真研究表明,我们的实施提供了回归参数估计,偏差可忽略不可计量和良好的覆盖范围。在我们的数据申请中,我们发现更高水平的教育与入射痴呆风险较低,调整性和种族/种族后。如我们对履带式数据分析的说明,我们提出的建模框架允许分析师评估协变量对半竞争风险数据的影响,例如入射痴呆和死亡,同时在截断数据时核算结果之间的依赖,在衰老和痴呆的研究中是常见的。

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