Department of Statistics, The University of Auckland, Auckland, New Zealand.
Stat Methods Med Res. 2024 Apr;33(4):728-742. doi: 10.1177/09622802241236935. Epub 2024 Mar 6.
Joint modelling of longitudinal and time-to-event data is a method that recognizes the dependency between the two data types, and combines the two outcomes into a single model, which leads to more precise estimates. These models are applicable when individuals are followed over a period of time, generally to monitor the progression of a disease or a medical condition, and also when longitudinal covariates are available. Medical cost datasets are often also available in longitudinal scenarios, but these datasets usually arise from a complex sampling design rather than simple random sampling and such complex sampling design needs to be accounted for in the statistical analysis. Ignoring the sampling mechanism can lead to misleading conclusions. This article proposes a novel approach to the joint modelling of complex data by combining survey calibration with standard joint modelling. This is achieved by incorporating a new set of equations to calibrate the sampling weights for the survival model in a joint model setting. The proposed method is applied to data on anti-dementia medication costs and mortality in people with diagnosed dementia in New Zealand.
联合建模纵向和生存时间数据是一种方法,它认识到两种数据类型之间的依赖关系,并将两种结果合并到一个单一的模型中,从而得到更精确的估计。这些模型适用于个体在一段时间内被跟踪的情况,通常用于监测疾病或医疗状况的进展,也适用于存在纵向协变量的情况。医疗费用数据集通常也可以在纵向情况下获得,但这些数据集通常来自复杂的抽样设计,而不是简单的随机抽样,并且这种复杂的抽样设计需要在统计分析中考虑。忽略抽样机制可能会导致误导性的结论。本文提出了一种新的方法,通过将调查校准与标准联合建模相结合,对复杂数据进行联合建模。这是通过在联合模型设置中为生存模型纳入一组新的方程来实现的,以校准抽样权重。该方法应用于新西兰诊断为痴呆症的患者的抗痴呆药物费用和死亡率数据。