Brown Denise, Kauermann Göran, Ford Ian
MRC Social and Public Health Sciences Unit, 4 Lilybank Gardens, University of Glasgow, G12 8RZ, Scotland.
Biom J. 2007 Jun;49(3):441-52. doi: 10.1002/bimj.200510325.
Survival data are often modelled by the Cox proportional hazards model, which assumes that covariate effects are constant over time. In recent years however, several new approaches have been suggested which allow covariate effects to vary with time. Non-proportional hazard functions, with covariate effects changing dynamically, can be fitted using penalised spline (P-spline) smoothing. By utilising the link between P-spline smoothing and generalised linear mixed models, the smoothing parameters steering the amount of smoothing can be selected. A hybrid routine, combining the mixed model approach with a classical Akaike criterion, is suggested. This approach is evaluated with simulations and applied to data from the West of Scotland Coronary Prevention Study.
生存数据通常采用Cox比例风险模型进行建模,该模型假设协变量效应随时间保持不变。然而,近年来,有人提出了几种新方法,允许协变量效应随时间变化。对于协变量效应动态变化的非比例风险函数,可以使用惩罚样条(P样条)平滑法进行拟合。通过利用P样条平滑法与广义线性混合模型之间的联系,可以选择控制平滑量的平滑参数。有人提出了一种将混合模型方法与经典赤池准则相结合的混合程序。该方法通过模拟进行评估,并应用于苏格兰西部冠心病预防研究的数据。