首页> 外文期刊>Statistics in medicine >Reduced-rank hazard regression for modelling non-proportional hazards.
【24h】

Reduced-rank hazard regression for modelling non-proportional hazards.

机译:降级风险回归用于对非比例风险建模。

获取原文
获取原文并翻译 | 示例
           

摘要

The Cox proportional hazards model is the most common method to analyse survival data. However, the proportional hazards assumption might not hold. The natural extension of the Cox model is to introduce time-varying effects of the covariates. For some covariates such as (surgical)treatment non-proportionality could be expected beforehand. For some other covariates the non-proportionality only becomes apparent if the follow-up is long enough. It is often observed that all covariates show similar decaying effects over time. Such behaviour could be explained by the popular (gamma-) frailty model. However, the (marginal) effects of covariates in frailty models are not easy to interpret. In this paper we propose the reduced-rank model for time-varying effects of covariates. Starting point is a Cox model with p covariates and time-varying effects modelled by q time functions (constant included), leading to a pxq structure matrix that contains the regression coefficients for all covariate by time function interactions. By reducing the rank of this structure matrix a whole range of models is introduced, from the very flexible full-rank model (identical to a Cox model with time-varying effects) to the very rigid rank one model that mimics the structure of a gamma-frailty model, but is easier to interpret. We illustrate these models with an application to ovarian cancer patients.
机译:Cox比例风险模型是分析生存数据的最常用方法。但是,比例风险假设可能不成立。 Cox模型的自然扩展是引入协变量的时变效应。对于某些协变量,例如(手术)治疗,可能会事先不成比例。对于其他一些协变量,只有后续时间足够长时,非比例性才变得明显。经常观察到,所有协变量随时间显示相似的衰减效果。这种行为可以用流行的(伽玛)脆弱模型来解释。但是,脆弱模型中协变量的(边际)影响不容易解释。在本文中,我们提出了协变量的时变效应的降秩模型。起点是一个带有p个协变量的Cox模型,并通过q个时间函数(包括常数)对时变效应进行建模,从而得到一个pxq结构矩阵,其中包含所有按时间函数交互的协变量的回归系数。通过降低该结构矩阵的等级,引入了整个模型范围,从非常灵活的全等级模型(与具有时变效应的Cox模型相同)到非常严格的等级一模型(模仿伽玛的结构) -脆弱模型,但更易于解释。我们将这些模型应用于卵巢癌患者。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号