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灵活超额风险建模的统一框架及其在癌症流行病学中的应用

A Unifying Framework for Flexible Excess Hazard Modelling with Applications in Cancer Epidemiology

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2022
被引 13
ABS 3

中文导读

提出一个基于链接的可加建模框架,用于超额风险建模,可纳入空间、时间依赖等多种协变量效应,处理删失和左截断,并在英格兰癌症数据中验证了非线性与时空效应。

Abstract

Abstract Excess hazard modelling is one of the main tools in population-based cancer survival research. Indeed, this setting allows for direct modelling of the survival due to cancer even in the absence of reliable information on the cause of death, which is common in population-based cancer epidemiology studies. We propose a unifying link-based additive modelling framework for the excess hazard that allows for the inclusion of many types of covariate effects, including spatial and time-dependent effects, using any type of smoother, such as thin plate, cubic splines, tensor products and Markov random fields. In addition, this framework accounts for all types of censoring as well as left truncation. Estimation is conducted by using an efficient and stable penalized likelihood-based algorithm whose empirical performance is evaluated through extensive simulation studies. Some theoretical and asymptotic results are discussed. Two case studies are presented using population-based cancer data from patients diagnosed with breast (female), colon and lung cancers in England. The results support the presence of non-linear and time-dependent effects as well as spatial variation. The proposed approach is available in the R package GJRM.

癌症流行病学生存分析统计建模生物统计学