广义线性模型
统计
泊松回归
比例危险模型
危害
数学
对数线性模型
线性回归
泊松分布
线性模型
计量经济学
计算机科学
回归分析
回归
人口
社会学
人口学
有机化学
化学
作者
Paul W. Dickman,Andy Sloggett,Michael Hills,Timo Hakulinen
摘要
Abstract Four approaches to estimating a regression model for relative survival using the method of maximum likelihood are described and compared. The underlying model is an additive hazards model where the total hazard is written as the sum of the known baseline hazard and the excess hazard associated with a diagnosis of cancer. The excess hazards are assumed to be constant within pre‐specified bands of follow‐up. The likelihood can be maximized directly or in the framework of generalized linear models. Minor differences exist due to, for example, the way the data are presented (individual, aggregated or grouped), and in some assumptions (e.g. distributional assumptions). The four approaches are applied to two real data sets and produce very similar estimates even when the assumption of proportional excess hazards is violated. The choice of approach to use in practice can, therefore, be guided by ease of use and availability of software. We recommend using a generalized linear model with a Poisson error structure based on collapsed data using exact survival times. The model can be estimated in any software package that estimates GLMs with user‐defined link functions (including SAS, Stata, S‐plus, and R) and utilizes the theory of generalized linear models for assessing goodness‐of‐fit and studying regression diagnostics. Copyright © 2004 John Wiley & Sons, Ltd.
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