additive risk model
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Author(s):  
Nils Lid Hjort ◽  
Emil Aas Stoltenberg

AbstractAalen’s linear hazard rate regression model is a useful and increasingly popular alternative to Cox’ multiplicative hazard rate model. It postulates that an individual has hazard rate function $$h(s)=z_1\alpha _1(s)+\cdots +z_r\alpha _r(s)$$ h ( s ) = z 1 α 1 ( s ) + ⋯ + z r α r ( s ) in terms of his covariate values $$z_1,\ldots ,z_r$$ z 1 , … , z r . These are typically levels of various hazard factors, and may also be time-dependent. The hazard factor functions $$\alpha _j(s)$$ α j ( s ) are the parameters of the model and are estimated from data. This is traditionally accomplished in a fully nonparametric way. This paper develops methodology for estimating the hazard factor functions when some of them are modelled parametrically while the others are left unspecified. Large-sample results are reached inside this partly parametric, partly nonparametric framework, which also enables us to assess the goodness of fit of the model’s parametric components. In addition, these results are used to pinpoint how much precision is gained, using the parametric-nonparametric model, over the standard nonparametric method. A real-data application is included, along with a brief simulation study.


2020 ◽  
Vol 190 (1) ◽  
pp. 129-141
Author(s):  
Matthieu de Rochemonteix ◽  
Valerio Napolioni ◽  
Nilotpal Sanyal ◽  
Michaël E Belloy ◽  
Neil E Caporaso ◽  
...  

Abstract Several statistical methods have been proposed for testing gene-environment (G-E) interactions under additive risk models using data from genome-wide association studies. However, these approaches have strong assumptions from underlying genetic models, such as dominant or recessive effects that are known to be less robust when the true genetic model is unknown. We aimed to develop a robust trend test employing a likelihood ratio test for detecting G-E interaction under an additive risk model, while incorporating the G-E independence assumption to increase power. We used a constrained likelihood to impose 2 sets of constraints for: 1) the linear trend effect of genotype and 2) the additive joint effects of gene and environment. To incorporate the G-E independence assumption, a retrospective likelihood was used versus a standard prospective likelihood. Numerical investigation suggests that the proposed tests are more powerful than tests assuming dominant, recessive, or general models under various parameter settings and under both likelihoods. Incorporation of the independence assumption enhances efficiency by 2.5-fold. We applied the proposed methods to examine the gene-smoking interaction for lung cancer and gene–apolipoprotein E $\varepsilon$4 interaction for Alzheimer disease, which identified 2 interactions between apolipoprotein E $\varepsilon$4 and loci membrane-spanning 4-domains subfamily A (MS4A) and bridging integrator 1 (BIN1) genes at genome-wide significance that were replicated using independent data.


2016 ◽  
Vol 60 (4) ◽  
pp. 685-700 ◽  
Author(s):  
YanFeng Li ◽  
HuiJuan Ma ◽  
DeHui Wang ◽  
Yong Zhou

2016 ◽  
Vol 109 ◽  
pp. 189-193
Author(s):  
Audrey Boruvka ◽  
Glen Takahara ◽  
Dongsheng Tu

2013 ◽  
Vol 42 (11) ◽  
pp. 1958-1981
Author(s):  
Wanrong Liu ◽  
Xuewen Lu ◽  
Yongcheng Qi

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