In this paper we introduce a mixture cure model with a linear hazard rate regression model for the event times. Cure models are statistical models for event times that take into account that a fraction of the population might never experience the event of interest, this fraction is said to be {`}cured{'}. The population survival function in a mixture cure model takes the form $S(t) = 1 - \pi + \pi\exp(-\int_0^t\alpha(s)\,d s)$, where $\pi$ is the probability of being susceptible to the event under study, and $\alpha(s)$ is the hazard rate of the susceptible fraction. We let both $\pi$ and $\alpha(s)$ depend on possibly different covariate vectors $X$ and $Z$. The probability $\pi$ is taken to be the logistic function $\pi(X^{\prime}\gamma) = 1/\{1+\exp(-X^{\prime}\gamma)\}$, while we model $\alpha(s)$ by Aalen's linear hazard rate regression model. This model postulates that a susceptible individual has hazard rate function $\alpha(t;Z) = \beta_0(t) + \beta_1(t)Z_1 + \cdots + Z_{q-1}\beta_{q-1}(t)$ in terms of her covariate values $Z_1,\ldots,Z_{q-1}$. The large-sample properties of our estimators are studied by way of parametric models that tend to a semiparametric model as a parameter $K \to \infty$. For each model in the sequence of parametric models, we assume that the data generating mechanism is parametric, thus simplifying the derivation of the estimators, as well as the proofs of consistency and limiting normality. Finally, we use contiguity techniques to switch back to assuming that the data stem from the semiparametric model. This technique for deriving and studying estimators in non- and semiparametric settings has previously been studied and employed in the high-frequency data literature, but seems to be novel in survival analysis.
翻译:在本文中, 我们引入了一个含有事件时间线性危险率回归模型的混合物解析模型。 焦量模型是事件时间的统计模型, 其中考虑到部分人口可能永远不会经历感兴趣的事件, 这个部分据说是 {cured{} 。 在混合解析模型中, 人口生存功能的形式是 $( t) = 1 -\ pi +\ pi\ exp (-\\\\ prime\\ d s) $, 其中, 美元是受研究事件影响的概率, 美元是受研究事件影响的概率的统计模型, 而 $\pha( s) 是受研究部分的危害率比率 。 我们让美元和 $ dalpha( t) 取决于可能不同的共变数矢量矢量 $ 和 $Z. 。 美元的概率被理解为逻辑函数 $ (xprime) = = 1\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\\xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx