Tamborrino Massimiliano, Ditlevsen Susanne, Lansky Peter
Department of Mathematical Sciences, Copenhagen University, Universitetsparken 5, 2100, Copenhagen, Denmark,
Lifetime Data Anal. 2015 Jul;21(3):331-52. doi: 10.1007/s10985-014-9307-7. Epub 2014 Sep 4.
A latent internal process describes the state of some system, e.g. the social tension in a political conflict, the strength of an industrial component or the health status of a person. When this process reaches a predefined threshold, the process terminates and an observable event occurs, e.g. the political conflict finishes, the industrial component breaks down or the person dies. Imagine an intervention, e.g., a political decision, maintenance of a component or a medical treatment, is initiated to the process before the event occurs. How can we evaluate whether the intervention had an effect? To answer this question we describe the effect of the intervention through parameter changes of the law governing the internal process. Then, the time interval between the start of the process and the final event is divided into two subintervals: the time from the start to the instant of intervention, denoted by S, and the time between the intervention and the threshold crossing, denoted by R. The first question studied here is: What is the joint distribution of (S,R)? The theoretical expressions are provided and serve as a basis to answer the main question: Can we estimate the parameters of the model from observations of S and R and compare them statistically? Maximum likelihood estimators are calculated and applied on simulated data under the assumption that the process before and after the intervention is described by the same type of model, i.e. a Brownian motion, but with different parameters. Also covariates and handling of censored observations are incorporated into the statistical model, and the method is illustrated on lung cancer data.
一个潜在的内部过程描述了某个系统的状态,例如政治冲突中的社会紧张局势、工业部件的强度或一个人的健康状况。当这个过程达到一个预先定义的阈值时,该过程终止并发生一个可观察到的事件,例如政治冲突结束、工业部件损坏或人死亡。设想在事件发生之前对该过程启动一项干预措施,例如一项政治决策、部件维护或医疗治疗。我们如何评估该干预措施是否有效果呢?为了回答这个问题,我们通过控制内部过程的规律的参数变化来描述干预措施的效果。然后,将过程开始到最终事件之间的时间间隔分为两个子间隔:从开始到干预时刻的时间,记为S,以及干预到阈值跨越之间的时间,记为R。这里研究的第一个问题是:(S, R)的联合分布是什么?给出了理论表达式,并作为回答主要问题的基础:我们能否从S和R的观测值估计模型参数并进行统计比较?在假设干预前后的过程由同一类型的模型(即布朗运动,但参数不同)描述的情况下,计算了最大似然估计量并应用于模拟数据。还将协变量和删失观测值的处理纳入统计模型,并在肺癌数据上对该方法进行了说明。