de Uña-Álvarez Jacobo, Meira-Machado Luís
Department of Statistics and Operations Research, Facultad de Ciencias Económicas y Empresariales & Centro de Investigaciones Biomédicas (CINBIO), University of Vigo, Campus Lagoas-Marcosende, 36310, Vigo, Spain.
Centre of Mathematics & Department of Mathematics and Applications, University of Minho, Campus de Azurém, 4800-058, Guimarães, Portugal.
Biometrics. 2015 Jun;71(2):364-75. doi: 10.1111/biom.12288. Epub 2015 Mar 2.
Multi-state models are often used for modeling complex event history data. In these models the estimation of the transition probabilities is of particular interest, since they allow for long-term predictions of the process. These quantities have been traditionally estimated by the Aalen-Johansen estimator, which is consistent if the process is Markov. Several non-Markov estimators have been proposed in the recent literature, and their superiority with respect to the Aalen-Johansen estimator has been proved in situations in which the Markov condition is strongly violated. However, the existing estimators have the drawback of requiring that the support of the censoring distribution contains the support of the lifetime distribution, which is not often the case. In this article, we propose two new methods for estimating the transition probabilities in the progressive illness-death model. Some asymptotic results are derived. The proposed estimators are consistent regardless the Markov condition and the referred assumption about the censoring support. We explore the finite sample behavior of the estimators through simulations. The main conclusion of this piece of research is that the proposed estimators are much more efficient than the existing non-Markov estimators in most cases. An application to a clinical trial on colon cancer is included. Extensions to progressive processes beyond the three-state illness-death model are discussed.
多状态模型常用于对复杂的事件历史数据进行建模。在这些模型中,转移概率的估计尤为重要,因为它们能够对该过程进行长期预测。传统上,这些量是通过Aalen-Johansen估计器来估计的,如果过程是马尔可夫的,那么该估计器是一致的。最近的文献中提出了几种非马尔可夫估计器,并且在马尔可夫条件被严重违反的情况下,已证明它们相对于Aalen-Johansen估计器具有优越性。然而,现有的估计器存在一个缺点,即要求删失分布的支撑集包含寿命分布的支撑集,而实际情况往往并非如此。在本文中,我们提出了两种新的方法来估计渐进性疾病-死亡模型中的转移概率。推导了一些渐近结果。所提出的估计器无论马尔可夫条件以及关于删失支撑的相关假设如何都是一致的。我们通过模拟探索了估计器的有限样本行为。这项研究的主要结论是,在大多数情况下,所提出的估计器比现有的非马尔可夫估计器效率更高。本文还包括了对一项结肠癌临床试验的应用。讨论了对三状态疾病-死亡模型之外的渐进过程的扩展。