Department of Statistics, University of Kentucky, Lexington, Kentucky, USA.
Department of Epidemiology, University of Kentucky, Lexington, Kentucky, USA.
Stat Med. 2021 May 20;40(11):2650-2664. doi: 10.1002/sim.8923. Epub 2021 Mar 10.
Finite Markov chains are useful tools for studying transitions among health states; these chains can be complex consisting of a mix of transient and absorbing states. The transition probabilities, which are often affected by covariates, can be difficult to estimate due to the presence of many covariates and/or a subset of transitions that are rarely observed. The purpose of this article is to show how to estimate the effect of a subset of covariates of interest after adjusting for the presence of multiple other covariates by applying multidimensional dimension reduction to the latter. The case in which transitions within each row of the one-step transition probability matrix are estimated by multinomial logistic regression is discussed in detail. Dimension reduction for the adjustment covariates involves estimating the effect of the covariates by a product of matrices iteratively; at each iteration one matrix in the product is fixed while the second is estimated using either standard software or nonlinear estimation, depending on which of the matrices in the product is fixed. The algorithm is illustrated by an application where the effect of at least one Apolipoprotein-E (APOE) gene allele on transition probability is estimated in a Markov Chain that includes adjustment for eight covariates and focuses on transitions from normal cognition to several forms of mild cognitive impairment, with possible absorption into dementia. Data were drawn from annual cognitive assessments of 649 participants enrolled in the BRAiNS cohort at the University of Kentucky's Alzheimer's Disease Research Center.
有限马尔可夫链是研究健康状态之间转移的有用工具;这些链可能很复杂,由瞬态和吸收态的混合组成。由于存在许多协变量和/或很少观察到的一部分转移,转移概率往往受到协变量的影响,因此很难估计。本文的目的是展示如何通过对后者进行多维降维来调整多个其他协变量的存在后,估计感兴趣的协变量子集的影响。详细讨论了通过多项逻辑回归估计一步转移概率矩阵中每一行内转移的情况。调整协变量的降维涉及通过矩阵的乘积迭代估计协变量的影响;在每次迭代中,乘积中的一个矩阵固定,而第二个矩阵使用标准软件或非线性估计进行估计,具体取决于乘积中的哪个矩阵固定。该算法通过应用程序来说明,其中在包括调整八个协变量的马尔可夫链中估计载脂蛋白 E (APOE) 基因至少一个等位基因对转移概率的影响,并重点关注从正常认知到几种形式的轻度认知障碍的转移,可能会吸收到痴呆症中。数据来自肯塔基大学阿尔茨海默病研究中心的 BRAiNS 队列中 649 名参与者的年度认知评估。