Department of Public Health, Erasmus MC, University Medical Center, Rotterdam, the Netherlands (JVR, MT, JFO)
Department of Biostatistics, Erasmus MC, University Medical Center, Rotterdam, the Netherlands (JVR)
Med Decis Making. 2013 Aug;33(6):767-79. doi: 10.1177/0272989X13487947. Epub 2013 May 28.
Markov models are a simple and powerful tool for analyzing the health and economic effects of health care interventions. These models are usually evaluated in discrete time using cohort analysis. The use of discrete time assumes that changes in health states occur only at the end of a cycle period. Discrete-time Markov models only approximate the process of disease progression, as clinical events typically occur in continuous time. The approximation can yield biased cost-effectiveness estimates for Markov models with long cycle periods and if no half-cycle correction is made. The purpose of this article is to present an overview of methods for evaluating Markov models in continuous time. These methods use mathematical results from stochastic process theory and control theory. The methods are illustrated using an applied example on the cost-effectiveness of antiviral therapy for chronic hepatitis B. The main result is a mathematical solution for the expected time spent in each state in a continuous-time Markov model. It is shown how this solution can account for age-dependent transition rates and discounting of costs and health effects, and how the concept of tunnel states can be used to account for transition rates that depend on the time spent in a state. The applied example shows that the continuous-time model yields more accurate results than the discrete-time model but does not require much computation time and is easily implemented. In conclusion, continuous-time Markov models are a feasible alternative to cohort analysis and can offer several theoretical and practical advantages.
马尔可夫模型是分析医疗干预措施的健康和经济效果的简单而强大的工具。这些模型通常在离散时间使用队列分析进行评估。使用离散时间假设健康状态的变化仅在周期结束时发生。离散时间马尔可夫模型仅近似疾病进展过程,因为临床事件通常发生在连续时间。对于具有长周期的马尔可夫模型,如果不进行半周期校正,则近似会导致成本效益估计产生偏差。本文的目的是介绍连续时间马尔可夫模型评估方法的概述。这些方法使用随机过程理论和控制理论的数学结果。使用关于慢性乙型肝炎抗病毒治疗的成本效益的应用示例来说明这些方法。主要结果是连续时间马尔可夫模型中每个状态的预期停留时间的数学解。展示了如何使用此解决方案来考虑与年龄相关的转移率以及成本和健康效果的折扣,以及如何使用隧道状态的概念来考虑取决于状态停留时间的转移率。应用示例表明,连续时间模型比离散时间模型产生更准确的结果,但不需要太多的计算时间,并且易于实现。总之,连续时间马尔可夫模型是队列分析的可行替代方案,并且可以提供几个理论和实际优势。