Markov Model of Disease Development and Recovery

M. Krzemiński
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Abstract

Markov models are commonly used to simulate diseases and allow modeling of multiple health states and outcomes. Starting with the well known Le Bras multistate model (cascading failure model) with time-independent transitions we will see how simple Markov mortality models may be pressed into the service of survival and event history analysis. We will focus on more complex models which will be able to take into account remission, recovery or other outcomes of therapy. We will discuss explicit, analytical solutions for survival functions and mortality rates of a model that can be described as a birth-and-death process with killing with linear rates as well as parametric estimation from panel data. We illustrate our theoretical findings with analysis of real and simulated data.
疾病发展和恢复的马尔可夫模型
马尔可夫模型通常用于模拟疾病,并允许对多种健康状态和结果进行建模。从众所周知的具有时间无关转换的Le Bras多状态模型(级联失效模型)开始,我们将看到简单的马尔可夫死亡率模型如何被用于生存和事件历史分析。我们将关注更复杂的模型,这些模型将能够考虑到缓解、恢复或治疗的其他结果。我们将讨论一个模型的生存函数和死亡率的明确的解析解,该模型可以被描述为具有线性速率的死亡的出生和死亡过程以及来自面板数据的参数估计。我们通过对真实数据和模拟数据的分析来说明我们的理论发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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