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State selection in Markov models for panel data with application to psoriatic arthritis

机译:用于面板数据的马尔可夫模型中的状态选择及其在银屑病关节炎中的应用

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摘要

Markov multistate models in continuous-time are commonly used to understand the progression over time of disease or the effect of treatments and covariates on patient outcomes. The states in multistate models are related to categorizations of the disease status but there is often uncertainty about the number of categories to use and how to define them. Many categorizations, and therefore multistate models with different states, may be possible. Different multistate models can show differences in the effects of covariates or in the time to events, such as death, hospitalization or disease progression. Furthermore, different categorizations contain different quantities of information, so that the corresponding likelihoods are on different scales, and standard, likelihood-based model comparison is not applicable.We adapt a recently-developed modification of Akaike’s criterion, and a cross-validatory criterion, to compare the predictive ability of multistate models on the information which they share. All the models we consider are fitted to data consisting of observations of the process at arbitrary times, often called “panel” data. We develop an implementation of these criteria through Hidden Markov models and apply them to the comparison of multistate models for the Health Assessment Questionnaire score in Psoriatic Arthritis. This procedure is straightforward to implement in the R package ’msm’.
机译:连续时间的马尔可夫多状态模型通常用于了解疾病随时间的进展或治疗方法和协变量对患者预后的影响。多状态模型中的状态与疾病状态的分类有关,但是对于要使用的类别数量以及如何定义它们常常存在不确定性。许多分类,以及因此具有不同状态的多状态模型都是可能的。不同的多状态模型可以显示协变量的影响或发生事件的时间(例如死亡,住院或疾病进展)的差异。此外,不同的分类包含不同数量的信息,因此相应的可能性在不同的尺度上,因此不适用标准的基于可能性的模型比较。我们采用了最近开发的Akaike准则的修改和交叉验证准则,比较多状态模型对它们共享的信息的预测能力。我们考虑的所有模型都适合于任意时间对过程进行观察的数据,通常称为“面板”数据。我们通过隐马尔可夫模型开发了这些标准的实施方案,并将其应用于银屑病关节炎健康评估问卷得分的多状态模型比较。在R包“ msm”中可以轻松实现此过程。

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