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Estimation of a disease model based on a discrete time Markov model using secondary data with transitions based on multi-dimensional tables

机译:基于离散时间马尔可夫模型的疾病模型估计,该模型使用基于多维表的带有过渡的辅助数据

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The progression of a disease may be affected by many risk factors, such as gender, age, and current disease state. Such information is collected and made publically available by published clinical studies, yet combining this information into a disease model remains a challenge. This paper extends the previously published maximum likelihood estimation technique to estimate model parameters from indirect secondary data. Such information is available in the scientific literature so the modeler can access more data when estimating model parameters. The extension to the estimation procedure allows model transitions that depend on different sets of covariates for which secondary data are available. This extension uses a Markov model with transition probabilities stored in multi-dimensional tables accessed by covariate values. The paper uses a set of cases, including a case of cardiovascular disease in diabetes. The cases demonstrate the proposed method with various model variations. To help cope with model multiplicity, a selection method is demonstrated for picking a preferred model according to likelihood and structure criteria.
机译:疾病的发展可能受到许多风险因素的影响,例如性别,年龄和当前疾病状态。此类信息已通过公开的临床研究收集并公开提供,但是将这些信息组合到疾病模型中仍然是一个挑战。本文扩展了先前发布的最大似然估计技术,以从间接辅助数据中估计模型参数。这些信息在科学文献中可用,因此建模者可以在估计模型参数时访问更多数据。估计程序的扩展允许模型转换取决于辅助数据可用的不同协变量集。此扩展使用马尔可夫模型,其转移概率存储在通过协变量值访问的多维表中。本文使用了一系列病例,包括糖尿病中的心血管疾病。案例证明了所提出的方法具有各种模型变化。为了帮助应对模型的多样性,演示了一种选择方法,用于根据可能性和结构标准选择首选模型。

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