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Multiple indicator hidden Markov model with an application to medical utilization data.

机译:多指标隐马尔可夫模型及其在医疗利用数据中的应用。

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Monthly counts of medical visits across several years for persons identified to have alcoholism problems are modeled using two-state hidden Markov models (HMM) in order to describe the effect of alcoholism treatment on the likelihood of persons to be in a 'healthy' or 'unhealthy' state. The medical visits can be classified into different types leading to multivariate counts of medical visits each month. A multiple indicator HMM is introduced, which simultaneously fits the multivariate Poisson counts by assuming a shared hidden state underlying all of them. The multiple indicator HMM borrows information across different types of medical encounters. A univariate HMM based on the total count across types of medical visits each month is also considered. Comparisons between the multiple indicator HMM and the total count HMM are made, as well as comparisons with more traditional longitudinal models that directly model the counts. A Bayesian framework is used for the estimation of the HMM and implementation is in Winbugs. Copyright (c) 2008 John Wiley & Sons, Ltd.
机译:为了描述酒精中毒对人处于“健康”或“健康”状态的可能性的影响,我们使用两种状态的隐马尔可夫模型(HMM)对被识别为患有酒精中毒问题的人的数年内的每月就诊次数进行建模。不健康的状态。可以将医疗访问分为不同的类型,从而导致每个月的医疗访问有多种计数。引入了一个多指标HMM,它通过假设所有这些指标都处于共享隐藏状态来同时拟合多元Poisson计数。多指标HMM在不同类型的医疗遭遇中借用信息。还考虑了基于每月各种医疗就诊总数的单变量HMM。比较了多个指标HMM和总计数HMM,并与直接建模计数的更传统的纵向模型进行了比较。贝叶斯框架用于HMM的估计,其实现在Winbugs中。版权所有(c)2008 John Wiley&Sons,Ltd.

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