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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Modeling markers of disease progression by a hidden Markov process: Application to characterizing CD4 cell decline
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Modeling markers of disease progression by a hidden Markov process: Application to characterizing CD4 cell decline

机译:通过隐马尔可夫过程建模疾病进展的标志物:在表征CD4细胞下降中的应用

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Multistate models have been increasingly used to model natural history of many diseases as well as to characterize the follow-up of patients under varied clinical protocols. This modeling allows describing disease evolution, estimating the transition rates, and evaluating the therapy effects on progression. In many cases, the staging is defined on the basis of a discretization of the values of continuous markers (CD4 cell count for HIV application) that are subject to great variability due mainly to short time-scale noise (intraindividual variability) and measurement errors. This led us to formulate a Bayesian hierarchical model where, at a first level, a disease process (Markov model on the true states, which are unobserved) is introduced and, at a second level, the measurement process making the link between the true states and the observed marker values is modeled. This hierarchical formulation allows joint estimation of the parameters of both processes. Estimation of the quantities of interest is performed via stochastic algorithms of the family of Markov chain Monte Carlo methods. The flexibility of this approach is illustrated by analyzing the CD4 data on HIV patients of the Concorde clinical trial. [References: 31]
机译:多状态模型已被越来越多地用于建模许多疾病的自然病史以及表征各种临床方案下的患者随访情况。这种模型可以描述疾病的发展,估计过渡率以及评估治疗对进展的影响。在许多情况下,分期是根据连续标记值(用于HIV的CD4细胞计数)的离散化来定义的,这些连续标记的变化主要是由于时间尺度短的噪声(个体内可变性)和测量误差而引起的。这导致我们建立了贝叶斯分层模型,其中在第一级引入了疾病过程(在真实状态下未观察到的马尔可夫模型),在第二级引入了测量过程,从而建立了真实状态之间的联系然后将观察到的标记值建模。这种分级表述允许对两个过程的参数进行联合估计。感兴趣量的估计是通过Markov链蒙特卡洛方法族的随机算法进行的。通过分析Concorde临床试验中HIV患者的CD4数据,可以说明这种方法的灵活性。 [参考:31]

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