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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 >Hierarchical Bayesian methods for estimation of parameters in a longitudinal HIV dynamic system
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Hierarchical Bayesian methods for estimation of parameters in a longitudinal HIV dynamic system

机译:贝叶斯方法在纵向HIV动态系统中的参数估计

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摘要

HIV dynamics studies have significantly contributed to the understanding of HIV infection and antiviral treatment strategies. But most studies are limited to short-term viral dynamics due to the difficulty of establishing a relationship of antiviral response with multiple treatment factors such as drug exposure and drug susceptibility during long-term treatment. In this article, a mechanism-based dynamic model is proposed for characterizing long-term viral dynamics with antiretroviral therapy, described by a set of nonlinear differential equations without closed-form solutions. In this model we directly incorporate drug concentration, adherence, and drug susceptibility into a function of treatment efficacy, defined as an inhibition rate of virus replication. We investigate a Bayesian approach under the framework of hierarchical Bayesian (mixed-effects) models for estimating unknown dynamic parameters. In particular, interest focuses on estimating individual dynamic parameters. The proposed methods not only help to alleviate the difficulty in parameter identifiability, but also flexibly deal with sparse and unbalanced longitudinal data from individual subjects. For illustration purposes, we present one simulation example to implement the proposed approach and apply the methodology to a data set from an AIDS clinical trial. The basic concept of the longitudinal HIV dynamic systems and the proposed methodologies are generally applicable to any other biomedical dynamic systems.
机译:HIV动态研究对理解HIV感染和抗病毒治疗策略做出了重要贡献。但是,由于难以建立抗病毒应答与多种治疗因素(例如长期治疗期间的药物暴露和药物敏感性)的关系,因此大多数研究仅限于短期病毒动力学。在本文中,提出了一种基于机制的动力学模型来表征抗逆转录病毒疗法的长期病毒动力学,该模型由一组无封闭形式的非线性微分方程描述。在该模型中,我们直接将药物浓度,依从性和药物敏感性纳入治疗功效的函数中,治疗功效定义为病毒复制的抑制率。我们研究了在分级贝叶斯(混合效应)模型框架下的贝叶斯方法,用于估计未知的动态参数。特别地,兴趣集中在估计各个动态参数上。所提出的方法不仅有助于减轻参数可识别性的困难,而且可以灵活地处理来自各个受试者的稀疏和不平衡的纵向数据。出于说明目的,我们提供了一个模拟示例来实施所提出的方法,并将该方法应用于来自AIDS临床试验的数据集。纵向HIV动态系统的基本概念和建议的方法通常适用于任何其他生物医学动态系统。

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