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Joint Modelling of Longitudinal-Time-To-Event with Categorical Variable Indicators of Latent Classes: Application to Tuberculosis Data

机译:潜在课程分类可变指标的纵向事件联合建模:结核数据的应用

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In many clinical and reliability research reports, the outcomes of basic interest is the time to a particular event happens in order to indicate the person?¢a??a?¢s ?¢a????true?¢a???? state of health or survival status. Different models have been used to analyze such data separately, but may be unsuitable if the longitudinal and health status measures are correlated. In this study, mixed effect and Cox model of latent class are jointly modelled for the correlation between the covariates, observed and unobserved health status variable with binary latent class indicators. A Bayesian approach for Maximum likelihood estimates is implemented using Markov Chain Monte Carlo (MCMC) techniques. The repeated and survival measures are independently assumed to be a Gaussian process for latent bivariate. The joint model is applied to TB cohort study for the HIV comorbidity effect on event time for Tuberculosis patients. R package is used for curvilinear repeated measures of latent class model and joint latent class models for both repeated measures and survival time event.
机译:在许多临床和可靠性研究报告中,基本兴趣的结果是特定事件发生的时间才能表明这个人?¢a ?????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????????> ?健康状况或生存状态。已经使用不同的模型分别分析这些数据,但如果纵向和健康状态措施相关,则可能是不适合的。在本研究中,潜在阶级的混合效果和COX模型是与二元潜类指标的协变量,观察和未观察的健康状态变量之间的相关性建模。使用Markov Chain Monte Carlo(MCMC)技术实现了最大似然估计的贝叶斯方法。重复和生存措施被独立假设是潜在的潜在一体的高斯过程。联合模型适用于TB队列对结核病患者的事件时间的艾滋病毒合并症的研究。 R包用于曲线反复测量潜在级模型和联合潜类模型,用于重复措施和生存时间事件。

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