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首页> 外文期刊>Statistics in Biosciences >A Likelihood-Based Approach with Shared Latent Random Parameters for the Longitudinal Binary and Informative Censoring Processes
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A Likelihood-Based Approach with Shared Latent Random Parameters for the Longitudinal Binary and Informative Censoring Processes

机译:基于可能性的方法,具有共享潜在随机参数的纵向二进制和信息性审查过程

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摘要

Longitudinal studies with binary outcomes characterized by informative right censoring are commonly encountered in clinical, basic, behavioral, and health sciences. Approaches developed to analyze data with binary outcomes were mainly tailored to clustered or longitudinal data with missing completely at random or at random. Studies that focused on informative right censoring with binary outcomes are characterized by their imbedded computational complexity and difficulty of implementation. Here we present a new maximum likelihood-based approach with repeated binary measures modeled in a generalized linear mixed model as a function of time and other covariates. The longitudinal binary outcome and the censoring process determined by the number of timesa subject is observed share latent random variables (random intercept and slope) where these subject-specific random effects are common to both models. A simulation study and sensitivity analysis were conducted to test the model under different assumptions and censoring settings. Our results showed accuracy of the estimates generated under this model when censoring was fully informative or partially informative with dependence on the slopes. A successful implementation was undertaken on a cohort of renal transplant patients with blood urea nitrogen as a binary outcome measured over time to indicate normal and abnormal kidney function until the emanation of graft rejection that eventuated in informative right censoring. In addition to its novelty and accuracy, an additional key feature and advantage of the proposed model is its viability of implementation on available analytical tools and widespread application on any other longitudinal dataset with informative censoring.
机译:临床,基本,行为和健康科学中通常遇到具有信息性正确审查的二元成果的纵向研究。开发用于分析具有二元成果的数据的方法主要是针对聚类或纵向数据,随机缺失或随机缺失。专注于与二元成果的信息急迫审查的研究的特点是其嵌入式复杂性和实施难度的特征。在这里,我们提出了一种新的基于似然的方法,其具有在广义线性混合模型中建模的重复二元措施,作为时间和其他协变量。观察纵向二进制结果和由时级拍摄的次数确定的审查过程共享潜在随机变量(随机拦截和斜率),其中这些主题特定的随机效果都是共同的模型。进行了模拟研究和敏感性分析,以测试不同假设和审查设置的模型。我们的结果表明,当审查完全信息或部分信息时,我们的结果表明了在该模型下产生的估计数。成功的实施是对血尿尿素氮的群体作为二元结果的肾脏移植患者进行,随着时间的推移测量,指示正常和异常的肾功能,直到进球拒绝的移植拒绝的散发,这导致了在信息较好的审查中。除了新颖性和准确性之外,拟议模型的额外关键特征和优势是其在可用分析工具上实现的可行性,并在任何其他纵向数据集中广泛应用于具有信息丰富的审查。

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