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Pseudo Maximum Likelihood Approach for the Analysis of Multivariate Left-Censored Longitudinal Data

机译:伪最大似然法分析多元左删失纵向数据

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摘要

The linear mixed effects model based on a full likelihood is one of the few methods available to model longitudinal data subject to left-censoring. However, a full likelihood approach is complicated algebraically due to the large dimension of the numeric computations, and maximum likelihood estimation can be computationally prohibitive when the data are heavily censored. Moreover, for mixed models, the complexity of the computation increases as the dimension of the random effects in the model increases. We propose a method based on pseudo likelihood that simplifies the computational complexities, allows a wide class of multivariate models, and that can be used for many different data structures including settings where the level of censoring is high. The motivation for this work comes from the need for a joint model to assess the joint effect of pro-inflammatory and anti-inflammatory biomarker data on 30-day mortality status while simultaneously accounting for longitudinal left- censoring and correlation between markers in the analysis of Genetic and Inflammatory Markers for Sepsis (GenIMS) study conducted at the University of Pittsburgh. Two markers, interleukin-6 (IL-6) and interleukin-10 (IL-10) which naturally are correlated because of a shared similar biological pathways and are left-censored because of the limited sensitivity of the assays, are considered to determine if higher levels of these markers is associated with an increased risk of death after accounting for the left-censoring and their assumed correlation.
机译:基于完全似然的线性混合效应模型是可用于对纵向数据进行左删减建模的几种方法之一。但是,由于数值计算的维数较大,全似然方法在代数上很复杂,并且在对数据进行严格审查时,最大似然估计可能会在计算上令人望而却步。此外,对于混合模型,随着模型中随机效应的维数增加,计算的复杂性也随之增加。我们提出了一种基于伪似然性的方法,该方法可简化计算复杂性,允许使用多种类型的多元模型,并且可用于许多不同的数据结构,包括审查级别较高的设置。开展这项工作的动机来自于需要一种联合模型来评估促炎和抗炎生物标志物数据对30天死亡率状态的联合影响,同时还要考虑纵向左删失和标志物分析之间的相关性。匹兹堡大学进行的脓毒症遗传和炎症标志物(GenIMS)研究。考虑是否有两种标记物,即白细胞介素6(IL-6)和白介素10(IL-10),由于共有相似的生物途径而自然相关,并且由于测定灵敏度有限而被左删失,从而确定是否考虑到左删失及其假设的相关性后,这些标记物的水平较高与死亡风险增加相关。

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