Estimation of extended mixed models using latent classes and latent processes: the R package lcmm

C. Proust-Lima, V. Philipps, B. Liquet
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引用次数: 543

Abstract

The R package lcmm provides a series of functions to estimate statistical models based on linear mixed model theory. It includes the estimation of mixed models and latent class mixed models for Gaussian longitudinal outcomes (hlme), curvilinear and ordinal univariate longitudinal outcomes (lcmm) and curvilinear multivariate outcomes (multlcmm), as well as joint latent class mixed models (Jointlcmm) for a (Gaussian or curvilinear) longitudinal outcome and a time-to-event that can be possibly left-truncated right-censored and defined in a competing setting. Maximum likelihood esimators are obtained using a modified Marquardt algorithm with strict convergence criteria based on the parameters and likelihood stability, and on the negativity of the second derivatives. The package also provides various post-fit functions including goodness-of-fit analyses, classification, plots, predicted trajectories, individual dynamic prediction of the event and predictive accuracy assessment. This paper constitutes a companion paper to the package by introducing each family of models, the estimation technique, some implementation details and giving examples through a dataset on cognitive aging.
使用潜类和潜过程的扩展混合模型估计:R包lcmm
R包lcmm提供了一系列基于线性混合模型理论的统计模型估计函数。它包括高斯纵向结果(hlme)的混合模型和潜在类别混合模型的估计,曲线和有序单变量纵向结果(lcmm)和曲线多变量结果(multlcmm),以及(高斯或曲线)纵向结果的联合潜在类别混合模型(Jointlcmm)和可能被左截断右截短并在竞争环境中定义的事件时间。利用改进的Marquardt算法得到极大似然估计,该算法具有严格的收敛准则,基于参数和似然稳定性以及二阶导数的负性。该软件包还提供各种后拟合功能,包括拟合优度分析、分类、绘图、预测轨迹、事件的个体动态预测和预测准确性评估。本文通过一个关于认知老化的数据集,介绍了每个模型族、估计技术、一些实现细节和示例,构成了该包的配套论文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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