Hillary M Heiling, Naim U Rashid, Quefeng Li, Joseph G Ibrahim
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引用次数: 0
摘要
广义线性混合模型(GLMM)能够对非高斯条件分布的相关结果进行建模,因此在研究中得到广泛应用。正确选择固定效应和随机效应是建模过程的关键部分,模型的错误规范可能会导致重大偏差。然而,固定效应和随机效应的联合选择历来仅限于低维 GLMM,这主要是由于使用了基于准则的模型选择策略。在此,我们介绍 R 软件包 glmmPen,它是首批使用惩罚性 GLMM 建模框架在较高维度上选择固定效应和随机效应的软件包之一。模型参数使用蒙特卡罗期望条件最小化(MCECM)算法进行估计,该算法利用 Stan 和 RcppArmadillo 提高了计算效率。我们的软件包支持二叉族、高斯族和泊松族以及多种惩罚函数。在本手稿中,我们通过应用于胰腺癌亚型研究,讨论了建模程序、估计方案和软件实现。仿真结果表明,我们的方法在选择高维 GLMM 的固定效应和随机效应方面都有良好的表现。
glmmPen: High Dimensional Penalized Generalized Linear Mixed Models.
Generalized linear mixed models (GLMMs) are widely used in research for their ability to model correlated outcomes with non-Gaussian conditional distributions. The proper selection of fixed and random effects is a critical part of the modeling process, where model misspecification may lead to significant bias. However, the joint selection of fixed and random effects has historically been limited to lower dimensional GLMMs, largely due to the use of criterion-based model selection strategies. Here we present the R package glmmPen, one of the first to select fixed and random effects in higher dimension using a penalized GLMM modeling framework. Model parameters are estimated using a Monte Carlo expectation conditional minimization (MCECM) algorithm, which leverages Stan and RcppArmadillo for increased computational efficiency. Our package supports the Binomial, Gaussian, and Poisson families and multiple penalty functions. In this manuscript we discuss the modeling procedure, estimation scheme, and software implementation through application to a pancreatic cancer subtyping study. Simulation results show our method has good performance in selecting both the fixed and random effects in high dimensional GLMMs.
R JournalCOMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-STATISTICS & PROBABILITY
CiteScore
2.70
自引率
0.00%
发文量
40
审稿时长
>12 weeks
期刊介绍:
The R Journal is the open access, refereed journal of the R project for statistical computing. It features short to medium length articles covering topics that should be of interest to users or developers of R.
The R Journal intends to reach a wide audience and have a thorough review process. Papers are expected to be reasonably short, clearly written, not too technical, and of course focused on R. Authors of refereed articles should take care to:
- put their contribution in context, in particular discuss related R functions or packages;
- explain the motivation for their contribution;
- provide code examples that are reproducible.