I-BioStat, Universiteit Hasselt, Diepenbeek, Belgium.
Center for Public Health Research, Kenya Medical Research Institute, Nairobi, Kenya.
Biom J. 2024 Mar;66(2):e2200333. doi: 10.1002/bimj.202200333.
Many statistical models have been proposed in the literature for the analysis of longitudinal data. One may propose to model two or more correlated longitudinal processes simultaneously, with a goal of understanding their association over time. Joint modeling is then required to carefully study the association structure among the outcomes as well as drawing joint inferences about the different outcomes. In this study, we sought to model the associations among six nutrition outcomes while circumventing the computational challenge posed by their clustered and high-dimensional nature. We analyzed data from a 2 2 randomized crossover trial conducted in Kenya, to compare the effect of high-dose and low-dose iodine in household salt on systolic blood pressure (SBP) and diastolic blood pressure (DBP) in women of reproductive age and their household matching pair of school-aged children. Two additional outcomes, namely, urinary iodine concentration (UIC) in women and children were measured repeatedly to monitor the amount of iodine excreted through urine. We extended the model proposed by Mwangi et al. (2021, Communications in Statistics: Case Studies, Data Analysis and Applications, 7(3), 413-431) allowing flexible piecewise joint models for six outcomes to depend on separate random effects, which are themselves correlated. This entailed fitting 15 bivariate general linear mixed models and deriving inference for the joint model using pseudo-likelihood theory. We analyzed the outcomes separately and jointly using piecewise linear mixed-effects (PLME) model and further validated the results using current state-of-the-art Jones and Kenward methodology (JKME model) used for analyzing randomized crossover trials. The results indicate that high-dose iodine in salt significantly reduced blood pressure (BP) compared to low-dose iodine in salt. Estimates for the random effects and residual error components showed that SBP and DBP had strong positive correlation, with effect of the random slope indicating that significantly related outcomes are strongly associated in their evolution. There was a moderately strong inverse relationship between evolutions of UIC and BP both in women and children. These findings confirmed the original hypothesis that high-dose iodine salt has significant lowering effect on BP. We further sought to evaluate the performance of our proposed PLME model against the widely used JKME model, within the multivariate joint modeling framework through a simulation study mimicking a crossover design. From our findings, the multivariate joint PLME model performed exceptionally well both in estimation of random-effects matrix (G) and Hessian matrix (H), allowing satisfactory model convergence during estimation. It allowed a more complex fit to the data with both random intercepts and slopes effects compared to the multivariate joint JKME model that allowed for random intercepts only. When a hierarchical viewpoint is adopted, in the sense that outcomes are specified conditionally upon random effects, the variance-covariance matrix of the random effects must be positive definite. In some cases, additional random effects could explain much variability in the data, thus improving precision in estimation of the estimands (effect size) parameters. The key highlight in this evaluation shows that multivariate joint JKME model is a powerful tool especially while fitting mixed models with random intercepts only, in crossover design settings. Addition of random slopes may lead to model complexities in most cases, resulting in unsatisfactory model convergence during estimation. To circumvent convergence pitfalls, extention of JKME model to PLME model allows a more flexible fit to the data (generated from crossover design settings), especially in the multivariate joint modeling framework.
许多统计学模型已经在文献中被提出用于分析纵向数据。人们可能会提出同时对两个或多个相关的纵向过程进行建模,目的是了解它们随时间的关联。然后需要进行联合建模,以仔细研究结果之间的关联结构,并对不同的结果进行联合推断。在这项研究中,我们试图在避免其聚类和高维性质带来的计算挑战的情况下,对六个营养结果之间的关联进行建模。我们分析了在肯尼亚进行的一项 2 × 2 随机交叉试验的数据,以比较高剂量和低剂量碘在家庭盐中的效果对育龄妇女及其家庭匹配的学龄儿童的收缩压 (SBP) 和舒张压 (DBP) 的影响。还重复测量了另外两个结果,即妇女和儿童的尿碘浓度 (UIC),以监测通过尿液排泄的碘量。我们扩展了 Mwangi 等人提出的模型 (2021 年,《统计学期刊:案例研究、数据分析与应用》,7(3),413-431),允许对六个结果的灵活分段联合模型依赖于彼此相关的单独随机效应。这需要拟合 15 个双变量广义线性混合模型,并使用拟似然理论为联合模型推导出推断。我们分别和联合使用分段线性混合效应 (PLME) 模型分析结果,并使用当前用于分析随机交叉试验的最先进的 Jones 和 Kenward 方法 (JKME 模型) 进一步验证结果。结果表明,与低剂量碘盐相比,盐中的高剂量碘显著降低了血压 (BP)。随机效应和残差分量的估计值表明,SBP 和 DBP 具有很强的正相关,随机斜率的影响表明,相关性强的结果在其演变中密切相关。UIC 和 BP 的演变在妇女和儿童中均呈中度强负相关。这些发现证实了最初的假设,即高剂量碘盐对 BP 有显著的降低作用。我们进一步寻求在多元联合建模框架内,通过模拟交叉设计,评估我们提出的 PLME 模型与广泛使用的 JKME 模型的性能。从我们的发现中可以看出,多元联合 PLME 模型在估计随机效应矩阵 (G) 和 Hessian 矩阵 (H) 方面表现出色,允许在估计过程中令人满意的模型收敛。与仅允许随机截距的多元联合 JKME 模型相比,它允许对具有随机截距和斜率效应的更复杂的数据拟合。当采用分层观点时,即结果是根据随机效应有条件指定的,随机效应的方差-协方差矩阵必须是正定的。在某些情况下,额外的随机效应可以解释数据中的更多变异性,从而提高估计目标 (效应大小) 参数的估计精度。关键要点是,在这种评估中表明,多元联合 JKME 模型是一种强大的工具,尤其是在仅拟合具有随机截距的交叉设计设置中的混合模型时。添加随机斜率可能会导致大多数情况下模型的复杂性,从而导致估计过程中模型收敛不理想。为了避免收敛陷阱,将 JKME 模型扩展到 PLME 模型可以对数据进行更灵活的拟合(从交叉设计设置生成),特别是在多元联合建模框架内。