Department of Biostatistics, Boston University School of Public Health, Boston, MA 02118, USA.
BMC Med Res Methodol. 2012 Jan 24;12:5. doi: 10.1186/1471-2288-12-5.
Structural equation models (SEMs) provide a general framework for analyzing mediated longitudinal data. However when interest is in the total effect (i.e. direct plus indirect) of a predictor on the binary outcome, alternative statistical techniques such as non-linear mixed models (NLMM) may be preferable, particularly if specific causal pathways are not hypothesized or specialized SEM software is not readily available. The purpose of this paper is to evaluate the performance of the NLMM in a setting where the SEM is presumed optimal.
We performed a simulation study to assess the performance of NLMMs relative to SEMs with respect to bias, coverage probability, and power in the analysis of mediated binary longitudinal outcomes. Both logistic and probit models were evaluated. Models were also applied to data from a longitudinal study assessing the impact of alcohol consumption on HIV disease progression.
For the logistic model, the NLMM adequately estimated the total effect of a repeated predictor on the repeated binary outcome and were similar to the SEM across a variety of scenarios evaluating sample size, effect size, and distributions of direct vs. indirect effects. For the probit model, the NLMM adequately estimated the total effect of the repeated predictor, however, the probit SEM overestimated effects.
Both logistic and probit NLMMs performed well relative to corresponding SEMs with respect to bias, coverage probability and power. In addition, in the probit setting, the NLMM may produce better estimates of the total effect than the probit SEM, which appeared to overestimate effects.
结构方程模型(SEM)为分析中介纵向数据提供了一个通用框架。然而,当研究兴趣在于预测因素对二分类结局的总效应(即直接效应加间接效应)时,替代的统计技术如非线性混合模型(NLMM)可能更为可取,特别是如果没有假设特定的因果途径或没有现成的专用 SEM 软件。本文的目的是在假定 SEM 是最优的情况下,评估 NLMM 在这种情况下的性能。
我们进行了一项模拟研究,以评估 NLMM 相对于 SEM 在分析中介二分类纵向结局时的偏差、覆盖概率和功效的表现。评估了逻辑和概率模型。还将模型应用于一项评估饮酒对 HIV 疾病进展影响的纵向研究的数据。
对于逻辑模型,NLMM 能够充分估计重复预测因素对重复二分类结局的总效应,并且在各种评估样本量、效应大小和直接与间接效应分布的场景中与 SEM 相似。对于概率模型,NLMM 能够充分估计重复预测因素的总效应,但是概率 SEM 高估了效应。
逻辑和概率 NLMM 在偏差、覆盖概率和功效方面相对于相应的 SEM 表现良好。此外,在概率模型中,NLMM 可能比概率 SEM 产生更好的总效应估计,后者似乎高估了效应。