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Comparison of various modeling approaches in the analysis of longitudinal data with a binary outcome: The Ontario Mother and Infant Study (TOMIS) III

机译:在纵向数据分析中获得二进制结果的各种建模方法的比较:安大略省母婴研究(TOMIS)III

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Background: Longitudinal studies are often used to investigate the developmental trends of outcomes over time. Several modeling strategies can be applied for the analyses of longitudinal data. In this study, various statistical approaches were discussed and compared using data from The Ontario Mother and Infant Study (TOMIS) III. TOMIS III was a longitudinal cohort study that assessed the associations between the method of delivery and health outcomes and service utilizations. The primary outcome of postpartum depression was used as an example.Methods: Generalized estimating equations (GEE) assuming a serial correlation structure were used as the primary method of analysis to assess the association between the method of delivery and postpartum depression over 12 months. We performed sensitivity analyses using three other methods – namely, the (1) generalized linear mixed-effects model (GLMM), (2) hierarchical generalized linear model (HGLM), and (3) Bayesian hierarchical model (BHM), to compare the robustness of the results.Results: The results from all four models indicated that the method of delivery had no significant effect on postpartum depression. However, GEE, GLMM, and BHM identified the following seven predictors of depression: annual household income; urinary incontinence (bladder problems); English or French (Canada's official languages) spoken at home; a lower SF-12 mental component score; unmet learning needs in the hospital; lower social support; and a lower SF-12 physical component score. HGLM showed similar results to the above three models with the exception of language spoken at home, which was not significant. GEE provided the good fit statistics for the data.Conclusion: Method of delivery had no significant effect on postpartum depression, based on GEE analysis. This result remained robust under different methods of analyses. GEE demonstrated a good fit for the TOMIS III data.
机译:背景:纵向研究通常用于调查结果随时间的发展趋势。几种建模策略可以应用于纵向数据的分析。在这项研究中,使用安大略母亲和婴儿研究(TOMIS)III的数据对各种统计方法进行了讨论和比较。 TOMIS III是一项纵向队列研究,评估了分娩方法与健康结果和服务利用之间的关联。方法:以序列相关结构为基础的广义估计方程(GEE)作为主要分析方法,以评估分娩方式与产后抑郁在12个月内的相关性。我们使用其他三种方法进行了敏感性分析-(1)广义线性混合效应模型(GLMM),(2)分层广义线性模型(HGLM)和(3)贝叶斯分层模型(BHM),以比较结果:结果可靠:结果:所有四个模型的结果均表明分娩方法对产后抑郁无明显影响。但是,GEE,GLMM和BHM确定了以下七个抑郁症预测指标:家庭年收入;尿失禁(膀胱问题);在家说英语或法语(加拿大的官方语言); SF-12的心理成分评分较低;医院未满足的学习需求;较低的社会支持; SF-12物理成分评分较低。 HGLM显示的结果与上述三个模型相似,但在家使用的语言除外,这并不重要。结论:分娩方式对产后抑郁无明显影响。在不同的分析方法下,该结果仍然很可靠。 GEE证明非常适合TOMIS III数据。

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