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首页> 外文期刊>Statistics in medicine >Real longitudinal data analysis for real people: building a good enough mixed model.
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Real longitudinal data analysis for real people: building a good enough mixed model.

机译:针对真实人群的真实纵向数据分析:构建足够好的混合模型。

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Mixed effects models have become very popular, especially for the analysis of longitudinal data. One challenge is how to build a good enough mixed effects model. In this paper, we suggest a systematic strategy for addressing this challenge and introduce easily implemented practical advice to build mixed effects models. A general discussion of the scientific strategies motivates the recommended five-step procedure for model fitting. The need to model both the mean structure (the fixed effects) and the covariance structure (the random effects and residual error) creates the fundamental flexibility and complexity. Some very practical recommendations help to conquer the complexity. Centering, scaling, and full-rank coding of all the predictor variables radically improve the chances of convergence, computing speed, and numerical accuracy. Applying computational and assumption diagnostics from univariate linear models to mixed model data greatly helps to detect and solve the related computational problems. Applying computational and assumption diagnostics from the univariate linear models to the mixed model data can radically improve the chances of convergence, computing speed, and numerical accuracy. The approach helps to fit more general covariance models, a crucial step in selecting a credible covariance model needed for defensible inference. A detailed demonstration of the recommended strategy is based on data from a published study of a randomized trial of a multicomponent intervention to prevent young adolescents' alcohol use. The discussion highlights a need for additional covariance and inference tools for mixed models. The discussion also highlights the need for improving how scientists and statisticians teach and review the process of finding a good enough mixed model.
机译:混合效应模型已经变得非常流行,特别是对于纵向数据的分析。挑战之一是如何建立足够好的混合效果模型。在本文中,我们提出了应对这一挑战的系统策略,并介绍了易于实施的实践建议以建立混合效应模型。对科学策略的一般性讨论激发了推荐的模型拟合的五步过程。同时对均值结构(固定效应)和协方差结构(随机效应和残差)建模的需求创造了基本的灵活性和复杂性。一些非常实用的建议有助于克服复杂性。所有预测变量的居中,缩放和全秩编码从根本上提高了收敛的机会,计算速度和数值精度。将单变量线性模型的计算和假设诊断应用到混合模型数据中,极大地有助于检测和解决相关的计算问题。将单变量线性模型的计算和假设诊断应用于混合模型数据可以从根本上提高收敛的机会,计算速度和数值精度。该方法有助于拟合更通用的协方差模型,这是选择可辩证推理所需的可信协方差模型的关键步骤。建议策略的详细论证是基于一项针对预防青少年饮酒的多组分干预随机试验的已发表研究的数据。讨论强调了对混合模型还需要其他协方差和推断工具的需求。讨论还强调了需要改进科学家和统计学家如何教授和审查发现足够好的混合模型的过程。

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