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Making an unknown unknown a known unknown: Missing data in longitudinal neuroimaging studies

机译:使未知未知物变为已知未知物:纵向神经成像研究中的数据丢失

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摘要

The analysis of longitudinal neuroimaging data within the massively univariate framework provides the opportunity to study empirical questions about neurodevelopment. Missing outcome data are an all-to-common feature of any longitudinal study, a feature that, if handled improperly, can reduce statistical power and lead to biased parameter estimates. The goal of this paper is to provide conceptual clarity of the issues and non-issues that arise from analyzing incomplete data in longitudinal studies with particular focus on neuroimaging data. This paper begins with a review of the hierarchy of missing data mechanisms and their relationship to likelihood-based methods, a review that is necessary not just for likelihood-based methods, but also for multiple-imputation methods. Next, the paper provides a series of simulation studies with designs common in longitudinal neuroimaging studies to help illustrate missing data concepts regardless of interpretation. Finally, two applied examples are used to demonstrate the sensitivity of inferences under different missing data assumptions and how this may change the substantive interpretation. The paper concludes with a set of guidelines for analyzing incomplete longitudinal data that can improve the validity of research findings in developmental neuroimaging research.
机译:在大型单变量框架内对纵向神经影像数据的分析为研究有关神经发育的经验问题提供了机会。缺少结果数据是任何纵向研究的普遍特征,如果处理不当,可能会降低统计功效并导致参数估计有偏差。本文的目的是为纵向研究中分析不完整数据而引起的问题和非问题提供概念上的清晰性,尤其侧重于神经影像数据。本文首先对缺失数据机制的层次结构及其与基于似然方法的关系进行了回顾,这不仅对于基于似然的方法,而且对于多重计算方法都是必要的。接下来,本文提供了一系列模拟研究,这些研究具有纵向神经成像研究中常见的设计,以帮助说明缺失的数据概念,无论其解释如何。最后,使用两个应用示例来说明在不同缺失数据假设下推理的敏感性以及这如何改变实质性解释。本文以分析不完整的纵向数据为指导,以提高发育性神经影像学研究的有效性。

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