The effect of missing levels of nesting in multilevel analysis.

Q2 Agricultural and Biological Sciences Genomics and Informatics Pub Date : 2022-09-01 Epub Date: 2022-09-30 DOI:10.5808/gi.22052
Seho Park, Yujin Chung
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Abstract

Multilevel analysis is an appropriate and powerful tool for analyzing hierarchical structure data widely applied from public health to genomic data. In practice, however, we may lose the information on multiple nesting levels in the multilevel analysis since data may fail to capture all levels of hierarchy, or the top or intermediate levels of hierarchy are ignored in the analysis. In this study, we consider a multilevel linear mixed effect model (LMM) with single imputation that can involve all data hierarchy levels in the presence of missing top or intermediate-level clusters. We evaluate and compare the performance of a multilevel LMM with single imputation with other models ignoring the data hierarchy or missing intermediate-level clusters. To this end, we applied a multilevel LMM with single imputation and other models to hierarchically structured cohort data with some intermediate levels missing and to simulated data with various cluster sizes and missing rates of intermediate-level clusters. A thorough simulation study demonstrated that an LMM with single imputation estimates fixed coefficients and variance components of a multilevel model more accurately than other models ignoring data hierarchy or missing clusters in terms of mean squared error and coverage probability. In particular, when models ignoring data hierarchy or missing clusters were applied, the variance components of random effects were overestimated. We observed similar results from the analysis of hierarchically structured cohort data.

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多层分析中缺少嵌套层的影响。
从公共卫生到基因组数据,多层次分析是分析层次结构数据的一种合适而有力的工具。然而,在实践中,我们可能会在多层分析中丢失多个嵌套层上的信息,因为数据可能无法捕获层次结构的所有级别,或者在分析中忽略了层次结构的顶层或中间层。在本研究中,我们考虑了一个具有单一输入的多层线性混合效应模型(LMM),该模型可以在缺少顶层或中层聚类的情况下涉及所有数据层次。我们评估并比较了具有单一输入的多层LMM与忽略数据层次或缺少中间级别聚类的其他模型的性能。为此,我们应用单输入的多层次LMM和其他模型,对中间水平缺失的分层结构队列数据,以及不同簇大小和中间水平簇缺失率的模拟数据进行了分析。一项深入的仿真研究表明,在均方误差和覆盖概率方面,与忽略数据层次或缺失聚类的其他模型相比,单输入LMM更准确地估计了多层模型的固定系数和方差成分。特别是,当模型忽略数据层次或缺失聚类时,随机效应的方差成分被高估。我们从分层结构的队列数据分析中观察到类似的结果。
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来源期刊
Genomics and Informatics
Genomics and Informatics Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
1.90
自引率
0.00%
发文量
0
审稿时长
12 weeks
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