Literature DB >> 36239111

The effect of missing levels of nesting in multilevel analysis.

Seho Park1, Yujin Chung2.   

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.

Entities:  

Keywords:  hierarchical structure data; missing levels of nesting; multilevel model

Year:  2022        PMID: 36239111      PMCID: PMC9576476          DOI: 10.5808/gi.22052

Source DB:  PubMed          Journal:  Genomics Inform        ISSN: 1598-866X


  8 in total

Review 1.  Principles of multilevel modelling.

Authors:  S Greenland
Journal:  Int J Epidemiol       Date:  2000-02       Impact factor: 7.196

Review 2.  When can group level clustering be ignored? Multilevel models versus single-level models with sparse data.

Authors:  P Clarke
Journal:  J Epidemiol Community Health       Date:  2008-08       Impact factor: 3.710

3.  A Novel Cluster Sampling Design that Couples Multiple Surveys to Support Multiple Inferential Objectives.

Authors:  A James O'Malley; Seho Park
Journal:  Health Serv Outcomes Res Methodol       Date:  2020-06-09

4.  Multiple imputation of missing data in multilevel designs: A comparison of different strategies.

Authors:  Oliver Lüdtke; Alexander Robitzsch; Simon Grund
Journal:  Psychol Methods       Date:  2016-09-08

Review 5.  Comparing methods of analysing datasets with small clusters: case studies using four paediatric datasets.

Authors:  Louise Marston; Janet L Peacock; Keming Yu; Peter Brocklehurst; Sandra A Calvert; Anne Greenough; Neil Marlow
Journal:  Paediatr Perinat Epidemiol       Date:  2009-07       Impact factor: 3.980

6.  A simulation study of sample size for multilevel logistic regression models.

Authors:  Rahim Moineddin; Flora I Matheson; Richard H Glazier
Journal:  BMC Med Res Methodol       Date:  2007-07-16       Impact factor: 4.615

7.  Study protocol: the Childhood to Adolescence Transition Study (CATS).

Authors:  Lisa K Mundy; Julian G Simmons; Nicholas B Allen; Russell M Viner; Jordana K Bayer; Timothy Olds; Jo Williams; Craig Olsson; Helena Romaniuk; Fiona Mensah; Susan M Sawyer; Louisa Degenhardt; Rosa Alati; Melissa Wake; Felice Jacka; George C Patton
Journal:  BMC Pediatr       Date:  2013-10-08       Impact factor: 2.125

8.  Evaluation of approaches for multiple imputation of three-level data.

Authors:  Rushani Wijesuriya; Margarita Moreno-Betancur; John B Carlin; Katherine J Lee
Journal:  BMC Med Res Methodol       Date:  2020-08-12       Impact factor: 4.615

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.