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Modelling covariance structure in the analysis of repeated measures data.

Publication ,  Journal Article
Littell, RC; Pendergast, J; Natarajan, R
Published in: Stat Med
July 15, 2000

The term 'repeated measures' refers to data with multiple observations on the same sampling unit. In most cases, the multiple observations are taken over time, but they could be over space. It is usually plausible to assume that observations on the same unit are correlated. Hence, statistical analysis of repeated measures data must address the issue of covariation between measures on the same unit. Until recently, analysis techniques available in computer software only offered the user limited and inadequate choices. One choice was to ignore covariance structure and make invalid assumptions. Another was to avoid the covariance structure issue by analysing transformed data or making adjustments to otherwise inadequate analyses. Ignoring covariance structure may result in erroneous inference, and avoiding it may result in inefficient inference. Recently available mixed model methodology permits the covariance structure to be incorporated into the statistical model. The MIXED procedure of the SAS((R)) System provides a rich selection of covariance structures through the RANDOM and REPEATED statements. Modelling the covariance structure is a major hurdle in the use of PROC MIXED. However, once the covariance structure is modelled, inference about fixed effects proceeds essentially as when using PROC GLM. An example from the pharmaceutical industry is used to illustrate how to choose a covariance structure. The example also illustrates the effects of choice of covariance structure on tests and estimates of fixed effects. In many situations, estimates of linear combinations are invariant with respect to covariance structure, yet standard errors of the estimates may still depend on the covariance structure.

Duke Scholars

Published In

Stat Med

DOI

ISSN

0277-6715

Publication Date

July 15, 2000

Volume

19

Issue

13

Start / End Page

1793 / 1819

Location

England

Related Subject Headings

  • Time Factors
  • Statistics & Probability
  • Software
  • Numerical Analysis, Computer-Assisted
  • Models, Statistical
  • Linear Models
  • Humans
  • Forced Expiratory Volume
  • Effect Modifier, Epidemiologic
  • Data Interpretation, Statistical
 

Citation

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Littell, R. C., Pendergast, J., & Natarajan, R. (2000). Modelling covariance structure in the analysis of repeated measures data. Stat Med, 19(13), 1793–1819. https://doi.org/10.1002/1097-0258(20000715)19:13<1793::aid-sim482>3.0.co;2-q
Littell, R. C., J. Pendergast, and R. Natarajan. “Modelling covariance structure in the analysis of repeated measures data.Stat Med 19, no. 13 (July 15, 2000): 1793–1819. https://doi.org/10.1002/1097-0258(20000715)19:13<1793::aid-sim482>3.0.co;2-q.
Littell RC, Pendergast J, Natarajan R. Modelling covariance structure in the analysis of repeated measures data. Stat Med. 2000 Jul 15;19(13):1793–819.
Littell, R. C., et al. “Modelling covariance structure in the analysis of repeated measures data.Stat Med, vol. 19, no. 13, July 2000, pp. 1793–819. Pubmed, doi:10.1002/1097-0258(20000715)19:13<1793::aid-sim482>3.0.co;2-q.
Littell RC, Pendergast J, Natarajan R. Modelling covariance structure in the analysis of repeated measures data. Stat Med. 2000 Jul 15;19(13):1793–1819.
Journal cover image

Published In

Stat Med

DOI

ISSN

0277-6715

Publication Date

July 15, 2000

Volume

19

Issue

13

Start / End Page

1793 / 1819

Location

England

Related Subject Headings

  • Time Factors
  • Statistics & Probability
  • Software
  • Numerical Analysis, Computer-Assisted
  • Models, Statistical
  • Linear Models
  • Humans
  • Forced Expiratory Volume
  • Effect Modifier, Epidemiologic
  • Data Interpretation, Statistical