Bivariate linear mixed models are useful when analyzing longitudinal data of two associated markers. In this paper, we present a bivariate linear mixed model including random effects or first-order auto-regressive process and independent measurement error for both markers. Codes and tricks to fit these models using SAS Proc MIXED are provided. Limitations of this program are discussed and an example in the field of HIV infection is shown. Despite some limitations, SAS Proc MIXED is a useful tool that may be easily extendable to multivariate response in longitudinal studies.
Description
Bivariate linear mixed models using SAS proc MIXED. - PubMed - NCBI
%0 Journal Article
%1 Thiebaut:2002:Comput-Methods-Programs-Biomed:12204452
%A Thiébaut, R
%A Jacqmin-Gadda, H
%A Chêne, G
%A Leport, C
%A Commenges, D
%D 2002
%J Comput Methods Programs Biomed
%K CorrelatedData LongitudinalDataAnalysis RandomEffects sas statistics
%N 3
%P 249-256
%T Bivariate linear mixed models using SAS proc MIXED
%U https://www.ncbi.nlm.nih.gov/pubmed/12204452
%V 69
%X Bivariate linear mixed models are useful when analyzing longitudinal data of two associated markers. In this paper, we present a bivariate linear mixed model including random effects or first-order auto-regressive process and independent measurement error for both markers. Codes and tricks to fit these models using SAS Proc MIXED are provided. Limitations of this program are discussed and an example in the field of HIV infection is shown. Despite some limitations, SAS Proc MIXED is a useful tool that may be easily extendable to multivariate response in longitudinal studies.
@article{Thiebaut:2002:Comput-Methods-Programs-Biomed:12204452,
abstract = {Bivariate linear mixed models are useful when analyzing longitudinal data of two associated markers. In this paper, we present a bivariate linear mixed model including random effects or first-order auto-regressive process and independent measurement error for both markers. Codes and tricks to fit these models using SAS Proc MIXED are provided. Limitations of this program are discussed and an example in the field of HIV infection is shown. Despite some limitations, SAS Proc MIXED is a useful tool that may be easily extendable to multivariate response in longitudinal studies.},
added-at = {2018-09-21T01:45:12.000+0200},
author = {Thi{\'e}baut, R and Jacqmin-Gadda, H and Ch{\^e}ne, G and Leport, C and Commenges, D},
biburl = {https://www.bibsonomy.org/bibtex/2c07029dce440e253b505fecab538c2a6/jkd},
description = {Bivariate linear mixed models using SAS proc MIXED. - PubMed - NCBI},
interhash = {8589ca9ad38d81a25cc91eb0ff3074e4},
intrahash = {c07029dce440e253b505fecab538c2a6},
journal = {Comput Methods Programs Biomed},
keywords = {CorrelatedData LongitudinalDataAnalysis RandomEffects sas statistics},
month = nov,
number = 3,
pages = {249-256},
pmid = {12204452},
timestamp = {2018-10-03T05:31:17.000+0200},
title = {Bivariate linear mixed models using SAS proc MIXED},
url = {https://www.ncbi.nlm.nih.gov/pubmed/12204452},
volume = 69,
year = 2002
}