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Multiple Imputation to Correct for Measurement Error in Admixture Estimates in Genetic Structured Association Testing
Author(s) -
Miguel A. Padilla,
Jasmin Divers,
Laura K. Vaughan,
David B. Allison,
Hemant K. Tiwari
Publication year - 2009
Publication title -
human heredity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.423
H-Index - 62
eISSN - 1423-0062
pISSN - 0001-5652
DOI - 10.1159/000210450
Subject(s) - observational error , statistics , imputation (statistics) , residual , errors in variables models , type i and type ii errors , linear model , mathematics , computer science , algorithm , missing data
Structured association tests (SAT), like any statistical model, assumes that all variables are measured without error. Measurement error can bias parameter estimates and confound residual variance in linear models. It has been shown that admixture estimates can be contaminated with measurement error causing SAT models to suffer from the same afflictions. Multiple imputation (MI) is presented as a viable tool for correcting measurement error problems in SAT linear models with emphasis on correcting measurement error contaminated admixture estimates.

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