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Structured antedependence models for genetic analysis of repeated measures on multiple quantitative traits

Published online by Cambridge University Press:  10 September 2003

FLORENCE JAFFRÉZIC
Affiliation:
INRA Quantitative and Applied Genetics, 78352 Jouy-en-Josas Cedex, France Institute of Cell Animal and Population Biology, University of Edinburgh, West Mains Rd, Edinburgh, EH9 3JT, UK
ROBIN THOMPSON
Affiliation:
Rothamsted Research, Harpenden, Herts, AL5 2JQ, UK Roslin Institute (Edinburgh), Roslin, Midlothian, EH25 9PS, UK
WILLIAM G. HILL
Affiliation:
Institute of Cell Animal and Population Biology, University of Edinburgh, West Mains Rd, Edinburgh, EH9 3JT, UK
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Abstract

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Simultaneous analysis of correlated traits that change with time is an important issue in genetic analyses. Several methodologies have already been proposed for the genetic analysis of longitudinal data on single traits, in particular random regression and character process models. Although the latter proved, in most cases, to compare favourably to alternative approaches for analysis of single function-valued traits, they do not allow a straightforward extension to the multivariate case. In this paper, another methodology (structured antedependence models) is proposed, and methods are derived for the genetic analysis of two or more correlated function-valued traits. Multivariate analyses are presented of fertility and mortality in Drosophila and of milk, fat and protein yields in dairy cattle. These models offer a substantial flexibility for the correlation structure, even in the case of complex non-stationary patterns, and perform better than multivariate random regression models, with fewer parameters.

Type
Research Article
Copyright
2003 Cambridge University Press