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Comparison of models using different censoring scenarios for days open in Spanish Holstein cows

Published online by Cambridge University Press:  09 March 2007

O. González-Recio*
Affiliation:
Departamento de Producción Animal, ETSI Agrónomos – Universidad Politécnica de Madrid, Ciudad Universitaria s/n 28040, Madrid, Spain
Y.M. Chang
Affiliation:
Department of Dairy Science, University of Wisconsin, Madison, 53706, USA
D. Gianola
Affiliation:
Department of Dairy Science, University of Wisconsin, Madison, 53706, USA
K. A. Weigel
Affiliation:
Department of Dairy Science, University of Wisconsin, Madison, 53706, USA
*
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Abstract

Days open data from 113 569 lactation records in 774 Spanish Holstein herds were analysed using standard linear models under two different editing procedures, and with two alternative methodologies that account for censoring: a censored linear model (CLM) and a Weibull survival analysis (SA) model. The first editing procedure excluded from the linear model all censored records for days open (LMnc), and the second defined days open as days from calving to the last known insemination or culling date, treating censored records as complete (LM). Sire variance estimates for days open were 61, 70 and 139 for LMnc, LM and CLM, respectively, and 0·026 for SA on a logarithmic scale. Heritability estimates were 0·05, 0·06 and 0·08 with LMnc, LM and CLM, respectively. Rankings of sires varied between methodologies: sire evaluations from LMnc and LM had rank correlations with evaluations from SA equal to −0·65 and −0·82, respectively, and of 0·71 and 0·87 with evaluations from CLM. The rank correlation between evaluations from SA and CLM was −0·98, suggesting stronger agreement of sire rankings between models that take censoring into account.The SA model had a better predictive ability of daughter fertility at early stages of lactation than the other methods, as measured by chi-squared statistics for predicted pregnancy status at 75, 103, 140, or 200 days post partum in a split data set. The CLM also predicted daughter fertility more accurately than any of the two standard linear models.

Type
Research Article
Copyright
Copyright © British Society of Animal Science 2006

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