Información climática asociada a estaciones productivas para el ajuste de modelos estadísticos de sistemas bovinos bajo condiciones extensivas

Translated title of the contribution: Climatic information associated to seasonal information for estadistical model fitting in bovine extensive production systems

J. B. Herrera-Ojeda, G. M. Parra-Bracamonte, J. Herrera-Camacho, N. López-Villalobos, J. G. Magaña-Monforte, J. C. Martínez-González, P. Lobit, J. F. Vázquez-Armijo

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

A study was designed to develop a birth season (BS) classification methodology and assess its impact on live weight traits when compared to a traditional BS classification method. Using meteorological information, and aridity index was computed. The proposed and traditional BS were compared by including them into contemporary groups (CG= herd, sex, year and BS) to adjust genetic evaluation models of studied traits. The variance components and breeding values with accuracies were estimated and compared. The proposed BS explained more phenotypic variation than traditional (≥9.8%). Genetic parameters showed important changes, more evident for weaning weight. According to the likelihood ratio test the compared models were statistically different (P<0.01). An improvement in CG structure was observed. Genetic correlations of breeding values showed important differences suggesting hierarchy changes. This method of BS classification might improve the statistical model fitting when meteorological information could be available.

Translated title of the contributionClimatic information associated to seasonal information for estadistical model fitting in bovine extensive production systems
Original languageSpanish
Pages (from-to)21-28
Number of pages8
JournalArchivos de Zootecnia
Volume67
Issue number257
DOIs
StatePublished - 2018

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