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Box–Cox Transformation and Random Regression Models for Fecal egg Count Data

Accurate genetic evaluation of livestock is based on appropriate modeling of phenotypic measurements. In ruminants, fecal egg count (FEC) is commonly used to measure resistance to nematodes. FEC values are not normally distributed and logarithmic transformations have been used in an effort to achiev...

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Autores principales: da Silva, Marcos Vinícius Gualberto Barbosa, Van Tassell, Curtis P., Sonstegard, Tad S., Cobuci, Jaime Araujo, Gasbarre, Louis C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Research Foundation 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3265087/
https://www.ncbi.nlm.nih.gov/pubmed/22303406
http://dx.doi.org/10.3389/fgene.2011.00112
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author da Silva, Marcos Vinícius Gualberto Barbosa
Van Tassell, Curtis P.
Sonstegard, Tad S.
Cobuci, Jaime Araujo
Gasbarre, Louis C.
author_facet da Silva, Marcos Vinícius Gualberto Barbosa
Van Tassell, Curtis P.
Sonstegard, Tad S.
Cobuci, Jaime Araujo
Gasbarre, Louis C.
author_sort da Silva, Marcos Vinícius Gualberto Barbosa
collection PubMed
description Accurate genetic evaluation of livestock is based on appropriate modeling of phenotypic measurements. In ruminants, fecal egg count (FEC) is commonly used to measure resistance to nematodes. FEC values are not normally distributed and logarithmic transformations have been used in an effort to achieve normality before analysis. However, the transformed data are often still not normally distributed, especially when data are extremely skewed. A series of repeated FEC measurements may provide information about the population dynamics of a group or individual. A total of 6375 FEC measures were obtained for 410 animals between 1992 and 2003 from the Beltsville Agricultural Research Center Angus herd. Original data were transformed using an extension of the Box–Cox transformation to approach normality and to estimate (co)variance components. We also proposed using random regression models (RRM) for genetic and non-genetic studies of FEC. Phenotypes were analyzed using RRM and restricted maximum likelihood. Within the different orders of Legendre polynomials used, those with more parameters (order 4) adjusted FEC data best. Results indicated that the transformation of FEC data utilizing the Box–Cox transformation family was effective in reducing the skewness and kurtosis, and dramatically increased estimates of heritability, and measurements of FEC obtained in the period between 12 and 26 weeks in a 26-week experimental challenge period are genetically correlated.
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spelling pubmed-32650872012-02-02 Box–Cox Transformation and Random Regression Models for Fecal egg Count Data da Silva, Marcos Vinícius Gualberto Barbosa Van Tassell, Curtis P. Sonstegard, Tad S. Cobuci, Jaime Araujo Gasbarre, Louis C. Front Genet Genetics Accurate genetic evaluation of livestock is based on appropriate modeling of phenotypic measurements. In ruminants, fecal egg count (FEC) is commonly used to measure resistance to nematodes. FEC values are not normally distributed and logarithmic transformations have been used in an effort to achieve normality before analysis. However, the transformed data are often still not normally distributed, especially when data are extremely skewed. A series of repeated FEC measurements may provide information about the population dynamics of a group or individual. A total of 6375 FEC measures were obtained for 410 animals between 1992 and 2003 from the Beltsville Agricultural Research Center Angus herd. Original data were transformed using an extension of the Box–Cox transformation to approach normality and to estimate (co)variance components. We also proposed using random regression models (RRM) for genetic and non-genetic studies of FEC. Phenotypes were analyzed using RRM and restricted maximum likelihood. Within the different orders of Legendre polynomials used, those with more parameters (order 4) adjusted FEC data best. Results indicated that the transformation of FEC data utilizing the Box–Cox transformation family was effective in reducing the skewness and kurtosis, and dramatically increased estimates of heritability, and measurements of FEC obtained in the period between 12 and 26 weeks in a 26-week experimental challenge period are genetically correlated. Frontiers Research Foundation 2012-01-24 /pmc/articles/PMC3265087/ /pubmed/22303406 http://dx.doi.org/10.3389/fgene.2011.00112 Text en Copyright © 2012 da Silva, Van Tassell, Sonstegard, Cobuci and Gasbarre. http://www.frontiersin.org/licenseagreement This is an open-access article distributed under the terms of the Creative Commons Attribution Non Commercial License, which permits non-commercial use, distribution, and reproduction in other forums, provided the original authors and source are credited.
spellingShingle Genetics
da Silva, Marcos Vinícius Gualberto Barbosa
Van Tassell, Curtis P.
Sonstegard, Tad S.
Cobuci, Jaime Araujo
Gasbarre, Louis C.
Box–Cox Transformation and Random Regression Models for Fecal egg Count Data
title Box–Cox Transformation and Random Regression Models for Fecal egg Count Data
title_full Box–Cox Transformation and Random Regression Models for Fecal egg Count Data
title_fullStr Box–Cox Transformation and Random Regression Models for Fecal egg Count Data
title_full_unstemmed Box–Cox Transformation and Random Regression Models for Fecal egg Count Data
title_short Box–Cox Transformation and Random Regression Models for Fecal egg Count Data
title_sort box–cox transformation and random regression models for fecal egg count data
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3265087/
https://www.ncbi.nlm.nih.gov/pubmed/22303406
http://dx.doi.org/10.3389/fgene.2011.00112
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