Cargando…

Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient

SIMPLE SUMMARY: The increase in litter sizes in pigs obtained through selection has introduced challenges to breeders such as birth weight variability, piglet nursing, and piglet survival. Differences in birth weights can affect the later growth of piglets. We analysed the most important effects on...

Descripción completa

Detalles Bibliográficos
Autores principales: Škorput, Dubravko, Jančo, Nina, Karolyi, Danijel, Kaić, Ana, Luković, Zoran
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10525395/
https://www.ncbi.nlm.nih.gov/pubmed/37760288
http://dx.doi.org/10.3390/ani13182888
_version_ 1785110775657922560
author Škorput, Dubravko
Jančo, Nina
Karolyi, Danijel
Kaić, Ana
Luković, Zoran
author_facet Škorput, Dubravko
Jančo, Nina
Karolyi, Danijel
Kaić, Ana
Luković, Zoran
author_sort Škorput, Dubravko
collection PubMed
description SIMPLE SUMMARY: The increase in litter sizes in pigs obtained through selection has introduced challenges to breeders such as birth weight variability, piglet nursing, and piglet survival. Differences in birth weights can affect the later growth of piglets. We analysed the most important effects on the growth of piglets born in hyperprolific herds using a random regression coefficient model, which provides a smoother estimation of parameters compared to traditional fixed effects models and accounts for heterogeneous variances between measurements. Birth weight was the most influential factor on the final weight at 85 days of age. Litter size and parity also showed significant effect on the final weight. The results obtained using a random regression coefficient model could be encouraging for further application in pig growth analysis due to the ability of the model to describe individual growth patterns of piglets of variable birth weights and estimate the future growth of such piglets. In addition, the practical contribution of the paper is deeper insight into growth patterns of piglets from highly prolific sows under farm conditions, focusing on the need to control the variability of birth weight of large litters. ABSTRACT: Management of hyperprolific sows is challenging when it comes to controlling birth weight variability and piglet survival in large litters. The growth of low birth weight piglets can be compromised and have a negative impact on production efficiency. The objective of the study was to apply a random regression coefficient model to estimate the main effects of the growth of piglets of highly prolific sows. The dataset contained growth data for 360 piglets from 25 Pen Ar Lan Naima sows. In addition to routine procedures after farrowing, piglets were weighed five times: on day 1 after farrowing, on day 14 of life, at weaning on day 28, on day 30 of nursery period, and at the end of the nursery period when piglets were 83 days old. Data were treated as longitudinal, with body weight as the dependent variable. Fitting age as a quadratic regression within piglets in the random part of the model helped to determine the significant effect of birth weight, litter size, and parity on the growth of the piglets. Since the piglets from large litters often have non-uniform birth weights and this can affect further growth, the use of a random regression coefficient model is practical for analysing the growth of such piglets due to the ability to describe the individual growth pattern of every individual.
format Online
Article
Text
id pubmed-10525395
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-105253952023-09-28 Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient Škorput, Dubravko Jančo, Nina Karolyi, Danijel Kaić, Ana Luković, Zoran Animals (Basel) Article SIMPLE SUMMARY: The increase in litter sizes in pigs obtained through selection has introduced challenges to breeders such as birth weight variability, piglet nursing, and piglet survival. Differences in birth weights can affect the later growth of piglets. We analysed the most important effects on the growth of piglets born in hyperprolific herds using a random regression coefficient model, which provides a smoother estimation of parameters compared to traditional fixed effects models and accounts for heterogeneous variances between measurements. Birth weight was the most influential factor on the final weight at 85 days of age. Litter size and parity also showed significant effect on the final weight. The results obtained using a random regression coefficient model could be encouraging for further application in pig growth analysis due to the ability of the model to describe individual growth patterns of piglets of variable birth weights and estimate the future growth of such piglets. In addition, the practical contribution of the paper is deeper insight into growth patterns of piglets from highly prolific sows under farm conditions, focusing on the need to control the variability of birth weight of large litters. ABSTRACT: Management of hyperprolific sows is challenging when it comes to controlling birth weight variability and piglet survival in large litters. The growth of low birth weight piglets can be compromised and have a negative impact on production efficiency. The objective of the study was to apply a random regression coefficient model to estimate the main effects of the growth of piglets of highly prolific sows. The dataset contained growth data for 360 piglets from 25 Pen Ar Lan Naima sows. In addition to routine procedures after farrowing, piglets were weighed five times: on day 1 after farrowing, on day 14 of life, at weaning on day 28, on day 30 of nursery period, and at the end of the nursery period when piglets were 83 days old. Data were treated as longitudinal, with body weight as the dependent variable. Fitting age as a quadratic regression within piglets in the random part of the model helped to determine the significant effect of birth weight, litter size, and parity on the growth of the piglets. Since the piglets from large litters often have non-uniform birth weights and this can affect further growth, the use of a random regression coefficient model is practical for analysing the growth of such piglets due to the ability to describe the individual growth pattern of every individual. MDPI 2023-09-11 /pmc/articles/PMC10525395/ /pubmed/37760288 http://dx.doi.org/10.3390/ani13182888 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Škorput, Dubravko
Jančo, Nina
Karolyi, Danijel
Kaić, Ana
Luković, Zoran
Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient
title Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient
title_full Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient
title_fullStr Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient
title_full_unstemmed Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient
title_short Analysis of Early Growth of Piglets from Hyperprolific Sows Using Random Regression Coefficient
title_sort analysis of early growth of piglets from hyperprolific sows using random regression coefficient
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10525395/
https://www.ncbi.nlm.nih.gov/pubmed/37760288
http://dx.doi.org/10.3390/ani13182888
work_keys_str_mv AT skorputdubravko analysisofearlygrowthofpigletsfromhyperprolificsowsusingrandomregressioncoefficient
AT janconina analysisofearlygrowthofpigletsfromhyperprolificsowsusingrandomregressioncoefficient
AT karolyidanijel analysisofearlygrowthofpigletsfromhyperprolificsowsusingrandomregressioncoefficient
AT kaicana analysisofearlygrowthofpigletsfromhyperprolificsowsusingrandomregressioncoefficient
AT lukoviczoran analysisofearlygrowthofpigletsfromhyperprolificsowsusingrandomregressioncoefficient