Towards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysis

Abstract Background Harmful social behaviours, such as injurious feather pecking in poultry and tail biting in swine, reduce animal welfare and production efficiency. While these behaviours are heritable, selective breeding is still limited due to a lack of individual phenotyping methods for large g...

Full description

Bibliographic Details
Main Authors: Zhuoshi Wang, Harmen Doekes, Piter Bijma
Format: Article
Language:deu
Published: BMC 2023-09-01
Series:Genetics Selection Evolution
Online Access:https://doi.org/10.1186/s12711-023-00840-z
_version_ 1797578577729814528
author Zhuoshi Wang
Harmen Doekes
Piter Bijma
author_facet Zhuoshi Wang
Harmen Doekes
Piter Bijma
author_sort Zhuoshi Wang
collection DOAJ
description Abstract Background Harmful social behaviours, such as injurious feather pecking in poultry and tail biting in swine, reduce animal welfare and production efficiency. While these behaviours are heritable, selective breeding is still limited due to a lack of individual phenotyping methods for large groups and proper genetic models. In the near future, large-scale longitudinal data on social behaviours will become available, e.g. through computer vision techniques, and appropriate genetic models will be needed to analyse such data. In this paper, we investigated prospects for genetic improvement of social traits recorded in large groups by (1) developing models to simulate and analyse large-scale longitudinal data on social behaviours, and (2) investigating required sample sizes to obtain reasonable accuracies of estimated genetic parameters and breeding values (EBV). Results Latent traits were defined as representing tendencies of individuals to be engaged in social interactions by distinguishing between performer and recipient effects. Animal movement was assumed random and without genetic variation, and performer and recipient interaction effects were assumed constant over time. Based on the literature, observed-scale heritabilities ( $${h}_{o}^{2}$$ h o 2 ) of performer and recipient effects were both set to 0.05, 0.1, or 0.2, and the genetic correlation ( $${r}_{A}$$ r A ) between those effects was set to – 0.5, 0, or 0.5. Using agent-based modelling, we simulated ~ 200,000 interactions for 2000 animals (~ 1000 interactions per animal) with a half-sib family structure. Variance components and breeding values were estimated with a general linear mixed model. The estimated genetic parameters did not differ significantly from the true values. When all individuals and interactions were included in the analysis, the accuracy of EBV was 0.61, 0.70, and 0.76 for $${h}_{o}^{2}$$ h o 2 = 0.05, 0.1, and 0.2, respectively (for $${r}_{A}$$ r A = 0). Including 2000 individuals each with only ~ 100 interactions, already yielded promising accuracies of 0.47, 0.60, and 0.71 for $${h}_{o}^{2}$$ h o 2 = 0.05, 0.1, and 0.2, respectively (with $${r}_{A}$$ r A = 0). Similar results were found with $${r}_{A}$$ r A of – 0.5 or 0.5. Conclusions We developed models to simulate and genetically analyse social behaviours for animals that are kept in large groups, anticipating the availability of large-scale longitudinal data in the near future. We obtained promising accuracies of EBV with ~ 100 interactions per individual, which would correspond to a few weeks of recording. Therefore, we conclude that animal breeding can be a promising strategy to improve social behaviours in livestock.
first_indexed 2024-03-10T22:23:49Z
format Article
id doaj.art-0dd3a7c82b5a498a85cb3bc60867e493
institution Directory Open Access Journal
issn 1297-9686
language deu
last_indexed 2024-03-10T22:23:49Z
publishDate 2023-09-01
publisher BMC
record_format Article
series Genetics Selection Evolution
spelling doaj.art-0dd3a7c82b5a498a85cb3bc60867e4932023-11-19T12:09:50ZdeuBMCGenetics Selection Evolution1297-96862023-09-0155111410.1186/s12711-023-00840-zTowards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysisZhuoshi Wang0Harmen Doekes1Piter Bijma2Animal Breeding and Genomics, Wageningen University and ResearchAnimal Breeding and Genomics, Wageningen University and ResearchAnimal Breeding and Genomics, Wageningen University and ResearchAbstract Background Harmful social behaviours, such as injurious feather pecking in poultry and tail biting in swine, reduce animal welfare and production efficiency. While these behaviours are heritable, selective breeding is still limited due to a lack of individual phenotyping methods for large groups and proper genetic models. In the near future, large-scale longitudinal data on social behaviours will become available, e.g. through computer vision techniques, and appropriate genetic models will be needed to analyse such data. In this paper, we investigated prospects for genetic improvement of social traits recorded in large groups by (1) developing models to simulate and analyse large-scale longitudinal data on social behaviours, and (2) investigating required sample sizes to obtain reasonable accuracies of estimated genetic parameters and breeding values (EBV). Results Latent traits were defined as representing tendencies of individuals to be engaged in social interactions by distinguishing between performer and recipient effects. Animal movement was assumed random and without genetic variation, and performer and recipient interaction effects were assumed constant over time. Based on the literature, observed-scale heritabilities ( $${h}_{o}^{2}$$ h o 2 ) of performer and recipient effects were both set to 0.05, 0.1, or 0.2, and the genetic correlation ( $${r}_{A}$$ r A ) between those effects was set to – 0.5, 0, or 0.5. Using agent-based modelling, we simulated ~ 200,000 interactions for 2000 animals (~ 1000 interactions per animal) with a half-sib family structure. Variance components and breeding values were estimated with a general linear mixed model. The estimated genetic parameters did not differ significantly from the true values. When all individuals and interactions were included in the analysis, the accuracy of EBV was 0.61, 0.70, and 0.76 for $${h}_{o}^{2}$$ h o 2 = 0.05, 0.1, and 0.2, respectively (for $${r}_{A}$$ r A = 0). Including 2000 individuals each with only ~ 100 interactions, already yielded promising accuracies of 0.47, 0.60, and 0.71 for $${h}_{o}^{2}$$ h o 2 = 0.05, 0.1, and 0.2, respectively (with $${r}_{A}$$ r A = 0). Similar results were found with $${r}_{A}$$ r A of – 0.5 or 0.5. Conclusions We developed models to simulate and genetically analyse social behaviours for animals that are kept in large groups, anticipating the availability of large-scale longitudinal data in the near future. We obtained promising accuracies of EBV with ~ 100 interactions per individual, which would correspond to a few weeks of recording. Therefore, we conclude that animal breeding can be a promising strategy to improve social behaviours in livestock.https://doi.org/10.1186/s12711-023-00840-z
spellingShingle Zhuoshi Wang
Harmen Doekes
Piter Bijma
Towards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysis
Genetics Selection Evolution
title Towards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysis
title_full Towards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysis
title_fullStr Towards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysis
title_full_unstemmed Towards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysis
title_short Towards genetic improvement of social behaviours in livestock using large-scale sensor data: data simulation and genetic analysis
title_sort towards genetic improvement of social behaviours in livestock using large scale sensor data data simulation and genetic analysis
url https://doi.org/10.1186/s12711-023-00840-z
work_keys_str_mv AT zhuoshiwang towardsgeneticimprovementofsocialbehavioursinlivestockusinglargescalesensordatadatasimulationandgeneticanalysis
AT harmendoekes towardsgeneticimprovementofsocialbehavioursinlivestockusinglargescalesensordatadatasimulationandgeneticanalysis
AT piterbijma towardsgeneticimprovementofsocialbehavioursinlivestockusinglargescalesensordatadatasimulationandgeneticanalysis