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

IF 3.6 1区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Zhuoshi Wang, Harmen Doekes, Piter Bijma
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引用次数: 0

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 ([Formula: see text]) of performer and recipient effects were both set to 0.05, 0.1, or 0.2, and the genetic correlation ([Formula: see text]) 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 [Formula: see text] = 0.05, 0.1, and 0.2, respectively (for [Formula: see text]= 0). Including 2000 individuals each with only ~ 100 interactions, already yielded promising accuracies of 0.47, 0.60, and 0.71 for [Formula: see text] = 0.05, 0.1, and 0.2, respectively (with [Formula: see text] = 0). Similar results were found with [Formula: see text] 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.

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利用大规模传感器数据实现牲畜社会行为的遗传改善:数据模拟和遗传分析。
背景:有害的社会行为,如家禽啄羽毛和猪咬尾巴,会降低动物的福利和生产效率。虽然这些行为是可遗传的,但由于缺乏大型群体的个体表型方法和适当的遗传模型,选择性育种仍然受到限制。在不久的将来,关于社会行为的大规模纵向数据将变得可用,例如通过计算机视觉技术,需要适当的遗传模型来分析这些数据。在本文中,我们通过(1)开发模型来模拟和分析关于社会行为的大规模纵向数据,(2)调查所需的样本量,以获得估计的遗传参数和育种值(EBV)的合理准确性。动物的运动被认为是随机的,没有遗传变异,表演者和接受者的互动效应被认为是随着时间的推移而恒定的。根据文献,观察到的表演者和接受者效应的尺度遗传性([公式:见正文])均设置为0.05、0.1或0.2,这些效应之间的遗传相关性([公式,见正文]])设置为-0.5、0或0.5。使用基于代理的建模,我们模拟 ~ 2000只动物的200000次互动(~ 每只动物1000个相互作用)。方差分量和育种值用一般的线性混合模型估计。估计的遗传参数与真实值没有显著差异。当所有个体和相互作用都包括在分析中时,当[公式:见正文]=0.05、0.1和0.2时,EBV的准确度分别为0.61、0.70和0.76(当[公式,见正文]=0时)。包括2000人,每个人只有 ~ 100个相互作用,已经产生了0.47、0.60和0.71的有希望的准确度,[公式:见正文]=0.05、0.1和0.2([公式:参见正文]=0)。在-0.5或0.5的[公式:见正文]中也发现了类似的结果。结论:我们开发了模型来模拟和遗传分析大型群体动物的社会行为,预计在不久的将来会有大规模的纵向数据。我们用 ~ 每个人100次互动,相当于几周的记录。因此,我们得出结论,动物饲养是改善牲畜社会行为的一种很有前途的策略。
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来源期刊
Genetics Selection Evolution
Genetics Selection Evolution 生物-奶制品与动物科学
CiteScore
6.50
自引率
9.80%
发文量
74
审稿时长
1 months
期刊介绍: Genetics Selection Evolution invites basic, applied and methodological content that will aid the current understanding and the utilization of genetic variability in domestic animal species. Although the focus is on domestic animal species, research on other species is invited if it contributes to the understanding of the use of genetic variability in domestic animals. Genetics Selection Evolution publishes results from all levels of study, from the gene to the quantitative trait, from the individual to the population, the breed or the species. Contributions concerning both the biological approach, from molecular genetics to quantitative genetics, as well as the mathematical approach, from population genetics to statistics, are welcome. Specific areas of interest include but are not limited to: gene and QTL identification, mapping and characterization, analysis of new phenotypes, high-throughput SNP data analysis, functional genomics, cytogenetics, genetic diversity of populations and breeds, genetic evaluation, applied and experimental selection, genomic selection, selection efficiency, and statistical methodology for the genetic analysis of phenotypes with quantitative and mixed inheritance.
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