Suppr超能文献

生长性状信息有助于猪产仔数的遗传评估。

Information of Growth Traits Is Helpful for Genetic Evaluation of Litter Size in Pigs.

作者信息

Yang Hui, Yang Lei, Qian Jinhua, Xu Lei, Lin Li, Su Guosheng

机构信息

Department of Animal Science, Fujian Vocational College of Agriculture, Fuzhou 350007, China.

Suzhou Aspire Agritech Consulting Co., Ltd., Suzhou 215000, China.

出版信息

Animals (Basel). 2024 Sep 13;14(18):2669. doi: 10.3390/ani14182669.

Abstract

Litter size is an important trait in pig production. But selection accuracy for this trait is relatively low, compared with production traits. This study, for the first time, investigated the improvement of genetic evaluation of reproduction traits such as litter size in pigs using data of production traits as an additional information source. The data of number of piglets born alive per litter (NBA), age at 100 kg of body weight (Age100), and lean meet percentage (LMP) in a Yorkshire population were analyzed, using either a single-trait model or the multitrait model that allows us to account for environmental correlation between reproduction and production traits in the situation that one individual has only one record for a production trait while multiple records for a reproduction trait. Accuracy of genetic evaluation using single-trait and multitrait models were assessed by model-based accuracy (R) and validation accuracy (R). Two validation scenarios were considered. One scenario (Valid_r1) was that the individuals did not have a record of NBA, but Age100 and LMP. The other (Valid_r2) was that the individuals did not have a record for all the three traits. The estimate of heritability was 0.279 for Age100, 0.371 for LMP, and 0.076 for NBA. Genetic correlation was 0.308 between Age100 and LMP, 0.369 between Age100 and NBA, and 0.022 between LMP and NBA. Compared with the single-trait model, the multitrait model including Age100 increased prediction accuracy for NBA by 3.6 percentage points in R and 5.9 percentage points in R for the scenario of Valid_r1. The increase was 1.8 percentage points in R and 3.8 percentage points in R for the scenario of Valid_r2. Age100 also gained in the multitrait model but was smaller than NBA. However, LMP did not benefit from a multitrait model and did not have a positive contribution to genetic evaluation for NBA. In addition, the multitrait model, in general, slightly reduced level bias but not dispersion bias of genetic evaluation. According to these results, it is recommended to predict breeding values using a multitrait model including growth and reproduction traits.

摘要

窝产仔数是生猪生产中的一个重要性状。但与生产性状相比,该性状的选择准确性相对较低。本研究首次利用生产性状数据作为额外信息来源,探讨了提高猪繁殖性状(如窝产仔数)遗传评估的方法。分析了约克夏猪群中每窝活产仔猪数(NBA)、体重达100千克时的年龄(Age100)和瘦肉率(LMP)的数据,使用单性状模型或多性状模型,在个体仅具有一个生产性状记录而具有多个繁殖性状记录的情况下,多性状模型可以考虑繁殖性状与生产性状之间的环境相关性。使用基于模型的准确性(R)和验证准确性(R)评估单性状模型和多性状模型的遗传评估准确性。考虑了两种验证方案。一种方案(Valid_r1)是个体没有NBA记录,但有Age100和LMP记录。另一种方案(Valid_r2)是个体没有所有这三个性状的记录。Age100的遗传力估计值为0.279,LMP为0.371,NBA为0.076。Age100与LMP之间的遗传相关性为0.308,Age100与NBA之间为0.369,LMP与NBA之间为0.022。与单性状模型相比,在Valid_r1方案中,包含Age100的多性状模型使NBA的预测准确性在R中提高了3.6个百分点,在R中提高了5.9个百分点。在Valid_r2方案中,R提高了1.8个百分点,R提高了3.8个百分点。Age100在多性状模型中也有所提高,但幅度小于NBA。然而,LMP并未从多性状模型中受益,对NBA的遗传评估也没有积极贡献。此外,多性状模型总体上略微降低了遗传评估的水平偏差,但没有降低离散偏差。根据这些结果,建议使用包含生长和繁殖性状的多性状模型来预测育种值。

相似文献

本文引用的文献

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验