利用低覆盖率全基因组序列数据提高番鸭产蛋性状育种价值预测的准确性

IF 3.8 1区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE Poultry Science Pub Date : 2025-02-01 DOI:10.1016/j.psj.2025.104812
Haoqiang Ye , Congliang Ji , Xiaoqi Liu , Semiu Folaniyi Bello , Lijin Guo , Xiang Fang , Duo Lin , Yu Mo , ZhiLin Lei , Bolin Cai , Qinghua Nie
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引用次数: 0

摘要

低覆盖全基因组测序(lcWGS)是一种有效的低成本基因分型技术。它促进了农业动物种群中具有成本效益的基因组选择(GS)计划。基于lcWGS数据的GS已成功应用于猪、驴等牲畜。然而,其在家禽中的有效性报道很少。此外,由于lcWGS数据中标记间连锁不平衡程度高,标记密度大,因此有必要探索如何有效利用lcWGS数据进行基因组预测。收集了1491只麝鸭的产蛋性状表型数据,其中975只鸭采用低覆盖全基因组测序,平均深度为0.84x。在预测中,我们比较了基于家系的最佳线性无偏预测(PBLUP)方法、利用SNP标记数据的基因组最佳线性无偏预测(GBLUP)方法和整合家系和SNP标记信息的单步基因组最佳线性无偏预测(SSGBLUP)方法。在基于snp的方法中,我们进一步扩展了我们的分析,采用基于ld的snp加权,并采用高斯核模型来捕获上位遗传效应。结果表明,番鸭产蛋性状的遗传力估计范围为0.071 ~ 0.573。与PBLUP相比,通过单步遗传评估整合lcWGS数据和系谱数据提高了本研究中所有性状的基因组预测准确性,随机交叉验证的准确性提高了12.3%至43.9%。此外,与GBLUP相比,控制LD异质性并使用lcWGS数据考虑上位效应的GBLUP扩展方法显示出更优越的预测性能,在最佳情况下准确率提高幅度为0.6% ~ 75.1%。本研究表明,利用lcWGS数据对番鸭产蛋性状进行基因组预测是一种很有前景的方法。我们的研究结果为利用lcWGS数据优化基因组预测方法提供了有价值的策略。
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Improvement of the accuracy of breeding value prediction for egg production traits in Muscovy duck using low-coverage whole-genome sequence data
Low-coverage whole genome sequencing (lcWGS) is an effective low-cost genotyping technology when combined with genotype imputation approaches. It facilitates cost-effective genomic selection (GS) programs in agricultural animal populations. GS based on lcWGS data has been successfully applied to livestock such as pigs and donkeys. However, its effectiveness in poultry is poorly reported. Furthermore, due to the high linkage disequilibrium (LD) between markers and the high marker density in lcWGS data, it is necessary to explore how to effectively utilize lcWGS data for genomic prediction. Phenotypic data for egg production traits were collected from a population of 1491 Muscovy ducks, with 975 of them sequenced using low-coverage whole genomic sequencing at an average depth of ∼0.84x. In the prediction, we compared the pedigree-based best linear unbiased prediction (PBLUP) method, the genomic best linear unbiased prediction (GBLUP) method utilizing SNP marker data, and the single-step genomic best linear unbiased prediction (SSGBLUP) method, which integrates both pedigree and SNP marker information. Among the SNP-based approaches, we further extended our analysis by applying LD-based weighting of SNPs and employing a Gaussian kernel model to capture epistatic genetic effects. The result showed that the estimated heritability of egg production traits in Muscovy duck ranged from 0.071 to 0.573. Compared to the PBLUP, integrating lcWGS data and pedigree data through a single-step genetic evaluation improved the accuracy of genomic prediction for all traits in this study, with accuracy improvement ranging from 12.3 % to 43.9 % in random cross-validation. Additionally, compared to the GBLUP, the extended method of GBLUP that controls for LD heterogeneity and accounts for epistatic effects using lcWGS data showed a superior prediction performance, with accuracy improvement ranging from 0.6 %∼75.1 % in the optimal scenario. This study demonstrates that utilization of lcWGS data is a promising approach for genomic prediction of egg production traits in Muscovy duck. Our findings provide valuable strategies for optimizing genomic prediction methods using lcWGS data.
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来源期刊
Poultry Science
Poultry Science 农林科学-奶制品与动物科学
CiteScore
7.60
自引率
15.90%
发文量
0
审稿时长
94 days
期刊介绍: First self-published in 1921, Poultry Science is an internationally renowned monthly journal, known as the authoritative source for a broad range of poultry information and high-caliber research. The journal plays a pivotal role in the dissemination of preeminent poultry-related knowledge across all disciplines. As of January 2020, Poultry Science will become an Open Access journal with no subscription charges, meaning authors who publish here can make their research immediately, permanently, and freely accessible worldwide while retaining copyright to their work. Papers submitted for publication after October 1, 2019 will be published as Open Access papers. An international journal, Poultry Science publishes original papers, research notes, symposium papers, and reviews of basic science as applied to poultry. This authoritative source of poultry information is consistently ranked by ISI Impact Factor as one of the top 10 agriculture, dairy and animal science journals to deliver high-caliber research. Currently it is the highest-ranked (by Impact Factor and Eigenfactor) journal dedicated to publishing poultry research. Subject areas include breeding, genetics, education, production, management, environment, health, behavior, welfare, immunology, molecular biology, metabolism, nutrition, physiology, reproduction, processing, and products.
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