利用贝叶斯分离分析研究影响毛山羊体重的主要基因。

IF 1.7 3区 农林科学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Yunus İnan, Burak Karacaoren
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引用次数: 0

摘要

目的:研究影响毛山羊体重的主要基因的存在。贝叶斯分离分析在大数据中的应用有助于更精确地识别复杂的遗传结构和变异。这种方法通过检测大数据集中隐藏的遗传元素,提供了更深刻的生物学见解。可加性遗传效应的精确量化是通过目标选择实现可持续遗传进步的基础。此外,优势效应的评估提供了对杂合子优势的重要见解,阐明了牲畜种群中生长相关性状的杂种优势和恢复力的机制。方法:采用家系数据和表型数据进行贝叶斯分离分析,快速准确地鉴定主基因的存在。为此,分析了在两个不同时间点(出生体重(时间1)和大约100-120日龄体重(时间2))测量的4072例体重记录。数据集包括2036只动物(雄性1038只,雌性998只)。采用Gibbs抽样对后验分布进行统计推断。这些推论是基于每个性状的马尔可夫链的20个重复,收集了100,000个样本,由于样本之间的高度相关性,每保留500个样本。结果:本研究通过贝叶斯分离分析确定了估计误差方差、主基因方差、多基因方差、显性效应和加性遗传效应。出生体重的显性效应(-1.797)小于加性遗传效应(3.594),而4月龄体重的显性效应(55.902)大于加性遗传方差(54.988)。4月龄体重的多基因遗传力和主基因遗传力分别为0.51(±0.56)和0.81(±0.91),体重的多基因遗传力分别为0.44(±0.55)和0.86(±0.93)。结论:本研究结果表明,主基因参数,特别是主基因方差的95%最高后验密度区域(hpd)不为0,说明主基因成分具有统计学意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of major genes affecting body weight in hair goats using bayesian segregation analysis.

Objective: The objective of this study is to investigate the presence of major genes affecting body weight in hair goats. The application of Bayesian segregation analysis to big data facilitates more precise identification of intricate genetic structures and variations. This approach offers more profound biological insights through the detection of concealed genetic elements within big datasets. The precise quantification of additive genetic effects is fundamental for achieving sustainable genetic progress through targeted selection. Furthermore, the evaluation of dominance effects offers critical insights into heterozygote advantage, elucidating the mechanisms underlying heterosis and resilience in growth-related traits within livestock populations.

Methods: To rapidly and accurately identify the presence of major genes, pedigree data and phenotypic data were employed in a Bayesian segregation analysis. For this purpose, 4072 records of body weight were analysed, measured at two different time points (birth weight (Time1) and body weight measured at approximately 100-120 days of age (Time2)). The data set comprised 2036 animals (n = 1038 male, n = 998 female). Gibbs sampling was employed to make statistical inferences regarding posterior distributions. These inferences were based on 20 replications of the Markov chain for each trait, with 100,000 samples collected, with each 500th sample retained due to the high correlation among the samples.

Results: In this study, the estimated error variance, major gene variance, polygenic variance, dominance effect, and additive genetic effect were determined through Bayesian segregation analysis. The dominance effect (-1.797) was found to be smaller than the additive genetic effect (3.594) for birth weight, whereas for body weight at 4 months of age, the dominance effect (55.902) was found to be higher than the additive genetic variance (54.988). The polygenic and major gene heritabilities were estimated to be 0.51 (± 0.56) and 0.81 (± 0.91) for body weight, and 0.44 (± 0.55) and 0.86 (± 0.93) for body weight at four months of age, respectively.

Conclusion: The results of this study indicate that the 95% highest posterior density regions (HPDs) for the major gene parameter, particularly for the major gene variance, do not include 0, indicating the statistical significance of the major gene component.

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来源期刊
Tropical animal health and production
Tropical animal health and production 农林科学-兽医学
CiteScore
3.40
自引率
11.80%
发文量
361
审稿时长
6-12 weeks
期刊介绍: Tropical Animal Health and Production is an international journal publishing the results of original research in any field of animal health, welfare, and production with the aim of improving health and productivity of livestock, and better utilisation of animal resources, including wildlife in tropical, subtropical and similar agro-ecological environments.
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