大深度家系小鼠生长遗传参数的可识别性研究。

IF 1.9 3区 农林科学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE
X Ding, A A Musa, N Reinsch
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引用次数: 0

摘要

在具有直接和母体遗传效应的模型中,数据的结构特征是遗传协方差参数估计的偏差和低准确性的潜在来源。造成这种实际可识别性差的一个众所周知的原因是缺乏自己观察到的水坝。然而,到目前为止,还没有人注意到亲密关系可能产生的影响。因此,这项对两种非选择小鼠品系生长性状的遗传统计分析,包括根据观察到的高水平的共同祖先,对遗传(共)变异的实际可识别性进行调查,这些共同祖先来自大规模的深层谱系。体重数据收集了33年(从1978年到2011年;每系145代和118代),在三个发育阶段总共观察到大约115,000个体重。使用一条线的原始系谱结构对模拟数据进行的额外分析提供了对估计的偏差和精度的见解。此外,对遗传(共)变异的成对结构不可识别性的接近程度进行了量化。在单变量分析中,我们发现,在交配前的不同年龄阶段,直系效应和母系效应之间的遗传相关性对体重特征都是正相关的,除了一个小的负相关估计。总的来说,多变量分析返回了一些更强的相关性,即迹象保持不变。模拟结果显示,直系母系遗传相关性和其他参数有向上偏倚的趋势,特别是当真实相关性较高时。所有性状的结构不可辨识度指标都非常接近统一点(> 0.998),即一对协方差分量不能再被识别的点。这种窄性在具有较高的平均近交和同代祖先的后代的单独数据分区中更强。总之,在具有直接遗传效应和母系遗传效应的模型中,父母之间的强共同祖先是数据结构的另一个特征,可能导致估计遗传参数的偏差和过高的标准误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Identifiability of Genetic Parameters for Growth in Mice With a Massively Deep Pedigree.

In models with direct and maternal genetic effects, structural features of the data are a potential source of bias and low accuracy of estimates for genetic covariance parameters. One of the well-known reasons for such poor practical identifiability is the lack of dams with own observations. So far, however, no attention has been paid to the impact close relationships may have. Therefore, this genetic-statistical analysis of growth traits in two unselected mouse lines includes investigations on practical identifiability of genetic (co-)variances in the light of the observed high levels of co-ancestry, resulting from massively deep pedigrees. Body weight data had been collected over 33 years (from 1978 to 2011; 145 and 118 generations per line), amounting to approximately 115,000 observations in total for body weight at three developmental stages. Additional analyses of simulated data using the original pedigree structure of one line provided insight into the bias and precision of estimates. Further, closeness to pair-wise structural non-identifiability of genetic (co-)variances was quantified. In univariate analyses, we found genetic correlations between direct and maternal effects all positive for body mass traits at different ages up to mating, except for a single small negative estimate. Overall, multivariate analyses returned somewhat stronger correlations, whereby signs remained unchanged. Simulations showed a tendency toward an upward bias of the direct-maternal genetic correlations and other parameters, especially when the true correlations were higher. For all traits indicators for structural non-identifiability were narrowly close (> 0.998) to unity, the point at which a pair of covariance components no longer can be identified. This narrowness was stronger for separate partitions of data from later generations with higher average inbreeding and within-generation co-ancestry. In conclusion, in models with direct and maternal genetic effects, strong co-ancestry between parents is another feature of the data structure that may result in bias and inflated standard errors of estimated genetic parameters.

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来源期刊
Journal of Animal Breeding and Genetics
Journal of Animal Breeding and Genetics 农林科学-奶制品与动物科学
CiteScore
5.20
自引率
3.80%
发文量
58
审稿时长
12-24 weeks
期刊介绍: The Journal of Animal Breeding and Genetics publishes original articles by international scientists on genomic selection, and any other topic related to breeding programmes, selection, quantitative genetic, genomics, diversity and evolution of domestic animals. Researchers, teachers, and the animal breeding industry will find the reports of interest. Book reviews appear in many issues.
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