Suppr超能文献

数据不平衡对遗传力估计的影响。

Effects of data imbalance on estimation of heritability.

机构信息

Department of Agronomy, University of Illinois at Urbana-Champaign, 61801, Urbana, IL, USA.

出版信息

Theor Appl Genet. 1985 Mar;69(5-6):523-30. doi: 10.1007/BF00251098.

Abstract

Effects of data imbalance on bias, sampling variance and mean square error of heritability estimated with variance components were examined using a random two-way nested classification. Four designs, ranging from zero imbalance (balanced data) to "low", "medium" and "high" imbalance, were considered for each of four combinations of heritability (h(2)=0.2 and 0.4) and sample size (N=120 and 600). Observations were simulated for each design by drawing independent pseudo-random deviates from normal distributions with zero means, and variances determined by heritability. There were 100 replicates of each simulation; the same design matrix was used in all replications. Variance components were estimated by analysis of variance (Henderson's Method 1) and by maximum likelihood (ML). For the design and model used in this study, bias in heritability based on Method 1 and ML estimates of variance components was negligible. Effect of imbalance on variance of heritability was smaller for ML than for Method 1 estimation, and was smaller for heritability based on estimates of sire-plus-dam variance components than for heritability based on estimates of sire or dam variance components. Mean square error for heritability based on estimates of sire-plus-dam variance components appears to be less sensitive to data imbalance than heritability based on estimates of sire or dam variance components, especially when using Method 1 estimation. Estimation of heritability from sire-plus-dam components was insensitive to differences in data imbalance, especially for the larger sample size.

摘要

使用随机双向嵌套分类法,研究了数据不平衡对基于方差分量估计的遗传力偏差、抽样方差和均方误差的影响。对于遗传力(h(2)=0.2 和 0.4)和样本量(N=120 和 600)的四种组合的每种组合,都考虑了从零不平衡(平衡数据)到“低”、“中”和“高”不平衡的四种设计。通过从均值为零、方差由遗传力确定的正态分布中抽取独立的伪随机离差来模拟每种设计的观测值。对于每种模拟,都进行了 100 次重复;所有重复都使用相同的设计矩阵。通过方差分析(Henderson 的方法 1)和最大似然法(ML)来估计方差分量。对于本研究中使用的设计和模型,基于方差分量的 ML 和方法 1 估计的遗传力偏差可以忽略不计。对于 ML 估计,不平衡对遗传力方差的影响小于方法 1 的估计,对于基于 sire-plus-dam 方差分量的遗传力估计,不平衡的影响小于基于 sire 或 dam 方差分量的遗传力估计。基于 sire-plus-dam 方差分量的遗传力估计的均方误差似乎对数据不平衡的敏感性低于基于 sire 或 dam 方差分量的遗传力估计,尤其是在使用方法 1 估计时。从 sire-plus-dam 分量估计遗传力对数据不平衡的差异不敏感,尤其是对于较大的样本量。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验