用审查记录评估基因组预测的准确性和偏差的替代方法

Q3 Agricultural and Biological Sciences
Geraldo Magela da Cruz Pereira, Sebastião Martins Filho, Renata Veroneze, Luiz Fernando Brito, Vinícius Silva dos Santos, Leonardo Siqueira Glória
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引用次数: 0

摘要

本研究旨在提出和比较带有删节数据的性状育种值的基因组预测的准确性和偏差指标。对QTL遗传率和多基因遗传率分别为C1: 0.07 ~ 0.07、C2: 0.07 ~ 0.00、C3: 0.27 ~ 0.27、C4: 0.27 ~ 0.00的4个性状进行基因型和筛选表型信息模拟。使用混合Cox和截断正态模型预测基因组育种值。模型的准确性是基于删减数据(PCC)的Pearson (PC)、maximum (MC)和Pearson相关性来估计的,而基因组偏倚是通过简单线性回归(SLR)和Tobit (TB)来计算的。对于C3性状,MC和PCC在10%和40%的审查信息上优于PC,对于70%的审查信息,PCC的结果优于MC和PC。对于其他性状,建议的措施优于或统计上等于PC。与边际效应(TB)相关的系数给出的估计值与单反方法获得的估计值接近,而与潜在变量相关的系数在大多数情况下随着审查的增加几乎没有变化。从统计角度来看,即使是低审查百分比,也应优先使用审查数据的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Alternative measures to evaluate the accuracy and bias of genomic predictions with censored records
This study aimed to propose and compare metrics of accuracy and bias of genomic prediction of breeding values for traits with censored data. Genotypic and censored-phenotypic information were simulated for four traits with QTL heritability and polygenic heritability, respectively: C1: 0.07-0.07, C2: 0.07-0.00, C3: 0.27-0.27, and C4: 0.27-0.00. Genomic breeding values were predicted using the Mixed Cox and Truncated Normal models. The accuracy of the models was estimated based on the Pearson (PC), maximal (MC), and Pearson correlation for censored data (PCC) while the genomic bias was calculated via simple linear regression (SLR) and Tobit (TB). MC and PCC were statistically superior to PC for the trait C3 with 10 and 40% censored information, for 70% censorship, PCC yielded better results than MC and PC. For the other traits, the proposed measures were superior or statistically equal to the PC. The coefficients associated with the marginal effects (TB) presented estimates close to those obtained for the SLR method, while the coefficient related to the latent variable showed almost unchanged pattern with the increase in censorship in most cases. From a statistical point of view, the use of methodologies for censored data should be prioritized, even for low censoring percentages.
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来源期刊
Acta Scientiarum. Animal Sciences
Acta Scientiarum. Animal Sciences Agricultural and Biological Sciences-Food Science
CiteScore
1.60
自引率
0.00%
发文量
45
审稿时长
9 weeks
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