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Genetic analysis of resistance to Pseudomonas syringae pv. actinidiae (Psa) in a kiwifruit progeny test: an application of generalised linear mixed models (GLMMs)

机译:对丁香假单胞菌抗性的遗传分析。猕猴桃后代测试中的猕猴桃(Psa):广义线性混合模型(GLMM)的应用

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摘要

Linear Mixed models (LMMs) that incorporate genetic and spatial covariance structures have been used for many years to estimate genetic parameters and to predict breeding values in animal and plant breeding. Although the theoretical aspects for extending LMM to generalised linear mixed models (GLMMs) have been around for some time, suitable software has been developed only within the last decade or so. The GLIMMIX procedure in SAS® is becoming popular for fitting GLMMs in various disciplines. Applications of GLMMs to genetic analysis have been limited, probably because of the complexity of the models used. This is particularly so for Proc GLIMMIX because, unlike ASReml software, it is not specifically tailored for analysis of breeding data and some pre-procedure coding is necessary. Binary data that fits the GLMM framework is commonly encountered in breeding experiments, such as when evaluating individuals for resistance by observing the presence or absence of disease. Bacterial canker (Psa) caused by Pseudomonas syringae pv. actinidiae is a serious disease of kiwifruit in New Zealand and other kiwifruit-producing countries. Data from a progeny test trial was available to identify parents with high breeding values for resistance. We successfully applied the GLIMMIX procedure for this purpose. Heritability for resistance was moderate, and we identified two parents and their family as having high potential for Psa resistance breeding. There are several potential pitfalls when using GLMMs with binary data and these are briefly discussed.
机译:结合了遗传和空间协方差结构的线性混合模型(LMM)多年来一直用于估计遗传参数并预测动植物育种中的育种价值。尽管将LMM扩展到广义线性混合模型(GLMM)的理论方面已经存在了一段时间,但仅在最近十年左右的时间内才开发了合适​​的软件。 SAS®中的GLIMMIX程序在各种学科中的GLMM装配中正变得越来越流行。 GLMM在遗传分析中的应用受到了限制,这可能是因为所使用模型的复杂性。对于Proc GLIMMIX尤其如此,因为与ASReml软件不同,它不是专门为分析育种数据而设计的,并且需要进行一些程序前编码。在繁殖实验中通常会遇到适合GLMM框架的二进制数据,例如,通过观察疾病的存在或不存在来评估个体的抗性时。丁香假单胞菌PV引起的细菌性溃疡病(Psa)。猕猴桃是新西兰和其他猕猴桃生产国的一种严重的猕猴桃疾病。后代测试试验的数据可用于鉴定具有高抗性育种值的父母。为此,我们成功地应用了GLIMMIX过程。抗性的遗传力是中等的,我们确定了两个父母及其家人具有较高的Psa抗性育种潜力。将GLMM与二进制数据一起使用时,存在多个潜在的陷阱,并简要讨论了这些陷阱。

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