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Assessing a Bayesian Approach for Detecting Exotic Hybrids between Plantation and Native Eucalypts

机译:评估检测人工林和本地桉树之间异源杂种的贝叶斯方法

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Eucalyptus globulusis grown extensively in plantations outside its native range in Australia. Concerns have been raised that the species may pose a genetic risk to native eucalypt species through hybridisation and introgression. Methods for identifying hybrids are needed to enable assessment and management of this genetic risk. This paper assesses the efficiency of a Bayesian approach for identifying hybrids between the plantation speciesE. globulusandE. nitensand four at-risk native eucalypts. Range-wide DNA samples ofE. camaldulensis,E. cypellocarpa,E. globulus,E. nitens,E. ovataandE. viminalis, and pedigreed and putative hybrids (n= 606), were genotyped with 10 microsatellite loci. Using a two-way simulation analysis (two species in the model at a time), the accuracy of identification was 98% for first and 93% for second generation hybrids. However, the accuracy of identifying simulated backcross hybrids was lower (74%). A six-way analysis (all species in the model together) showed that as the number of species increases the accuracy of hybrid identification decreases. Despite some difficulties identifying backcrosses, the two-way Bayesian modelling approach was highly effective at identifyingF1s, which, in the context ofE. globulusplantations, are the primary management concern.
机译:桉树在澳大利亚本土以外的人工林中广泛生长。有人担心该物种可能通过杂交和渗入对天然桉树物种造成遗传风险。需要用于鉴定杂种的方法,以能够评估和管理这种遗传风险。本文评估了贝叶斯方法在人工林E之间鉴定杂种的效率。球蛋白nitensand四个有风险的本地桉树。 E的全范围DNA样品。卡玛杜兰cypellocarpa,E。球尼滕斯ovataandE。用10个微卫星基因座对viminalis,纯种和假定的杂种(n = 606)进行基因分型。使用双向仿真分析(一次在模型中存在两个物种),第一代杂种的识别准确性为98%,第二代杂种的识别准确性为93%。但是,识别模拟回交杂种的准确性较低(74%)。六向分析(模型中的所有物种一起)显示,随着物种数量增加,杂交鉴定的准确性降低。尽管确定回交有一些困难,但是双向贝叶斯建模方法在识别F1方面非常有效,在E的背景下。种植球是主要的管理问题。

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