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同时考虑人口结构、基因型与环境互作以及甘蔗标记与性状关联的空间变异。

Simultaneously accounting for population structure, genotype by environment interaction, and spatial variation in marker-trait associations in sugarcane.

机构信息

BSES Limited, PMB 57, Mackay Mail Centre, QLD 4741, Australia.

出版信息

Genome. 2010 Nov;53(11):973-81. doi: 10.1139/G10-050.

Abstract

Few association mapping studies have simultaneously accounted for population structure, genotype by environment interaction (GEI), and spatial variation. In this sugarcane association mapping study we tested models accounting for these factors and identified the impact that each model component had on the list of markers declared as being significantly associated with traits. About 480 genotypes were evaluated for cane yield and sugar content at three sites and scored with DArT markers. A mixed model was applied in analysis of the data to simultaneously account for the impacts of population structure, GEI, and spatial variation within a trial. Two forms of the DArT marker data were used in the analysis: the standard discrete data (0, 1) and a continuous DArT score, which is related to the marker dosage. A large number of markers were significantly associated with cane yield and sugar content. However, failure to account for population structure, GEI, and (or) spatial variation produced both type I and type II errors, which on the one hand substantially inflated the number of significant markers identified (especially true for failing to account for GEI) and on the other hand resulted in failure to detect markers that could be associated with cane yield or sugar content (especially when failing to account for population structure). We concluded that association mapping based on trials from one site or analysis that failed to account for GEI would produce many trial-specific associated markers that would have low value in breeding programs.

摘要

很少有关联映射研究同时考虑了群体结构、基因型与环境互作(GEI)和空间变异。在这项甘蔗关联映射研究中,我们测试了考虑这些因素的模型,并确定了每个模型成分对被宣布与性状显著相关的标记列表的影响。在三个地点评估了大约 480 个基因型的蔗茎产量和含糖量,并使用 DArT 标记进行了评分。在数据分析中应用了混合模型,以同时考虑群体结构、GEI 和试验内空间变异的影响。在分析中使用了两种形式的 DArT 标记数据:标准离散数据(0、1)和与标记剂量相关的连续 DArT 得分。大量的标记与蔗茎产量和含糖量显著相关。然而,未能考虑群体结构、GEI 和(或)空间变异会产生 I 型和 II 型错误,一方面会大大增加鉴定的显著标记数量(特别是未能考虑 GEI 时更是如此),另一方面会导致无法检测到与蔗茎产量或含糖量相关的标记(特别是未能考虑群体结构时)。我们得出结论,基于一个地点的试验或未能考虑 GEI 的分析进行的关联映射,将产生许多在育种计划中价值较低的特定于试验的相关标记。

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