首页> 外文期刊>Theoretical and Applied Genetics: International Journal of Breeding Research and Cell Genetics >Bayesian multilocus association mapping on ordinal and censored traits and its application to the analysis of genetic variation among Oryza sativa L. germplasms
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Bayesian multilocus association mapping on ordinal and censored traits and its application to the analysis of genetic variation among Oryza sativa L. germplasms

机译:贝叶斯基因座序和删节性状的多位点关联制图及其在水稻种质遗传变异分析中的应用

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Association mapping can be a powerful tool for detecting quantitative trait loci (QTLs) without requiring line-crossing experiments. We previously proposed a Bayesian approach for simultaneously mapping multiple QTLs by a regression method that directly incorporates estimates of the population structure. In the present study, we extended our method to analyze ordinal and censored traits, since both types of traits are common in the evaluation of germplasm collections. Ordinal-probit and tobit models were employed to analyze ordinal and censored traits, respectively. In both models, we postulated the existence of a latent continuous variable associated with the observable data, and we used a Markov-chain Monte Carlo algorithm to sample the latent variable and determine the model parameters. We evaluated the efficiency of our approach by using simulated- and real-trait analyses of a rice germplasm collection. Simulation analyses based on real marker data showed that our models could reduce both false-positive and false-negative rates in detecting QTLs to reasonable levels. Simulation analyses based on highly polymorphic marker data, which were generated by coalescent simulations, showed that our models could be applied to genotype data based on highly polymorphic marker systems, like simple sequence repeats. For the real traits, we analyzed heading date as a censored trait and amylose content and the shape of milled rice grains as ordinal traits. We found significant markers that may be linked to previously reported QTLs. Our approach will be useful for whole-genome association mapping of ordinal and censored traits in rice germplasm collections.
机译:关联映射可以成为检测数量性状基因座(QTL)的强大工具,而无需进行交叉实验。我们之前提出了一种贝叶斯方法,用于通过直接合并总体人口结构估计值的回归方法同时映射多个QTL。在本研究中,我们扩展了分析序数和删节性状的方法,因为这两种类型的性状在种质资源评估中都很常见。使用序数-概率模型和定点模型分别分析序数和审查特征。在两个模型中,我们都假定存在与可观察数据相关的潜在连续变量,并且我们使用了马尔可夫链蒙特卡罗算法对潜在变量进行采样并确定模型参数。我们通过使用水稻种质资源的模拟和真实性分析来评估我们方法的效率。基于真实标记数据的仿真分析表明,我们的模型可以将检测QTL的假阳性率和假阴性率降低到合理水平。通过合并模拟生成的基于高度多态标记数据的模拟分析表明,我们的模型可以应用于基于高度多态标记系统的基因型数据,例如简单的序列重复。对于真实性状,我们将抽穗期分析为审查性状和直链淀粉含量,并将碾米粒的形状作为序性状进行分析。我们发现了可能与先前报道的QTL相关的重要标记。我们的方法将对水稻种质资源中有序和删节性状的全基因组关联作图很有用。

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