Ball Roderick D
Scion (New Zealand Forest Research Institute Limited), Rotorua, New Zealand.
Genetics. 2007 Dec;177(4):2399-416. doi: 10.1534/genetics.106.069955.
We calculate posterior probabilities for candidate genes as a function of genomic location. Posterior probabilities for quantitative trait loci (QTL) presence in a small interval are calculated using a Bayesian model-selection approach based on the Bayesian information criterion (BIC) and used to combine QTL colocation information with sequence-specific evidence, e.g., from differential expression and/or association studies. Our method takes into account uncertainty in estimation of number and locations of QTL and estimated map position. Posterior probabilities for QTL presence were calculated for simulated data with n = 100, 300, and 1200 QTL progeny and compared with interval mapping and composite-interval mapping. Candidate genes that mapped to QTL regions had substantially larger posterior probabilities. Among candidates with a given Bayes factor, those that map near a QTL are more promising for further investigation with association studies and functional testing or for use in marker-aided selection. The BIC is shown to correspond very closely to Bayes factors for linear models with a nearly noninformative Zellner prior for the simulated QTL data with n > or = 100. It is shown how to modify the BIC to use a subjective prior for the QTL effects.
我们计算候选基因的后验概率作为基因组位置的函数。使用基于贝叶斯信息准则(BIC)的贝叶斯模型选择方法计算小间隔内数量性状基因座(QTL)存在的后验概率,并用于将QTL共定位信息与序列特异性证据(例如来自差异表达和/或关联研究的证据)相结合。我们的方法考虑了QTL数量和位置估计以及估计图谱位置中的不确定性。针对具有n = 100、300和1200个QTL后代的模拟数据计算QTL存在的后验概率,并与区间作图和复合区间作图进行比较。映射到QTL区域的候选基因具有明显更大的后验概率。在具有给定贝叶斯因子的候选基因中,那些映射到QTL附近的基因对于通过关联研究和功能测试进行进一步研究或用于标记辅助选择更有前景。对于n≥100的模拟QTL数据,对于具有几乎无信息的Zellner先验的线性模型,BIC显示与贝叶斯因子非常接近。展示了如何修改BIC以使用QTL效应的主观先验。