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Using the posterior distribution of deviance to measure evidence of association for rare susceptibility variants

机译:使用偏差的后验分布来测量稀有磁化率变异的关联证据

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Aitkin recently proposed an integrated Bayesian/likelihood approach that he claims is general and simple. We have applied this method, which does not rely on informative prior probabilities or large-sample results, to investigate the evidence of association between disease and the 16 variants in the KDR gene provided by Genetic Analysis Workshop 17. Based on the likelihood of logistic regression models and considering noninformative uniform prior probabilities on the coefficients of the explanatory variables, we used a random walk Metropolis algorithm to simulate the distributions of deviance and deviance difference. The distribution of probability values and the distribution of the proportions of positive deviance differences showed different locations, but the direction of the shift depended on the genetic factor. For the variant with the highest minor allele frequency and for any rare variant, standard logistic regression showed a higher power than the novel approach. For the two variants with the strongest effects on Q1 under a type I error rate of 1%, the integrated approach showed a higher power than standard logistic regression. The advantages and limitations of the integrated Bayesian/likelihood approach should be investigated using additional regions and considering alternative regression models and collapsing methods.
机译:艾特金(Aitkin)最近提出了一种综合的贝叶斯/可能性方法,他声称这是通用且简单的方法。我们已经应用了这种方法,该方法不依赖于先验的信息概率或大样本结果,而是调查了遗传分析研讨会17提供的疾病与KDR基因中16个变异之间的关联证据。基于逻辑回归的可能性在模型中并考虑了解释变量系数的非信息性统一先验概率,我们使用随机游动Metropolis算法来模拟偏差和偏差差异的分布。概率值的分布和正偏差差异的比例的分布显示出不同的位置,但是移位的方向取决于遗传因素。对于具有次要等位基因频率最高的变体以及任何罕见的变体,标准逻辑回归显示出比新方法更高的功效。对于在I型错误率为1%的情况下对Q1影响最大的两个变体,集成方法显示出比标准logistic回归更高的功效。综合贝叶斯/可能性方法的优点和局限性应使用其他区域并考虑替代回归模型和崩溃方法来研究。

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