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Prior robust empirical Bayes inference for large-scale data by conditioning on rank with application to microarray data

机译:先验鲁棒的经验贝叶斯推断大规模数据通过对芯片数据进行排序的条件

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摘要

Empirical Bayes methods have been extensively used for microarray data analysis by modeling the large number of unknown parameters as random effects. Empirical Bayes allows borrowing information across genes and can automatically adjust for multiple testing and selection bias. However, the standard empirical Bayes model can perform poorly if the assumed working prior deviates from the true prior. This paper proposes a new rank-conditioned inference in which the shrinkage and confidence intervals are based on the distribution of the error conditioned on rank of the data. Our approach is in contrast to a Bayesian posterior, which conditions on the data themselves. The new method is almost as efficient as standard Bayesian methods when the working prior is close to the true prior, and it is much more robust when the working prior is not close. In addition, it allows a more accurate (but also more complex) non-parametric estimate of the prior to be easily incorporated, resulting in improved inference. The new method’s prior robustness is demonstrated via simulation experiments. Application to a breast cancer gene expression microarray dataset is presented. Our R package rank.Shrinkage provides a ready-to-use implementation of the proposed methodology.
机译:通过将大量未知参数建模为随机效应,经验贝叶斯方法已广泛用于微阵列数据分析。经验贝叶斯允许跨基因借用信息,并可以针对多种测试和选择偏差自动进行调整。但是,如果假定的工作先验偏离真实先验,则标准经验贝叶斯模型可能会表现不佳。本文提出了一种新的秩条件推断,其中收缩和置信区间基于以数据秩为条件的误差分布。我们的方法与贝叶斯后验相反,后者以数据本身为条件。当工作先验接近真实先验时,新方法几乎与标准贝叶斯方法一样有效,而当工作先验未接近时,新方法则更加健壮。另外,它允许更容易地合并之前的更准确(但也更复杂)的非参数估计,从而提高推理能力。通过仿真实验证明了该新方法的先验鲁棒性。介绍了对乳腺癌基因表达微阵列数据集的应用。我们的R包装等级。收缩率提供了拟议方法的现成实施方式。

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