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Bayesian ensemble methods for survival prediction in gene expression data

机译:基因表达数据中生存预测的贝叶斯集成方法

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Motivation: We propose a Bayesian ensemble method for survival prediction in high-dimensional gene expression data. We specify a fully Bayesian hierarchical approach based on an ensemble 'sum-of-trees' model and illustrate our method using three popular survival models. Our non-parametric method incorporates both additive and interaction effects between genes, which results in high predictive accuracy compared with other methods. In addition, our method provides model-free variable selection of important prognostic markers based on controlling the false discovery rates; thus providing a unified procedure to select relevant genes and predict survivor functions.Results: We assess the performance of our method several simulated and real microarray datasets. We show that our method selects genes potentially related to the development of the disease as well as yields predictive performance that is very competitive to many other existing methods.
机译:动机:我们提出了一种用于高维基因表达数据中生存预测的贝叶斯集成方法。我们基于集合“树和”模型指定了完全贝叶斯分层方法,并使用三种流行的生存模型说明了我们的方法。我们的非参数方法结合了基因之间的加性和相互作用,与其他方法相比,具有较高的预测准确性。此外,我们的方法基于控制错误发现率,提供了重要预测指标的无模型变量选择;结果:我们评估了几种模拟和真实微阵列数据集的方法的性能。我们表明,我们的方法选择了与疾病发展潜在相关的基因,并产生了与许多其他现有方法极具竞争力的预测性能。

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