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A Robust Rerank Approach for Feature Selection and Its Application to Pooling-Based GWA Studies

机译:一种鲁棒的特征选择方法及其在基于池的GWA研究中的应用

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摘要

Large-p-small-n datasets are commonly encountered in modern biomedical studies. To detect the difference between two groups, conventional methods would fail to apply due to the instability in estimating variances in t-test and a high proportion of tied values in AUC (area under the receiver operating characteristic curve) estimates. The significance analysis of microarrays (SAM) may also not be satisfactory, since its performance is sensitive to the tuning parameter, and its selection is not straightforward. In this work, we propose a robust rerank approach to overcome the above-mentioned diffculties. In particular, we obtain a rank-based statistic for each feature based on the concept of “rank-over-variable.” Techniques of “random subset” and “rerank” are then iteratively applied to rank features, and the leading features will be selected for further studies. The proposed re-rank approach is especially applicable for large-p-small-n datasets. Moreover, it is insensitive to the selection of tuning parameters, which is an appealing property for practical implementation. Simulation studies and real data analysis of pooling-based genome wide association (GWA) studies demonstrate the usefulness of our method.
机译:在现代生物医学研究中通常会遇到大p小n数据集。为了检测两组之间的差异,传统的方法将无法应用,这是因为t检验方差的估计不稳定以及AUC(接收器工作特性曲线下的面积)估计值中束缚值的比例很高。微阵列(SAM)的重要性分析可能也不令人满意,因为其性能对调整参数敏感,并且选择也不简单。在这项工作中,我们提出了一种鲁棒的重新排名方法来克服上述困难。尤其是,我们基于“排名超过变量”的概念为每个功能获取基于排名的统计信息。然后将“随机子集”和“重新排名”技术迭代应用于排名特征,并将选择主要特征进行进一步研究。所提出的重新排序方法尤其适用于大p小n数据集。而且,它对调节参数的选择不敏感,这对于实际实施是吸引人的特性。基于池化的全基因组广泛关联(GWA)研究的仿真研究和真实数据分析证明了我们方法的有效性。

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