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A New Combinatorial Optimization Approach for Integrated Feature Selection Using Different Datasets: A Prostate Cancer Transcriptomic Study

机译:使用不同数据集的综合特征选择的新组合优化方法:前列腺癌转录组学研究

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摘要

BackgroundThe joint study of multiple datasets has become a common technique for increasing statistical power in detecting biomarkers obtained from smaller studies. The approach generally followed is based on the fact that as the total number of samples increases, we expect to have greater power to detect associations of interest. This methodology has been applied to genome-wide association and transcriptomic studies due to the availability of datasets in the public domain. While this approach is well established in biostatistics, the introduction of new combinatorial optimization models to address this issue has not been explored in depth. In this study, we introduce a new model for the integration of multiple datasets and we show its application in transcriptomics.
机译:背景技术多个数据集的联合研究已成为提高统计能力以检测从较小研究获得的生物标志物的常用技术。通常采用的方法基于以下事实:随着样本总数的增加,我们期望具有更大的检测感兴趣关联的能力。由于公共领域数据集的可用性,该方法已应用于全基因组关联和转录组学研究。虽然这种方法在生物统计学中已经很成熟,但是尚未深入探讨引入新的组合优化模型来解决此问题。在这项研究中,我们介绍了一个用于整合多个数据集的新模型,并展示了其在转录组学中的应用。

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