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Weighted-SAMGSR: combining significance analysis of microarray-gene set reduction algorithm with pathway topology-based weights to select relevant genes

机译:加权SAMGSR:将微阵列基因集约简算法的显着性分析与基于路径拓扑的权重相结合,以选择相关基因

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Background It has been demonstrated that a pathway-based feature selection method that incorporates biological information within pathways during the process of feature selection usually outperforms a gene-based feature selection algorithm in terms of predictive accuracy and stability. Significance analysis of microarray-gene set reduction algorithm (SAMGSR), an extension to a gene set analysis method with further reduction of the selected pathways to their respective core subsets, can be regarded as a pathway-based feature selection method. Methods In SAMGSR, whether a gene is selected is mainly determined by its expression difference between the phenotypes, and partially by the number of pathways to which this gene belongs. It ignores the topology information among pathways. In this study, we propose a weighted version of the SAMGSR algorithm by constructing weights based on the connectivity among genes and then combing these weights with the test statistics. Results Using both simulated and real-world data, we evaluate the performance of the proposed SAMGSR extension and demonstrate that the weighted version outperforms its original version.? Conclusions To conclude, the additional gene connectivity information does faciliatate feature selection. Reviewers This article was reviewed by Drs. Limsoon Wong, Lev Klebanov, and, I. King Jordan.
机译:背景技术已经证明,在预测准确性和稳定性方面,在特征选择过程中将生物学信息纳入途径的基于途径的特征选择方法通常胜过基于基因的特征选择算法。微阵列基因集减少算法(SAMGSR)的意义分析是基因集分析方法的扩展,可以进一步减少所选途径到其各自核心子集的途径,可以视为基于途径的特征选择方法。方法在SAMGSR中,是否选择基因主要取决于其表型之间的表达差异,部分取决于该基因所属的途径数目。它忽略路径之间的拓扑信息。在这项研究中,我们提出了SAMGSR算法的加权版本,方法是根据基因之间的连通性构造权重,然后将这些权重与测试统计数据结合起来。结果使用模拟数据和真实数据,我们评估了建议的SAMGSR扩展的性能,并证明了加权版本优于其原始版本。结论总而言之,附加的基因连通性信息确实有助于特征选择。审稿人本文由Drs审阅。 Limsoon Wong,Lev Klebanov和I. King Jordan。

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