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Clustering-based gene-subnetwork biomarker identification using gene expression data

机译:使用基因表达数据的基于聚类的基因子网生物标记识别

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The identification of predictive biomarkers of complex disease with robustness and specificity is an ongoing challenge. Gene expressions provide information on how the cell reacts to a particular state and the relationship of genes may lead to novel information. A network-based approach integrating expression data with protein-protein interaction network can be used to identify gene-subnetwork biomarkers for a particular disease. However, cancer datasets are heterogeneous in nature containing unknown or undefined subtypes of cancers. In this study, we propose a gene-subnetwork biomarker identification approach by implementing an Expectation-Maximization (EM) clustering technique to homogenize the dataset. To validate our proposed method. Lung cancer expression datasets are used to identify gene-subnetwork biomarkers. The evaluation of gene-subnetwork biomarkers is done by 5-fold cross-validation on an independent dataset. The comparison between non-clustering and clustering-based gene-subnetwork identification showed that clustering produced improved classification performance at a statistically significant level. Furthermore, preliminary functional analysis results showed more significant subnetworks were identified using the proposed approach.
机译:具有鲁棒性和特异性的复杂疾病的预测性生物标志物的鉴定是一个持续的挑战。基因表达提供有关细胞如何反应至特定状态的信息,而基因之间的关系可能导致产生新的信息。将表达数据与蛋白质-蛋白质相互作用网络相结合的基于网络的方法可用于识别特定疾病的基因-亚网络生物标记。但是,癌症数据集本质上是异质的,包含未知或不确定的癌症亚型。在这项研究中,我们通过实现期望最大化(EM)聚类技术来均化数据集,提出了一种基因子网生物标志物识别方法。为了验证我们提出的方法。肺癌表达数据集用于鉴定基因亚网络生物标志物。通过在独立数据集上进行5倍交叉验证对基因亚网络生物标志物进行评估。非聚类和基于聚类的基因子网识别之间的比较表明,聚类在统计学上显着提高了分类性能。此外,初步的功能分析结果表明,使用建议的方法可以识别出更多重要的子网。

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