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首页> 外文期刊>BioMed research international >Identifying the Gene Signatures from Gene-Pathway Bipartite Network Guarantees the Robust Model Performance on Predicting the Cancer Prognosis
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Identifying the Gene Signatures from Gene-Pathway Bipartite Network Guarantees the Robust Model Performance on Predicting the Cancer Prognosis

机译:从基因途径二分网络鉴定基因签名保证了预测癌症预后的鲁棒模型性能

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摘要

For the purpose of improving the prediction of cancer prognosis in the clinical researches, various algorithms have been developed to construct the predictive models with the gene signatures detected by DNA microarrays. Due to the heterogeneity of the clinical samples, the list of differentially expressed genes (DEGs) generated by the statistical methods or the machine learning algorithms often involves a number of false positive genes, which are not associated with the phenotypic differences between the compared clinical conditions, and subsequently impacts the reliability of the predictive models. In this study, we proposed a strategy, which combined the statistical algorithm with the gene-pathway bipartite networks, to generate the reliable lists of cancer-related DEGs and constructed the models by using support vector machine for predicting the prognosis of three types of cancers, namely, breast cancer, acute myeloma leukemia, and glioblastoma. Our results demonstrated that, combined with the gene-pathway bipartite networks, our proposed strategy can efficiently generate the reliable cancer-related DEG lists for constructing the predictive models. In addition, the model performance in the swap analysis was similar to that in the original analysis, indicating the robustness of the models in predicting the cancer outcomes.
机译:为了改善临床研究中癌症预后预测的目的,已经开发了各种算法以构建具有DNA微阵列检测到的基因签名的预测模型。由于临床样本的异质性,由统计方法或机器学习算法产生的差异表达基因(DEGS)的列表通常涉及许多假阳性基因,这与比较临床条件之间的表型差异无关然后,随后影响预测模型的可靠性。在本研究中,我们提出了一种策略,该策略将统计算法与基因途径二分网络组合,以产生通过使用支持向量机来预测三种类型癌症预后构建模型的可靠列表。 ,即乳腺癌,急性骨髓瘤白血病和胶质母细胞瘤。我们的结果表明,与基因途径二分网络相结合,我们所提出的策略可以有效地产生可靠的癌症相关的DEG列表,用于构建预测模型。此外,交换分析中的模型性能与原始分析中的模型性能类似,表明模型在预测癌症结果方面的稳健性。

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