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通过优化候选基因的选择来改善乳腺癌肿瘤化疗敏感性的预测。

Improving the prediction of chemotherapeutic sensitivity of tumors in breast cancer via optimizing the selection of candidate genes.

作者信息

Jiang Lina, Huang Liqiu, Kuang Qifan, Zhang Juan, Li Menglong, Wen Zhining, He Li

机构信息

College of Chemistry, Sichuan University, Chengdu 610064, PR China.

College of Chemistry, Sichuan University, Chengdu 610064, PR China.

出版信息

Comput Biol Chem. 2014 Apr;49:71-8. doi: 10.1016/j.compbiolchem.2013.12.002. Epub 2014 Jan 1.

Abstract

Estrogen receptor status and the pathologic response to preoperative chemotherapy are two important indicators of chemotherapeutic sensitivity of tumors in breast cancer, which are used to guide the selection of specific regimens for patients. Microarray-based gene expression profiling, which is successfully applied to the discovery of tumor biomarkers and the prediction of drug response, was suggested to predict the cancer outcomes using the gene signatures differentially expressed between two clinical states. However, many false positive genes unrelated to the phenotypic differences will be involved in the lists of differentially expressed genes (DEGs) when only using the statistical methods for gene selection, e.g. Student's t test, and subsequently affect the performance of the predictive models. For the purpose of improving the prediction of clinical outcomes, we optimized the selection of DEGs by using a combined strategy, for which the DEGs were firstly identified by the statistical methods, and then filtered by a similarity profiling approach that used for candidate gene prioritization. In our study, we firstly verified the molecular functions of the DEGs identified by the combined strategy with the gene expression data generated in the microarray experiments of Si-Wu-Tang, which is a popular formula in traditional Chinese medicine. The results showed that, for Si-Wu-Tang experimental data set, the cancer-related signaling pathways were significantly enriched by gene set enrichment analysis when using the DEG lists generated by the combined strategy, confirming the potentially cancer-preventive effect of Si-Wu-Tang. To verify the performance of the predictive models in clinical application, we used the combined strategy to select the DEGs as features from the gene expression data of the clinical samples, which were collected from the breast cancer patients, and constructed models to predict the chemotherapeutic sensitivity of tumors in breast cancer. After refining the DEG lists by a similarity profiling approach, the Matthew's correlation coefficients of predicting estrogen receptor status and the pathologic response to preoperative chemotherapy with the DEGs selected by the fold change ranking were 0.770 and 0.428, respectively, and were 0.748 and 0.373 with the DEGs selected by SAM, respectively, which were generally higher than those achieved with unrefined DEG lists and those achieved by the candidate models in the second phase of Microarray Quality Control project (0.732 and 0.301, respectively). Our results demonstrated that the strategy of integrating the statistical methods with the gene prioritization methods based on similarity profiling was a powerful tool for DEG selection, which effectively improved the performance of prediction models in clinical applications and can guide the personalized chemotherapy better.

摘要

雌激素受体状态和术前化疗的病理反应是乳腺癌肿瘤化疗敏感性的两个重要指标,可用于指导为患者选择特定的治疗方案。基于微阵列的基因表达谱分析已成功应用于肿瘤生物标志物的发现和药物反应的预测,有人建议使用两种临床状态之间差异表达的基因特征来预测癌症预后。然而,仅使用基因选择的统计方法(如学生t检验)时,许多与表型差异无关的假阳性基因会被纳入差异表达基因(DEG)列表中,进而影响预测模型的性能。为了提高对临床结局的预测,我们采用了一种联合策略来优化DEG的选择,即首先通过统计方法识别DEG,然后通过用于候选基因优先级排序的相似性分析方法进行筛选。在我们的研究中,我们首先利用四物汤微阵列实验中产生的基因表达数据,验证了通过联合策略识别的DEG的分子功能,四物汤是一种常用的中药方剂。结果表明,对于四物汤实验数据集,使用联合策略生成的DEG列表进行基因集富集分析时,癌症相关信号通路显著富集,证实了四物汤潜在的防癌作用。为了验证预测模型在临床应用中的性能,我们使用联合策略从乳腺癌患者收集的临床样本的基因表达数据中选择DEG作为特征,并构建模型来预测乳腺癌肿瘤的化疗敏感性。通过相似性分析方法优化DEG列表后,采用倍数变化排序选择的DEG预测雌激素受体状态和术前化疗病理反应的马修斯相关系数分别为0.770和0.428,采用SAM选择的DEG的马修斯相关系数分别为0.748和0.373,这些系数总体上高于未优化的DEG列表以及微阵列质量控制项目第二阶段候选模型所得到的系数(分别为0.732和0.301)。我们的结果表明,将统计方法与基于相似性分析的基因优先级排序方法相结合的策略是一种强大的DEG选择工具,它有效地提高了预测模型在临床应用中的性能,并且能够更好地指导个性化化疗。

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