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首页> 外文期刊>Journal of Ovarian Research >A network-pathway based module identification for predicting the prognosis of ovarian cancer patients
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A network-pathway based module identification for predicting the prognosis of ovarian cancer patients

机译:基于网络通路的模块识别,用于预测卵巢癌患者预后

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摘要

Background This study aimed to screen multiple genes biomarkers based on gene expression data for predicting the survival of ovarian cancer patients. Methods Two microarray data of ovarian cancer samples were collected from The Cancer Genome Atlas (TCGA) database. The data in the training set were used to construct Reactome functional interactions network, which then underwent Markov clustering, supervised principal components, Cox proportional hazard model to screen significantly prognosis related modules. The distinguishing ability of each module for survival was further evaluated by the testing set. Gene Ontology (GO) functional and pathway annotations were performed to identify the roles of genes in each module for ovarian cancer. Results The network based approach identified two 7-gene functional interaction modules (31: DCLRE1A , EXO1 , KIAA0101 , KIN , PCNA , POLD3 , POLD2 ; 35: DKK3 , FABP3 , IRF1 , AIM2 , GBP1 , GBP2 , IRF2 ) that are associated with prognosis of ovarian cancer patients. These network modules are related to DNA repair, replication, immune and cytokine mediated signaling pathways. Conclusions The two 7-gene expression signatures may be accurate predictors of clinical outcome in patients with ovarian cancer and has the potential to develop new therapeutic strategies for ovarian cancer patients.
机译:背景技术本研究旨在基于基因表达数据筛选多基因生物标志物,以预测卵巢癌患者的存活。方法从癌症基因组Atlas(TCGA)数据库中收集卵巢癌样品的两种微阵列数据。训练集中的数据用于构建反应组功能交互网络,然后进行马尔可夫聚类,监督主成分,Cox比例危害模型,以筛选具有明显预后的相关模块。通过测试集进一步评估每个模块的每个模块的显着能力。进行基因本体(GO)功能和途径注释,以确定基因的作用在卵巢癌中的每个模块中。结果基于网络的方法鉴定了两种7-基因功能相互作用模块(31:DCLRE1A,EXO1,KIAA0101,KIN,PCNA,POLD3,POLD2; 35:DKK3,FABP3,IRF1,AIM2,GBP1,GBP2,IRF2)。卵巢癌患者的预后。这些网络模块与DNA修复,复制,免疫和细胞因子介导的信号传导途径有关。结论两种7-基因表达签名可能是卵巢癌患者临床结果的准确预测因子,并有可能为卵巢癌患者开发新的治疗策略。

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