Wu Wei, Huang Bo, Yan Yan, Zhong Zhi-Qiang
Department of Gastroenterology (40th Ward), Daqing Oilfield General Hospital, Daqing, China.
Department of Ultrasonics, Daqing Oilfield General Hospital, Daqing, China.
Braz J Med Biol Res. 2018;51(6):e6801. doi: 10.1590/1414-431x20186801. Epub 2018 Apr 19.
Gene networks have been broadly used to predict gene functions based on guilt by association (GBA) principle. Thus, in order to better understand the molecular mechanisms of esophageal squamous cell carcinoma (ESCC), our study was designed to use a network-based GBA method to identify the optimal gene functions for ESCC. To identify genomic bio-signatures for ESCC, microarray data of GSE20347 were first downloaded from a public functional genomics data repository of Gene Expression Omnibus database. Then, differentially expressed genes (DEGs) between ESCC patients and controls were identified using the LIMMA method. Afterwards, construction of differential co-expression network (DCN) was performed relying on DEGs, followed by gene ontology (GO) enrichment analysis based on a known confirmed database and DEGs. Eventually, the optimal gene functions were predicted using GBA algorithm based on the area under the curve (AUC) for each GO term. Overall, 43 DEGs and 67 GO terms were gained for subsequent analysis. GBA predictions demonstrated that 13 GO functions with AUC>0.7 had a good classification ability. Significantly, 6 out of 13 GO terms yielded AUC>0.8, which were determined as the optimal gene functions. Interestingly, there were two GO categories with AUC>0.9, which included cell cycle checkpoint (AUC=0.91648), and mitotic sister chromatid segregation (AUC=0.91597). Our findings highlight the clinical implications of cell cycle checkpoint and mitotic sister chromatid segregation in ESCC progression and provide the molecular foundation for developing therapeutic targets.
基因网络已被广泛用于基于关联有罪(GBA)原则预测基因功能。因此,为了更好地理解食管鳞状细胞癌(ESCC)的分子机制,我们的研究旨在使用基于网络的GBA方法来识别ESCC的最佳基因功能。为了识别ESCC的基因组生物特征,首先从基因表达综合数据库的公共功能基因组学数据存储库中下载了GSE20347的微阵列数据。然后,使用LIMMA方法识别ESCC患者和对照之间的差异表达基因(DEG)。之后,基于DEG构建差异共表达网络(DCN),随后基于已知的确认数据库和DEG进行基因本体(GO)富集分析。最终,基于每个GO术语的曲线下面积(AUC)使用GBA算法预测最佳基因功能。总体而言,获得了43个DEG和67个GO术语用于后续分析。GBA预测表明,13个AUC>0.7的GO功能具有良好的分类能力。值得注意的是,13个GO术语中有6个产生的AUC>0.8,这些被确定为最佳基因功能。有趣的是,有两个GO类别AUC>0.9,其中包括细胞周期检查点(AUC=0.91648)和有丝分裂姐妹染色单体分离(AUC=0.91597)。我们的研究结果突出了细胞周期检查点和有丝分裂姐妹染色单体分离在ESCC进展中的临床意义,并为开发治疗靶点提供了分子基础。