Zhang Yanqiu, Sui Jing, Shen Xian, Li Chengyun, Yao Wenzhuo, Hong Weiwei, Peng Hui, Pu Yuepu, Yin Lihong, Liang Geyu
Key Laboratory of Environmental Medicine Engineering, Ministry of Education, School of Public Health, Southeast University, Nanjing, Jiangsu 210009, P.R. China.
Oncol Rep. 2017 Jun;37(6):3543-3553. doi: 10.3892/or.2017.5612. Epub 2017 Apr 28.
Lung cancer is one of the most lethal malignancies worldwide. To reduce the high morbidity and mortality of the disease, sensitive and specific biomarkers for early detection are urgently needed. Tumor-specific microRNAs (miRNAs) seem to be potential biomarkers for the early diagnosis and treatment of cancer. In this study, the microarray of miRNAs and mRNAs on the same samples was performed and the intersection taken with The Cancer Genome Atlas (TCGA) lung cancer miRNA/RNAseq dataset. Then, miRNA-mRNA regulatory network was constructed to identify miRNA candidates associated with lung cancer through integrating gene expression and miRNA-target prediction. Furthermore, the expression levels of miRNA candidates were validated by stem-loop real-time reverse transcription PCR (qRT-PCR) in larger lung cancer population. The relationship between signature miRNAs and the risk of lung cancer were assessed by conditional logistic regression analysis. Diagnostic value of these miRNAs was determined by areas under receiver operating characteristic curves (ROC). The Affymetrix microarray analysis identified a total of 116 miRNAs and 502 mRNAs that could distinguish lung tumor tissues from adjacent non-tumor tissues, of which 70 miRNAs and 136 mRNAs were upregulated, while 46 miRNAs and 366 mRNAs were downregulated, respectively. In combination with TCGA analysis, we identified 32 miRNAs and 377 mRNAs related to lung cancer. Then, 28 key miRNAs related to 61 inter-section mRNAs were identified by miRNA-mRNA network analysis. The miRNA function analysis was indicative of that 18 upregulated and 10 downregulated miRNAs involved in signaling pathways related to Environmental Information Processing and Human Diseases. Population result showed that the expression of 7 miRNAs (miR-205-5p, miR-3917, miR-30a-3p, miR-30a-5p, miR-30c-2-3p, miR-30d-5p and miR-27a-5p) was consistent with the analysis result of microarray and TCGA. In addition, upregulation of miR-205-5p, miR-3917 and downregulation of miR-30a-3p, miR-30a-5p, miR-30c-2-3p, miR-30d-5p, miR-27a-5p increased the risk of lung cancer by conditional logistic regression analysis. The diagnostic accuracy of miR-205-5p, miR-3917, miR-27a-5p, miR-30a-3p, miR-30a-5p, miR-30c-2-3p, miR-30d-5p showed that their corresponding AUCs were 0.728, 0.661, 0.637, 0.758, 0.772, 0.734, 0.776, respectively. Therefore, there are a set of signature miRNAs which may be promising biomarkers for the early screening of high-risk populations and early diagnosis of lung cancer.
肺癌是全球最致命的恶性肿瘤之一。为降低该疾病的高发病率和死亡率,迫切需要用于早期检测的敏感且特异的生物标志物。肿瘤特异性微小RNA(miRNA)似乎是癌症早期诊断和治疗的潜在生物标志物。在本研究中,对同一样本进行了miRNA和mRNA的微阵列分析,并与癌症基因组图谱(TCGA)肺癌miRNA/RNA测序数据集进行交集分析。然后,通过整合基因表达和miRNA靶标预测构建miRNA-mRNA调控网络,以鉴定与肺癌相关的miRNA候选物。此外,通过茎环实时逆转录PCR(qRT-PCR)在更大的肺癌人群中验证了miRNA候选物的表达水平。通过条件逻辑回归分析评估特征性miRNA与肺癌风险之间的关系。这些miRNA的诊断价值通过受试者操作特征曲线(ROC)下的面积来确定。Affymetrix微阵列分析共鉴定出116个miRNA和502个mRNA,它们可区分肺肿瘤组织与相邻的非肿瘤组织,其中70个miRNA和136个mRNA上调,而46个miRNA和366个mRNA下调。结合TCGA分析,我们鉴定出32个与肺癌相关的miRNA和377个mRNA。然后,通过miRNA-mRNA网络分析鉴定出与61个交集mRNA相关的28个关键miRNA。miRNA功能分析表明,18个上调和10个下调的miRNA参与了与环境信息处理和人类疾病相关的信号通路。人群结果显示,7个miRNA(miR-205-5p、miR-3917、miR-30a-3p、miR-30a-5p、miR-30c-2-3p、miR-30d-5p和miR-27a-5p)的表达与微阵列和TCGA的分析结果一致。此外,通过条件逻辑回归分析,miR-205-5p、miR-3917的上调以及miR-30a-3p、miR-30a-5p、miR-30c-2-3p、miR-30d-5p、miR-27a-5p的下调增加了肺癌风险。miR-205-5p、miR-3917、miR-27a-5p、miR-30a-3p、miR-30a-5p、miR-30c-2-3p、miR-30d-5p的诊断准确性表明,它们相应的曲线下面积(AUC)分别为0.728、0.661、0.637、0.758、0.772、0.734、0.776。因此,存在一组特征性miRNA,它们可能是用于高危人群早期筛查和肺癌早期诊断的有前景的生物标志物。