Gargiuli Chiara, De Cecco Loris, Mariancini Andrea, Iannò Maria Federica, Micali Arianna, Mancinelli Elisa, Boeri Mattia, Sozzi Gabriella, Dugo Matteo, Sensi Marialuisa
Platform of Integrated Biology Unit, Department of Applied Research and Technology Development, Fondazione IRCCS Istituto Nazionale dei Tumori, Milan, Italy.
Tumor Genomics Unit, Department of Research, Fondazione IRCCS Istituto Nazionale dei Tumori, Milan, Italy.
Front Oncol. 2022 Jul 19;12:911613. doi: 10.3389/fonc.2022.911613. eCollection 2022.
Circulating microRNAs (ct-miRs) are promising cancer biomarkers. This study focuses on platform comparison to assess performance variability, agreement in the assignment of a miR signature classifier (MSC), and concordance for the identification of cancer-associated miRs in plasma samples from non-small cell lung cancer (NSCLC) patients.
A plasma cohort of 10 NSCLC patients and 10 healthy donors matched for clinical features and MSC risk level was profiled for miR expression using two sequencing-based and three quantitative reverse transcription PCR (qPCR)-based platforms. Intra- and inter-platform variations were examined by correlation and concordance analysis. The MSC risk levels were compared with those estimated using a reference method. Differentially expressed ct-miRs were identified among NSCLC patients and donors, and the diagnostic value of those dysregulated in patients was assessed by receiver operating characteristic curve analysis. The downregulation of miR-150-5p was verified by qPCR. The Cancer Genome Atlas (TCGA) lung carcinoma dataset was used for validation at the tissue level.
The intra-platform reproducibility was consistent, whereas the highest values of inter-platform correlations were among qPCR-based platforms. MSC classification concordance was >80% for four platforms. The dysregulation and discriminatory power of miR-150-5p and miR-210-3p were documented. Both were significantly dysregulated also on TCGA tissue-originated profiles from lung cell carcinoma in comparison with normal samples.
Overall, our studies provide a large performance analysis between five different platforms for miR quantification, indicate the solidity of MSC classifier, and identify two noninvasive biomarkers for NSCLC.
循环微小RNA(ct-miRs)是很有前景的癌症生物标志物。本研究聚焦于平台比较,以评估性能变异性、miR特征分类器(MSC)赋值的一致性,以及在非小细胞肺癌(NSCLC)患者血浆样本中鉴定癌症相关miRs的一致性。
使用两个基于测序的平台和三个基于定量逆转录PCR(qPCR)的平台,对10例NSCLC患者和10例临床特征及MSC风险水平匹配的健康供体的血浆队列进行miR表达谱分析。通过相关性和一致性分析检查平台内和平台间的变异。将MSC风险水平与使用参考方法估计的风险水平进行比较。在NSCLC患者和供体中鉴定差异表达的ct-miRs,并通过受试者工作特征曲线分析评估患者中那些失调miRs的诊断价值。通过qPCR验证miR-150-5p的下调。使用癌症基因组图谱(TCGA)肺癌数据集在组织水平进行验证。
平台内的可重复性是一致的,而基于qPCR的平台之间的平台间相关性最高。四个平台的MSC分类一致性>80%。记录了miR-150-5p和miR-210-3p的失调和鉴别能力。与正常样本相比,它们在TCGA肺癌组织来源的图谱上也显著失调。
总体而言,我们的研究对五个不同的miR定量平台进行了大规模性能分析,表明了MSC分类器的可靠性,并鉴定了两种NSCLC的非侵入性生物标志物。