Albert Szent-Györgyi Clinical Center, Albert Szent-Györgyi Medical School, Institute of Pathology, University of Szeged, Szeged, Hungary.
Pathol Oncol Res. 2022 May 2;28:1610345. doi: 10.3389/pore.2022.1610345. eCollection 2022.
Routine molecular tumour diagnostics are augmented by DNA-based qualitative and quantitative molecular techniques detecting mutations of DNA. However, in the past decade, it has been unravelled that the phenotype of cancer, as it's an extremely complex disease, cannot be fully described and explained by single or multiple genetic variants affecting only the coding regions of the genes. Moreover, studying the manifestation of these somatic mutations and the altered transcription programming-driven by genomic rearrangements, dysregulation of DNA methylation and epigenetic landscape-standing behind the tumorigenesis and detecting these changes could provide a more detailed characterisation of the tumour phenotype. Consequently, novel comparative cancer diagnostic pipelines, including DNA- and RNA-based approaches, are needed for a global assessment of cancer patients. Here we report, that by monitoring the expression patterns of key tumour driver genes by qPCR, the normal and the tumorous samples can be separated into distinct categories. Furthermore, we also prove that by examining the transcription signatures of frequently affected genes at , and genomic regions, the ccRCC (clear cell renal cell carcinoma) and non-tumorous kidney tissues can be distinguished based on the mRNA level of the selected genes. Our results open new diagnostics possibilities where the mRNA signatures of tumour drivers can supplement the DNA-based approaches providing a more precise diagnostics opportunity leading to determine more precise therapeutic protocols.
常规的分子肿瘤诊断学通过基于 DNA 的定性和定量分子技术来检测 DNA 突变进行了扩充。然而,在过去的十年中,人们已经揭示出,作为一种极其复杂的疾病,癌症的表型不能仅通过影响基因编码区的单个或多个遗传变异来完全描述和解释。此外,研究这些体细胞突变的表现以及由基因组重排、DNA 甲基化和表观遗传景观的失调驱动的转录编程改变,这些改变为肿瘤发生背后的肿瘤表型提供了更详细的特征。因此,需要包括 DNA 和 RNA 方法在内的新型癌症比较诊断管道,以对癌症患者进行全面评估。在这里,我们报告说,通过 qPCR 监测关键肿瘤驱动基因的表达模式,可以将正常和肿瘤样本分为不同的类别。此外,我们还证明,通过检查 、 和 基因组区域中经常受影响的基因的转录特征,可以根据所选基因的 mRNA 水平区分 ccRCC(透明细胞肾细胞癌)和非肿瘤性肾脏组织。我们的研究结果开辟了新的诊断可能性,其中肿瘤驱动基因的 mRNA 特征可以补充基于 DNA 的方法,提供更精确的诊断机会,从而确定更精确的治疗方案。