Identification of a miRNA signature as a diagnostic and prognostic marker in renal cell carcinoma

M. A. Zahid, A. Agouni
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Abstract

Clear cell renal cell carcinoma (ccRCC) is the most common subtype of renal cell carcinoma (RCC). If diagnosed in later stages, ccRCC is associated with high renal cancer related morbidity and poor prognosis. Recently, microRNAs (miRNAs) have attracted interest as potential diagnostic and prognostic biomarkers due to their important role in cancer development and progression. Availability of big omics data in the cancer genome atlas (TCGA) coupled with data mining and machine learning have revolutionized the identification of robust diagnostic and prognostic signatures in different types of cancers. In this study, we have utilized the miRNA sequencing data of 516 ccRCC patients from TCGA to identify a diagnostic and prognostic signature by using a combined approach of differential expression analysis, survival analysis and machine learning. Differential expression analysis identified 30 downregulated and 20 upregulated miRNAs in the primary tumor as compared to solid tissue normal samples. Out of these 50 differentially expressed miRNAs, higher expression of 7 and lower expression of 6 miRNAs were found to be significantly associated with poor survival when analyzed using the Kaplan-Maier survival method. Pathway enrichment analyses related to the differentially expressed miRNAs revealed that fatty acid biosynthesis was the most significantly enriched KEGG pathway while proteoglycans in cancer pathway was enriched by the highest number of survival-associated miRNAs target genes. Differential expression and association with poor survival was used as a prefilter for training a support vector machine model capable of classifying tumor samples from solid tissue normal samples with an accuracy and precision of 99.23% and 98.50%, respectively. We have identified here a nine-miRNA signature in ccRCC patients that is capable of segregating tumor from normal tissue samples with high accuracy and precision. The future validation of this classification model in in a clinical cohort will support translation of these findings into clinical practice for early detection and follow-up of ccRCC.
鉴别一个miRNA标记作为肾细胞癌的诊断和预后标志物
透明细胞肾细胞癌(ccRCC)是肾细胞癌(RCC)最常见的亚型。如果在晚期诊断,ccRCC与肾癌相关的高发病率和不良预后相关。最近,由于microRNAs在癌症发生和进展中的重要作用,其作为潜在的诊断和预后生物标志物引起了人们的兴趣。癌症基因组图谱(TCGA)中大组学数据的可用性,加上数据挖掘和机器学习,已经彻底改变了对不同类型癌症的可靠诊断和预后特征的识别。在这项研究中,我们利用来自TCGA的516例ccRCC患者的miRNA测序数据,通过差异表达分析、生存分析和机器学习相结合的方法来确定诊断和预后特征。差异表达分析发现,与实体组织正常样本相比,原发肿瘤中有30个下调的mirna和20个上调的mirna。在这50个差异表达的mirna中,当使用Kaplan-Maier生存法分析时,发现7个mirna的高表达和6个mirna的低表达与较差的生存显著相关。与差异表达的mirna相关的途径富集分析显示,脂肪酸生物合成是KEGG途径中最显著富集的途径,而癌症途径中蛋白聚糖被最多数量的生存相关mirna靶基因富集。使用差异表达和与生存差的关联作为预过滤器来训练支持向量机模型,该模型能够从实体组织正常样本中分类肿瘤样本,准确率和精密度分别为99.23%和98.50%。我们在ccRCC患者中发现了一个9 - mirna特征,能够以高精度和精密度将肿瘤从正常组织样本中分离出来。未来在临床队列中对该分类模型的验证将支持将这些发现转化为临床实践,用于ccRCC的早期发现和随访。
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