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基于miRNA-mRNA网络构建鉴定前列腺癌进展中的关键miRNA

Identification of key miRNAs in prostate cancer progression based on miRNA-mRNA network construction.

作者信息

Santo Giulia Dal, Frasca Marco, Bertoli Gloria, Castiglioni Isabella, Cava Claudia

机构信息

Institute of Molecular Bioimaging and Physiology, National Research Council (IBFM-CNR), Via F. Cervi 93, Segrate-Milan, 20090 Milan, Italy.

Department of Computer Science, Università degli Studi di Milano, Via Celoria 18, 20133 Milano, Italy.

出版信息

Comput Struct Biotechnol J. 2022 Feb 7;20:864-873. doi: 10.1016/j.csbj.2022.02.002. eCollection 2022.

Abstract

Prostate cancer (PC) is one of the major male cancers. Differential diagnosis of PC is indispensable for the individual therapy, i.e., Gleason score (GS) that describes the grade of cancer can be used to choose the appropriate therapy. However, the current techniques for PC diagnosis and prognosis are not always effective. To identify potential markers that could be used for differential diagnosis of PC, we analyzed miRNA-mRNA interactions and we build specific networks for PC onset and progression. Key differentially expressed miRNAs for each GS were selected by calculating three parameters of network topology measures: the number of their single regulated mRNAs (NSR), the number of target genes (NTG) and NSR/NTG. miRNAs that obtained a high statistically significant value of these three parameters were chosen as potential biomarkers for computational validation and pathway analysis. 20 miRNAs were identified as key candidates for PC. 8 out of 20 miRNAs () were differentially expressed in all GS and proposed as biomarkers for PC onset. In addition, "Extracellular-receptor interaction", "Focal adhesion", and "microRNAs in cancer" were significantly enriched by the differentially expressed target genes of the identified miRNAs. was found to be differentially expressed in GS 6, 7, and 8 in PC samples. 3 miRNAs were identified as PC GS-specific differentially expressed miRNAs: was identified in PC samples with GS 6, and and in PC samples with GS 9. The efficacy of 20 miRNAs as potential biomarkers was revealed with a Random Forest classification using an independent dataset. The results demonstrated our 20 miRNAs achieved a better performance (AUC: 0.73) than miRNAs selected with Boruta algorithm (AUC: 0.55), a method for the automated feature extraction. Studying miRNA-mRNA associations, key miRNAs were identified with a computational approach for PC onset and progression. Further experimental validations are needed for future translational development.

摘要

前列腺癌(PC)是主要的男性癌症之一。PC的鉴别诊断对于个体化治疗不可或缺,例如,描述癌症分级的 Gleason评分(GS)可用于选择合适的治疗方法。然而,当前用于PC诊断和预后的技术并非总是有效。为了识别可用于PC鉴别诊断的潜在标志物,我们分析了miRNA与mRNA的相互作用,并构建了PC发生和进展的特定网络。通过计算网络拓扑测量的三个参数:其单个调控mRNA的数量(NSR)、靶基因的数量(NTG)和NSR/NTG,为每个GS选择关键的差异表达miRNA。获得这三个参数统计学上显著高值的miRNA被选为潜在生物标志物用于计算验证和通路分析。20个miRNA被鉴定为PC的关键候选物。20个miRNA中的8个在所有GS中均差异表达,并被提议作为PC发生的生物标志物。此外,“细胞外受体相互作用”、“粘着斑”和“癌症中的 microRNA”被鉴定出的miRNA的差异表达靶基因显著富集。发现其在PC样本的GS 6、7和8中差异表达。3个miRNA被鉴定为PC GS特异性差异表达miRNA:在GS 6的PC样本中鉴定出,在GS 9的PC样本中鉴定出和。使用独立数据集通过随机森林分类揭示了20个miRNA作为潜在生物标志物的功效。结果表明,我们的20个miRNA(AUC:0.73)比使用Boruta算法选择的miRNA(AUC:0.55,一种自动特征提取方法)表现更好。通过计算方法研究miRNA与mRNA的关联,鉴定出了PC发生和进展的关键miRNA。未来的转化发展需要进一步的实验验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/597b/8844601/171953e2143b/ga1.jpg

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