Glogovitis Ilias, Yahubyan Galina, Würdinger Thomas, Koppers-Lalic Danijela, Baev Vesselin
Faculty of Biology, University of Plovdiv, Tzar Assen 24, 4000 Plovdiv, Bulgaria.
Department of Neurosurgery, Cancer Center Amsterdam, Amsterdam University Medical Centers, VU University Medical Center, De Boelelaan 1117, 1081 HV Amsterdam, The Netherlands.
Biomolecules. 2020 Dec 30;11(1):41. doi: 10.3390/biom11010041.
Numerous studies on microRNAs (miRNA) in cancer and other diseases have been accompanied by diverse computational approaches and experimental methods to predict and validate miRNA biological and clinical significance as easily accessible disease biomarkers. In recent years, the application of the next-generation deep sequencing for the analysis and discovery of novel RNA biomarkers has clearly shown an expanding repertoire of diverse sequence variants of mature miRNAs, or isomiRs, resulting from alternative post-transcriptional processing events, and affected by (patho)physiological changes, population origin, individual's gender, and age. Here, we provide an in-depth overview of currently available bioinformatics approaches for the detection and visualization of both mature miRNA and cognate isomiR sequences. An attempt has been made to present in a systematic way the advantages and downsides of in silico approaches in terms of their sensitivity and accuracy performance, as well as used methods, workflows, and processing steps, and end output dataset overlapping issues. The focus is given to the challenges and pitfalls of isomiR expression analysis. Specifically, we address the availability of tools enabling research without extensive bioinformatics background to explore this fascinating corner of the small RNAome universe that may facilitate the discovery of new and more reliable disease biomarkers.
针对癌症和其他疾病中微小RNA(miRNA)的众多研究,伴随着各种计算方法和实验手段,以预测和验证miRNA作为易于获取的疾病生物标志物的生物学和临床意义。近年来,新一代深度测序技术在新型RNA生物标志物分析与发现中的应用,清晰地展现出成熟miRNA多样的序列变体(即isomiRs)不断增加,这些变体源于转录后加工事件的多样性,且受(病理)生理变化、人群来源、个体性别和年龄的影响。在此,我们深入概述了目前用于检测和可视化成熟miRNA及相关isomiR序列的生物信息学方法。我们试图系统地呈现计算机方法在灵敏度、准确性表现、使用方法、工作流程、处理步骤以及最终输出数据集重叠问题等方面的优缺点。重点关注isomiR表达分析的挑战与陷阱。具体而言,我们探讨了一些工具的可用性,这些工具能让没有广泛生物信息学背景的研究人员探索小RNA组这个迷人领域,从而可能有助于发现新的、更可靠的疾病生物标志物。