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小RNA靶点:预测工具与高通量分析的进展

Small RNA Targets: Advances in Prediction Tools and High-Throughput Profiling.

作者信息

Grešová Katarína, Alexiou Panagiotis, Giassa Ilektra-Chara

机构信息

Central European Institute of Technology (CEITEC), Masaryk University, 62500 Brno, Czech Republic.

National Centre of Biomolecular Research (NCBR), Faculty of Science, Masaryk University, 62500 Brno, Czech Republic.

出版信息

Biology (Basel). 2022 Dec 11;11(12):1798. doi: 10.3390/biology11121798.

DOI:10.3390/biology11121798
PMID:36552307
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9775672/
Abstract

MicroRNAs (miRNAs) are an abundant class of small non-coding RNAs that regulate gene expression at the post-transcriptional level. They are suggested to be involved in most biological processes of the cell primarily by targeting messenger RNAs (mRNAs) for cleavage or translational repression. Their binding to their target sites is mediated by the Argonaute (AGO) family of proteins. Thus, miRNA target prediction is pivotal for research and clinical applications. Moreover, transfer-RNA-derived fragments (tRFs) and other types of small RNAs have been found to be potent regulators of Ago-mediated gene expression. Their role in mRNA regulation is still to be fully elucidated, and advancements in the computational prediction of their targets are in their infancy. To shed light on these complex RNA-RNA interactions, the availability of good quality high-throughput data and reliable computational methods is of utmost importance. Even though the arsenal of computational approaches in the field has been enriched in the last decade, there is still a degree of discrepancy between the results they yield. This review offers an overview of the relevant advancements in the field of bioinformatics and machine learning and summarizes the key strategies utilized for small RNA target prediction. Furthermore, we report the recent development of high-throughput sequencing technologies, and explore the role of non-miRNA AGO driver sequences.

摘要

微小RNA(miRNA)是一类丰富的小非编码RNA,它们在转录后水平上调节基因表达。据推测,它们主要通过靶向信使RNA(mRNA)进行切割或翻译抑制,参与细胞的大多数生物学过程。它们与靶位点的结合由Argonaute(AGO)蛋白家族介导。因此,miRNA靶标预测对于研究和临床应用至关重要。此外,已发现转运RNA衍生片段(tRF)和其他类型的小RNA是AGO介导的基因表达的有效调节因子。它们在mRNA调节中的作用仍有待充分阐明,其靶标的计算预测进展尚处于起步阶段。为了阐明这些复杂的RNA-RNA相互作用,高质量高通量数据和可靠计算方法的可用性至关重要。尽管该领域的计算方法库在过去十年中有所丰富,但它们产生的结果之间仍存在一定程度的差异。本综述概述了生物信息学和机器学习领域的相关进展,并总结了用于小RNA靶标预测的关键策略。此外,我们报告了高通量测序技术的最新发展,并探讨了非miRNA AGO驱动序列的作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7b15/9775672/25ab9360dbcf/biology-11-01798-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7b15/9775672/25ab9360dbcf/biology-11-01798-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7b15/9775672/25ab9360dbcf/biology-11-01798-g001.jpg

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