相同片段,不同疾病:利用功能和丰度数据库分析不同疾病的相同tRNA片段。

IF 3.6 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Adesupo Adetowubo, Sathyanarayanan Vaidhyanathan, Andrey Grigoriev
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引用次数: 0

摘要

背景/目的:转移rna衍生片段(tRFs)是一种小的非编码rna,越来越多地参与基因调控和疾病,但它们的靶特异性和疾病相关性仍然知之甚少。这是一项探索性研究,调查了在不同疾病背景下报道的相同tRF序列的现象,并评估了实验结果与基于靶标和基于丰度的tRF数据库预测之间的一致性。方法:从最近的系统评价中选择至少两个同行评议的疾病研究中具有相同序列的5个trf。从文献中提取其有效靶点和疾病关联。使用三个面向目标的数据库:tatDB、tRFTar和tsRFun来交叉引用基序和预测目标。同时,使用基于tcga的丰度数据,在OncotRF和MINTbase中评估癌症相关trf的丰度富集。结果:在5个trf中,只有LeuAAG-001-N-3p-68-85的实验数据与tatDB和tRFTar预测完全一致。其他4个靶点在基序/结合区至少部分重叠。来自MINTbase和OncotRF的tRF丰度数据显示富集不一致,只有AlaAGC-002-N-3p-58-75与其实验验证的癌症类型一致。大多数功能相关的trf在仅丰度的数据库中没有得到充分体现。结论:由于分析的tRFs数量有限,本研究主要是作为一项试点分析,旨在产生假设并指导未来的深入研究,而不是提供全面的结论。但是,我们确实说明了如何利用当前可用的数据库对trf进行分析。当发现tRF或motif匹配时,基于目标的数据库更紧密地反映了机制细节的实验证据。然而,所有数据库类型都是不完整的,包括以丰度为重点的工具,这些工具往往无法捕捉trf的疾病特异性调节作用。这些发现强调了使用集成数据源进行tRF注释的重要性。作为一项初步分析,该研究提供了关于相同的tRF序列在不同疾病背景下如何发挥不同功能的见解,突出了需要进一步研究的领域,同时指出了仅依靠表达数据推断功能相关性的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Same Fragments, Different Diseases: Analysis of Identical tRNA Fragments Across Diseases Utilizing Functional and Abundance-Based Databases.

Background/Objectives: Transfer RNA-derived fragments (tRFs) are small non-coding RNAs increasingly implicated in gene regulation and disease, yet their target specificity and disease relevance remain poorly understood. This is an exploratory study that investigates the phenomenon of identical tRF sequences reported in distinct disease contexts and evaluates the consistency between experimental findings and predictions from both target-based and abundance-based tRF databases. Methods: Five tRFs with identical sequences across at least two peer-reviewed disease studies were selected from a recent systematic review. Their validated targets and disease associations were extracted from the literature. Motifs and predicted targets were cross-referenced using three target-oriented databases: tatDB, tRFTar, and tsRFun. In parallel, the abundance enrichment of cancer-associated tRFs was assessed in OncotRF and MINTbase using TCGA-based abundance data. Results: Among the five tRFs, only LeuAAG-001-N-3p-68-85 showed complete alignment between experimental data and both tatDB and tRFTar predictions. Most of the other four displayed at least partial overlaps in motif/binding regions with some of validated targets. tRF abundance data from MINTbase and OncotRF showed inconsistent enrichment, with only AlaAGC-002-N-3p-58-75 exhibiting concordance with its experimentally validated cancer type. Most functionally relevant tRFs were not strongly represented in abundance-only databases. Conclusions: Given the limited number of tRFs analyzed, this study serves primarily as a pilot analysis designed to generate hypotheses and guide future in-depth research, rather than offering comprehensive conclusions. We did, however, illustrate how the analysis of tRFs can benefit from utilizing currently available databases. Target-based databases more closely reflected experimental evidence for mechanistic details when a tRF or a motif match is found. Yet all database types are incomplete, including the abundance-focused tools, which often fail to capture disease-specific regulatory roles of tRFs. These findings underscore the importance of using integrated data sources for tRF annotation. As a pilot analysis, the study provides insights into how identical tRF sequences might function differently across disease contexts, highlighting areas for further investigation while pointing out the limitations of relying on expression data alone to infer functional relevance.

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来源期刊
Non-Coding RNA
Non-Coding RNA Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
6.70
自引率
4.70%
发文量
74
审稿时长
10 weeks
期刊介绍: Functional studies dealing with identification, structure-function relationships or biological activity of: small regulatory RNAs (miRNAs, siRNAs and piRNAs) associated with the RNA interference pathway small nuclear RNAs, small nucleolar and tRNAs derived small RNAs other types of small RNAs, such as those associated with splice junctions and transcription start sites long non-coding RNAs, including antisense RNAs, long ''intergenic'' RNAs, intronic RNAs and ''enhancer'' RNAs other classes of RNAs such as vault RNAs, scaRNAs, circular RNAs, 7SL RNAs, telomeric and centromeric RNAs regulatory functions of mRNAs and UTR-derived RNAs catalytic and allosteric (riboswitch) RNAs viral, transposon and repeat-derived RNAs bacterial regulatory RNAs, including CRISPR RNAS Analysis of RNA processing, RNA binding proteins, RNA signaling and RNA interaction pathways: DICER AGO, PIWI and PIWI-like proteins other classes of RNA binding and RNA transport proteins RNA interactions with chromatin-modifying complexes RNA interactions with DNA and other RNAs the role of RNA in the formation and function of specialized subnuclear organelles and other aspects of cell biology intercellular and intergenerational RNA signaling RNA processing structure-function relationships in RNA complexes RNA analyses, informatics, tools and technologies: transcriptomic analyses and technologies development of tools and technologies for RNA biology and therapeutics Translational studies involving long and short non-coding RNAs: identification of biomarkers development of new therapies involving microRNAs and other ncRNAs clinical studies involving microRNAs and other ncRNAs.
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