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微小RNA(miRNA)靶标的预测

Prediction of miRNA targets.

作者信息

Oulas Anastasis, Karathanasis Nestoras, Louloupi Annita, Pavlopoulos Georgios A, Poirazi Panayiota, Kalantidis Kriton, Iliopoulos Ioannis

机构信息

Institute of Marine Biology, Biotechnology and Aquaculture-HCMR, Heraklion, Crete, Greece.

出版信息

Methods Mol Biol. 2015;1269:207-29. doi: 10.1007/978-1-4939-2291-8_13.

DOI:10.1007/978-1-4939-2291-8_13
PMID:25577381
Abstract

Computational methods for miRNA target prediction are currently undergoing extensive review and evaluation. There is still a great need for improvement of these tools and bioinformatics approaches are looking towards high-throughput experiments in order to validate predictions. The combination of large-scale techniques with computational tools will not only provide greater credence to computational predictions but also lead to the better understanding of specific biological questions. Current miRNA target prediction tools utilize probabilistic learning algorithms, machine learning methods and even empirical biologically defined rules in order to build models based on experimentally verified miRNA targets. Large-scale protein downregulation assays and next-generation sequencing (NGS) are now being used to validate methodologies and compare the performance of existing tools. Tools that exhibit greater correlation between computational predictions and protein downregulation or RNA downregulation are considered the state of the art. Moreover, efficiency in prediction of miRNA targets that are concurrently verified experimentally provides additional validity to computational predictions and further highlights the competitive advantage of specific tools and their efficacy in extracting biologically significant results. In this review paper, we discuss the computational methods for miRNA target prediction and provide a detailed comparison of methodologies and features utilized by each specific tool. Moreover, we provide an overview of current state-of-the-art high-throughput methods used in miRNA target prediction.

摘要

用于miRNA靶标预测的计算方法目前正在接受广泛的审查和评估。这些工具仍有很大的改进空间,生物信息学方法正着眼于高通量实验以验证预测结果。大规模技术与计算工具的结合不仅会为计算预测提供更高的可信度,还能让人更好地理解特定的生物学问题。当前的miRNA靶标预测工具利用概率学习算法、机器学习方法甚至基于生物学经验定义的规则,以便基于经过实验验证的miRNA靶标构建模型。大规模蛋白质下调分析和下一代测序(NGS)现在正被用于验证方法并比较现有工具的性能。在计算预测与蛋白质下调或RNA下调之间表现出更高相关性的工具被视为当前的先进水平。此外,对同时经过实验验证的miRNA靶标的预测效率为计算预测提供了额外的有效性,并进一步突出了特定工具的竞争优势及其在提取生物学重要结果方面的功效。在这篇综述文章中,我们讨论了miRNA靶标预测的计算方法,并对每种特定工具所使用的方法和特征进行了详细比较。此外,我们还概述了目前用于miRNA靶标预测的先进高通量方法。

相似文献

1
Prediction of miRNA targets.微小RNA(miRNA)靶标的预测
Methods Mol Biol. 2015;1269:207-29. doi: 10.1007/978-1-4939-2291-8_13.
2
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Prediction and verification of microRNA targets by MovingTargets, a highly adaptable prediction method.通过MovingTargets(一种高度适应性的预测方法)对微小RNA靶标的预测与验证。
BMC Genomics. 2005 Jun 8;6:88. doi: 10.1186/1471-2164-6-88.
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Prediction of microRNA targets in Caenorhabditis elegans using a self-organizing map.利用自组织映射预测秀丽隐杆线虫中的 microRNA 靶标。
Bioinformatics. 2011 May 1;27(9):1247-54. doi: 10.1093/bioinformatics/btr144. Epub 2011 Mar 21.
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A combinatorial in silico approach for microRNA-target identification: Order out of chaos.基于组合的计算方法进行 microRNA 靶基因识别:从混沌中寻找秩序。
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Progress in miRNA target prediction and identification.微小RNA靶标预测与鉴定的进展。
Sci China C Life Sci. 2009 Dec;52(12):1123-30. doi: 10.1007/s11427-009-0159-4. Epub 2009 Dec 17.
10
Computational Resources for Prediction and Analysis of Functional miRNA and Their Targetome.用于功能性miRNA及其靶标组预测与分析的计算资源
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MiRNA-610 acts as a tumour suppressor to depress the cisplatin resistance in hepatocellular carcinoma through targeted silencing of hepatoma-derived growth factor.
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