lncRNA 功能和靶标组的计算资源。

Q4 Biochemistry, Genetics and Molecular Biology
Anamika Thakur, Manoj Kumar
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引用次数: 0

摘要

长链非编码RNA (lncRNAs)是一类长度超过200个核苷酸的非编码RNA分子,不编码蛋白质。lncRNAs的表达失调已在多种疾病中被发现,具有治疗意义。在过去的十年中,lncRNA领域已经发表了大量的计算资源。在本章中,我们全面回顾了数据库和预测工具,即lncRNA数据库、基于机器学习的算法和利用不同技术预测lncRNA的工具。本章将重点介绍为不同生物开发的lncRNA资源的重要性,特别是对人类、小鼠、植物和其他模式生物。我们招募了重要的数据库,主要集中于与lncRNA注册表、疾病关联、差异表达、lncRNA转录组、靶标调控和所有一体化资源相关的综合信息。此外,我们还包括了lncRNA资源的更新版本。此外,还讨论了使用深度学习、支持向量机(SVM)和随机森林(RF)等算法进行lncrna的计算识别。总之,这篇全面的综述总结了重要的硅资源,使生物学家能够选择最适合他们lncRNA研究工作的工具。本章作为一个有价值的指南,强调了计算方法在理解lncrna及其在各种生物学背景下的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational Resources for lncRNA Functions and Targetome.

Long non-coding RNAs (lncRNAs) are a type of non-coding RNA molecules exceeding 200 nucleotides in length and that do not encode proteins. The dysregulated expression of lncRNAs has been identified in various diseases, holding therapeutic significance. Over the past decade, numerous computational resources have been published in the field of lncRNA. In this chapter, we have provided a comprehensive review of the databases as well as predictive tools, that is, lncRNA databases, machine learning based algorithms, and tools predicting lncRNAs utilizing different techniques. The chapter will focus on the importance of lncRNA resources developed for different organisms specifically for humans, mouse, plants, and other model organisms. We have enlisted important databases, primarily focusing on comprehensive information related to lncRNA registries, associations with diseases, differential expression, lncRNA transcriptome, target regulations, and all-in-one resources. Further, we have also included the updated version of lncRNA resources. Additionally, computational identification of lncRNAs using algorithms like Deep learning, Support Vector Machine (SVM), and Random Forest (RF) was also discussed. In conclusion, this comprehensive overview concludes by summarizing vital in silico resources, empowering biologists to choose the most suitable tools for their lncRNA research endeavors. This chapter serves as a valuable guide, emphasizing the significance of computational approaches in understanding lncRNAs and their implications in various biological contexts.

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来源期刊
Methods in molecular biology
Methods in molecular biology Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
2.00
自引率
0.00%
发文量
3536
期刊介绍: For over 20 years, biological scientists have come to rely on the research protocols and methodologies in the critically acclaimed Methods in Molecular Biology series. The series was the first to introduce the step-by-step protocols approach that has become the standard in all biomedical protocol publishing. Each protocol is provided in readily-reproducible step-by-step fashion, opening with an introductory overview, a list of the materials and reagents needed to complete the experiment, and followed by a detailed procedure that is supported with a helpful notes section offering tips and tricks of the trade as well as troubleshooting advice.
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