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Database Commons

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Database Profile

EVLncRNAs

General information

URL: https://www.sdklab-biophysics-dzu.net/EVLncRNAs2/
Full name: a database of manually curated experimentally validated lncRNAs
Description: EVLncRNAs collects all published experimentally validated functional lncRNAs (EVlncRNA) of different species, and provides the disease-associated and functional lncRNAs, as well as the interactions of lncRNAs with other biomacromolecules. EVLncRNAs version2.0 contains 4,010 EVlncRNAs in 124 species.
Year founded: 2018
Last update: 2023-11-11
Version: v3.0
Accessibility:
Accessible
Country/Region: China

Contact information

University/Institution: Dezhou University
Address: Shandong Provincial Key Laboratory of Biophysics, Institute of Biophysics, Dezhou University, Dezhou 253023, China
City: Dezhou
Province/State: Shandong
Country/Region: China
Contact name (PI/Team): Jihua Wang
Contact email (PI/Helpdesk): jhw25336@126.com

Publications

37953349
EVLncRNAs 3.0: an updated comprehensive database for manually curated functional long non-coding RNAs validated by low-throughput experiments. [PMID: 37953349]
Bailing Zhou, Baohua Ji, Congcong Shen, Xia Zhang, Xue Yu, Pingping Huang, Ru Yu, Hongmei Zhang, Xianghua Dou, Qingshuai Chen, Qiangcheng Zeng, Xiaoxin Wang, Zanxia Cao, Guodong Hu, Shicai Xu, Huiying Zhao, Yuedong Yang, Yaoqi Zhou, Jihua Wang

Long noncoding RNAs (lncRNAs) have emerged as crucial regulators across diverse biological processes and diseases. While high-throughput sequencing has enabled lncRNA discovery, functional characterization remains limited. The EVLncRNAs database is the first and exclusive repository for all experimentally validated functional lncRNAs from various species. After previous releases in 2018 and 2021, this update marks a major expansion through exhaustive manual curation of nearly 25 000 publications from 15 May 2020, to 15 May 2023. It incorporates substantial growth across all categories: a 154% increase in functional lncRNAs, 160% in associated diseases, 186% in lncRNA-disease associations, 235% in interactions, 138% in structures, 234% in circular RNAs, 235% in resistant lncRNAs and 4724% in exosomal lncRNAs. More importantly, it incorporated additional information include functional classifications, detailed interaction pathways, homologous lncRNAs, lncRNA locations, COVID-19, phase-separation and organoid-related lncRNAs. The web interface was substantially improved for browsing, visualization, and searching. ChatGPT was tested for information extraction and functional overview with its limitation noted. EVLncRNAs 3.0 represents the most extensive curated resource of experimentally validated functional lncRNAs and will serve as an indispensable platform for unravelling emerging lncRNA functions. The updated database is freely available at https://www.sdklab-biophysics-dzu.net/EVLncRNAs3/.

Nucleic Acids Res. 2024:52(D1) | 12 Citations (from Europe PMC, 2025-12-13)
33221906
EVLncRNAs 2.0: an updated database of manually curated functional long non-coding RNAs validated by low-throughput experiments. [PMID: 33221906]
Zhou B, Ji B, Liu K, Hu G, Wang F, Chen Q, Yu R, Huang P, Ren J, Guo C, Zhao H, Zhang H, Zhao D, Li Z, Zeng Q, Yu J, Bian Y, Cao Z, Xu S, Yang Y, Zhou Y, Wang J.

Long non-coding RNAs (lncRNAs) play important functional roles in many diverse biological processes. However, not all expressed lncRNAs are functional. Thus, it is necessary to manually collect all experimentally validated functional lncRNAs (EVlncRNA) with their sequences, structures, and functions annotated in a central database. The first release of such a database (EVLncRNAs) was made using the literature prior to 1 May 2016. Since then (till 15 May 2020), 19 245 articles related to lncRNAs have been published. In EVLncRNAs 2.0, these articles were manually examined for a major expansion of the data collected. Specifically, the number of annotated EVlncRNAs, associated diseases, lncRNA-disease associations, and interaction records were increased by 260%, 320%, 484% and 537%, respectively. Moreover, the database has added several new categories: 8 lncRNA structures, 33 exosomal lncRNAs, 188 circular RNAs, and 1079 drug-resistant, chemoresistant, and stress-resistant lncRNAs. All records have checked against known retraction and fake articles. This release also comes with a highly interactive visual interaction network that facilitates users to track the underlying relations among lncRNAs, miRNAs, proteins, genes and other functional elements. Furthermore, it provides links to four new bioinformatics tools with improved data browsing and searching functionality. EVLncRNAs 2.0 is freely available at https://www.sdklab-biophysics-dzu.net/EVLncRNAs2/.

Nucleic Acids Res. 2021:49(D1) | 49 Citations (from Europe PMC, 2025-12-13)
31345106
Predicting functional long non-coding RNAs validated by low throughput experiments. [PMID: 31345106]
Zhou B, Yang Y, Zhan J, Dou X, Wang J, Zhou Y.

High-throughput techniques have uncovered hundreds and thousands of long non-coding RNAs (lncRNAs). Among them, only a tiny fraction has experimentally validated functions (EVlncRNAs) by low-throughput methods. What fraction of lncRNAs from high-throughput experiments (HTlncRNAs) is truly functional is an active subject of debate. Here, we developed the first method to distinguish EVlncRNAs from HTlncRNAs and mRNAs by using Support Vector Machines and found that EVlncRNAs can be well separated from HTlncRNAs and mRNAs with 0.6 for Matthews correlation coefficient, 64% for sensitivity, and 81% for precision for the independent human test set. The most useful features for classification are related to sequence conservations at RNA (for separating from HTlncRNAs) and protein (for separating from mRNA) levels. The method is found to be robust as the human-RNA-trained model is applicable to independent mouse RNAs with similar accuracy and to a lesser extent to plant RNAs. The method can recover newly discovered EVlncRNAs with high sensitivity. Its application to randomly selected 2000 human HTlncRNAs indicates that the majority of HTlncRNAs is probably non-functional but a large portion (nearly 30%) are likely functional. In other words, there is an ample number of lncRNAs whose specific biological roles are yet to be discovered. The method developed here is expected to speed up and reduce the cost of the discovery by prioritizing potentially functional lncRNAs prior to experimental validation. EVlncRNA-pred is available as a web server at http://biophy.dzu.edu.cn/lncrnapred/index.html . All datasets used in this study can be obtained from the same website.

RNA Biol. 2019:16(11) | 7 Citations (from Europe PMC, 2025-12-13)
28985416
EVLncRNAs: a manually curated database for long non-coding RNAs validated by low-throughput experiments. [PMID: 28985416]
Zhou B, Zhao H, Yu J, Guo C, Dou X, Song F, Hu G, Cao Z, Qu Y, Yang Y, Zhou Y, Wang J.

Long non-coding RNAs (lncRNAs) play important functional roles in various biological processes. Early databases were utilized to deposit all lncRNA candidates produced by high-throughput experimental and/or computational techniques to facilitate classification, assessment and validation. As more lncRNAs are validated by low-throughput experiments, several databases were established for experimentally validated lncRNAs. However, these databases are small in scale (with a few hundreds of lncRNAs only) and specific in their focuses (plants, diseases or interactions). Thus, it is highly desirable to have a comprehensive dataset for experimentally validated lncRNAs as a central repository for all of their structures, functions and phenotypes. Here, we established EVLncRNAs by curating lncRNAs validated by low-throughput experiments (up to 1 May 2016) and integrating specific databases (lncRNAdb, LncRANDisease, Lnc2Cancer and PLNIncRBase) with additional functional and disease-specific information not covered previously. The current version of EVLncRNAs contains 1543 lncRNAs from 77 species that is 2.9 times larger than the current largest database for experimentally validated lncRNAs. Seventy-four percent lncRNA entries are partially or completely new, comparing to all existing experimentally validated databases. The established database allows users to browse, search and download as well as to submit experimentally validated lncRNAs. The database is available at http://biophy.dzu.edu.cn/EVLncRNAs.

Nucleic Acids Res. 2018:46(D1) | 58 Citations (from Europe PMC, 2025-12-13)

Ranking

All databases:
865/6895 (87.469%)
Gene genome and annotation:
295/2021 (85.453%)
Literature:
85/577 (85.442%)
865
Total Rank
121
Citations
17.286
z-index

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Record metadata

Created on: 2018-01-27
Curated by:
Shiting Wang [2024-08-21]
Xinyu Zhou [2023-09-19]
Xinyu Zhou [2023-09-14]
Lina Ma [2023-03-05]
Lina Ma [2023-02-17]
Dong Zou [2021-10-19]
Ghulam Abbas [2019-09-26]
Lina Ma [2018-04-25]
Fatima Batool [2018-04-25]
Fatima Batool [2018-04-10]
Yang Zhang [2018-01-27]