Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

COVID-19Base

General information

URL: https://covidbase-v3.vercel.app
Full name:
Description: COVID-19Base v3 has incorporated disease-gene, disease-miRNA, disease-lncRNA, and drug-PDB associations covering the largest number of biomedical entities related to COVID-19. And provides examples of and insights into different biomedical entities covered in COVID-19Base to support the research community by incorporating all of these entities under a single platform to provide evidence-based support from the literature.
Year founded: 2023
Last update:
Version: v3
Accessibility:
Accessible
Country/Region: Qatar

Classification & Tag

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Data object:
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Keywords:

Contact information

University/Institution: Hamad Bin Khalifa University
Address: College of Science and Engineering, Hamad Bin Khalifa University, Doha, Qatar
City:
Province/State:
Country/Region: Qatar
Contact name (PI/Team): Tanvir Alam
Contact email (PI/Helpdesk): talam@hbku.edu.qa

Publications

36950105
COVID-19Base v3: Update of the knowledgebase for drugs and biomedical entities linked to COVID-19. [PMID: 36950105]
Syed Abdullah Basit, Rizwan Qureshi, Saleh Musleh, Reto Guler, M Sohel Rahman, Kabir H Biswas, Tanvir Alam

COVID-19 has taken a huge toll on our lives over the last 3 years. Global initiatives put forward by all stakeholders are still in place to combat this pandemic and help us learn lessons for future ones. While the vaccine rollout was not able to curb the spread of the disease for all strains, the research community is still trying to develop effective therapeutics for COVID-19. Although Paxlovid and remdesivir have been approved by the FDA against COVID-19, they are not free of side effects. Therefore, the search for a therapeutic solution with high efficacy continues in the research community. To support this effort, in this latest version (v3) of COVID-19Base, we have summarized the biomedical entities linked to COVID-19 that have been highlighted in the scientific literature after the vaccine rollout. Eight different topic-specific dictionaries, i.e., gene, miRNA, lncRNA, PDB entries, disease, alternative medicines registered under clinical trials, drugs, and the side effects of drugs, were used to build this knowledgebase. We have introduced a BLSTM-based deep-learning model to predict the drug-disease associations that outperforms the existing model for the same purpose proposed in the earlier version of COVID-19Base. For the very first time, we have incorporated disease-gene, disease-miRNA, disease-lncRNA, and drug-PDB associations covering the largest number of biomedical entities related to COVID-19. We have provided examples of and insights into different biomedical entities covered in COVID-19Base to support the research community by incorporating all of these entities under a single platform to provide evidence-based support from the literature. COVID-19Base v3 can be accessed from: https://covidbase-v3.vercel.app/. The GitHub repository for the source code and data dictionaries is available to the community from: https://github.com/91Abdullah/covidbasev3.0.

Front Public Health. 2023:11() | 6 Citations (from Europe PMC, 2026-03-28)
33055059
Toward Preparing a Knowledge Base to Explore Potential Drugs and Biomedical Entities Related to COVID-19: Automated Computational Approach. [PMID: 33055059]
Khan JY, Khondaker MTI, Hoque IT, Al-Absi HRH, Rahman MS, Guler R, Alam T, Rahman MS.

Background

Novel coronavirus disease 2019 (COVID-19) is taking a huge toll on public health. Along with the non-therapeutic preventive measurements, scientific efforts are currently focused, mainly, on the development of vaccines and pharmacological treatment with existing drugs. Summarizing evidences from scientific literatures on the discovery of treatment plan of COVID-19 under a platform would help the scientific community to explore the opportunities in a systematic fashion.

Objective

The aim of this study is to explore the potential drugs and biomedical entities related to coronavirus related diseases, including COVID-19, that are mentioned on scientific literature through an automated computational approach.

Methods

We mined the information from publicly available scientific literature and related public resources. Six topic-specific dictionaries, including human genes, human miRNAs, diseases, Protein Databank, drugs, and drug side effects, were integrated to mine all scientific evidence related to COVID-19. We employed an automated literature mining and labeling system through a novel approach to measure the effectiveness of drugs against diseases based on natural language processing, sentiment analysis, and deep learning. We also applied the concept of cosine similarity to confidently infer the associations between diseases and genes.

Results

Based on the literature mining, we identified 1805 diseases, 2454 drugs, 1910 genes that are related to coronavirus related diseases including COVID-19. Integrating the extracted information, we developed the first knowledgebase platform dedicated to COVID-19, which highlights potential list of drugs and related biomedical entities. For COVID-19, we highlighted multiple case studies on existing drugs along with a confidence score for their applicability in the treatment plan. Based on our computational method, we found Remdesivir, Statins, Dexamethasone, and Ivermectin could be considered as potential effective drugs to improve clinical status and lower mortality in patients hospitalized with COVID-19. We also found that Hydroxychloroquine could not be considered as an effective drug for COVID-19. The resulting knowledgebase is made available as an open source tool, named COVID-19Base.

Conclusions

Proper investigation of the mined biomedical entities along with the identified interactions among those would help the research community to discover possible ways for the therapeutic treatment of COVID-19.

JMIR Med Inform. 2020:8(11) | 9 Citations (from Europe PMC, 2026-03-28)

Ranking

All databases:
3617/6932 (47.836%)
Health and medicine:
894/1755 (49.117%)
Interaction:
660/1200 (45.083%)
3617
Total Rank
14
Citations
2.333
z-index

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Record metadata

Created on: 2023-08-28
Curated by:
Yuxin Qin [2023-09-14]
Yue Qi [2023-09-12]
Yuanyuan Cheng [2023-09-05]
Xinyu Zhou [2023-08-28]