Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

DrugComb

General information

URL: https://drugcomb.org
Full name: drug combination
Description: DrugComb where the results of drug combination screening studies are accumulated, standardized and harmonized. Through the data portal, we provided a web server to analyze and visualize users' own drug combination screening data.
Year founded: 2019
Last update: 2021-01-01
Version: v 1.5
Accessibility:
Accessible
Country/Region: Finland

Classification & Tag

Data type:
Data object:
NA
Database category:
Major species:
Keywords:

Contact information

University/Institution: University of Helsinki
Address: Institute for Molecular Medicine Finland, Helsinki Life Science Institute, University of Helsinki, Finland
City:
Province/State:
Country/Region: Finland
Contact name (PI/Team): Jing Tang
Contact email (PI/Helpdesk): jing.tang@helsinki.fi

Publications

31066443
DrugComb: an integrative cancer drug combination data portal. [PMID: 31066443]
Zagidullin B, Aldahdooh J, Zheng S, Wang W, Wang Y, Saad J, Malyutina A, Jafari M, Tanoli Z, Pessia A, Tang J.

Drug combination therapy has the potential to enhance efficacy, reduce dose-dependent toxicity and prevent the emergence of drug resistance. However, discovery of synergistic and effective drug combinations has been a laborious and often serendipitous process. In recent years, identification of combination therapies has been accelerated due to the advances in high-throughput drug screening, but informatics approaches for systems-level data management and analysis are needed. To contribute toward this goal, we created an open-access data portal called DrugComb (https://drugcomb.fimm.fi) where the results of drug combination screening studies are accumulated, standardized and harmonized. Through the data portal, we provided a web server to analyze and visualize users' own drug combination screening data. The users can also effectively participate a crowdsourcing data curation effect by depositing their data at DrugComb. To initiate the data repository, we collected 437 932 drug combinations tested on a variety of cancer cell lines. We showed that linear regression approaches, when considering chemical fingerprints as predictors, have the potential to achieve high accuracy of predicting the sensitivity of drug combinations. All the data and informatics tools are freely available in DrugComb to enable a more efficient utilization of data resources for future drug combination discovery.

Nucleic Acids Res. 2019:47(W1) | 159 Citations (from Europe PMC, 2025-12-13)

Ranking

All databases:
637/6895 (90.776%)
Interaction:
113/1194 (90.62%)
Health and medicine:
159/1738 (90.909%)
637
Total Rank
148
Citations
24.667
z-index

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Record metadata

Created on: 2019-10-27
Curated by:
Qianpeng Li [2022-05-15]
furrukh mehmood [2019-11-13]
Amjad Ali [2019-10-27]