Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

DriverDB

General information

URL: http://ngs.ym.edu.tw/driverdb
Full name:
Description: DriverDB is a cancer omics database which incorporates somatic mutation, RNA expression, miRNA expression, methylation, copy number variation and clinical data in addition to annotation bases. This database also uses published bioinformatics algorithms to identify driver genes and present them with different molecular features; there are three functions, ‘Cancer‘, ‘Gene’, and ‘Customized-Analysis’, to help researchers visualize the relationships between cancers and driver genes.
Year founded: 2014
Last update:
Version: v4.0
Accessibility:
Accessible
Country/Region: China

Classification & Tag

Data type:
Data object:
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Keywords:

Contact information

University/Institution: China Medical University
Address: Graduate Institute of Biomedical Science, China Medical University, Taichung 40403, Taiwan.
City: Taichung
Province/State: Taiwan
Country/Region: China
Contact name (PI/Team): Wei-Chung Cheng
Contact email (PI/Helpdesk): cwc0702@gmail.com

Publications

37956338
DriverDBv4: a multi-omics integration database for cancer driver gene research. [PMID: 37956338]
Chia-Hsin Liu, Yo-Liang Lai, Pei-Chun Shen, Hsiu-Cheng Liu, Meng-Hsin Tsai, Yu-De Wang, Wen-Jen Lin, Fang-Hsin Chen, Chia-Yang Li, Shu-Chi Wang, Mien-Chie Hung, Wei-Chung Cheng

Advancements in high-throughput technology offer researchers an extensive range of multi-omics data that provide deep insights into the complex landscape of cancer biology. However, traditional statistical models and databases are inadequate to interpret these high-dimensional data within a multi-omics framework. To address this limitation, we introduce DriverDBv4, an updated iteration of the DriverDB cancer driver gene database (http://driverdb.bioinfomics.org/). This updated version offers several significant enhancements: (i) an increase in the number of cohorts from 33 to 70, encompassing approximately 24 000 samples; (ii) inclusion of proteomics data, augmenting the existing types of omics data and thus expanding the analytical scope; (iii) implementation of multiple multi-omics algorithms for identification of cancer drivers; (iv) new visualization features designed to succinctly summarize high-context data and redesigned existing sections to accommodate the increased volume of datasets and (v) two new functions in Customized Analysis, specifically designed for multi-omics driver identification and subgroup expression analysis. DriverDBv4 facilitates comprehensive interpretation of multi-omics data across diverse cancer types, thereby enriching the understanding of cancer heterogeneity and aiding in the development of personalized clinical approaches. The database is designed to foster a more nuanced understanding of the multi-faceted nature of cancer.

Nucleic Acids Res. 2024:52(D1) | 18 Citations (from Europe PMC, 2025-12-13)
31701128
DriverDBv3: a multi-omics database for cancer driver gene research. [PMID: 31701128]
Liu SH, Shen PC, Chen CY, Hsu AN, Cho YC, Lai YL, Chen FH, Li CY, Wang SC, Chen M, Chung IF, Cheng WC.

An integrative multi-omics database is needed urgently, because focusing only on analysis of one-dimensional data falls far short of providing an understanding of cancer. Previously, we presented DriverDB, a cancer driver gene database that applies published bioinformatics algorithms to identify driver genes/mutations. The updated DriverDBv3 database (http://ngs.ym.edu.tw/driverdb) is designed to interpret cancer omics' sophisticated information with concise data visualization. To offer diverse insights into molecular dysregulation/dysfunction events, we incorporated computational tools to define CNV and methylation drivers. Further, four new features, CNV, Methylation, Survival, and miRNA, allow users to explore the relations from two perspectives in the 'Cancer' and 'Gene' sections. The 'Survival' panel offers not only significant survival genes, but gene pairs synergistic effects determine. A fresh function, 'Survival Analysis' in 'Customized-analysis,' allows users to investigate the co-occurring events in user-defined gene(s) by mutation status or by expression in a specific patient group. Moreover, we redesigned the web interface and provided interactive figures to interpret cancer omics' sophisticated information, and also constructed a Summary panel in the 'Cancer' and 'Gene' sections to visualize the features on multi-omics levels concisely. DriverDBv3 seeks to improve the study of integrative cancer omics data by identifying driver genes and contributes to cancer biology.

Nucleic Acids Res. 2020:48(D1) | 144 Citations (from Europe PMC, 2025-12-13)
30542988
Identification of Cancer Driver Genes from a Custom Set of Next Generation Sequencing Data. [PMID: 30542988]
Liu SH, Cheng WC.

Next generation sequencing (NGS) has become the norm of cancer genomic researches. Large-scale cancer sequencing projects seek to comprehensively uncover mutated genes that confer a selective advantage for cancer cells. Numerous computational algorithms have been developed to find genes that drive cancer based on their patterns of mutation in a patient cohort. It has been noted that the distinct features of driver gene alterations in different subgroups are based on clinical characteristics. Previously, we have developed a database, DriverDB, to integrate all public cancer sequencing data and to identify cancer driver genes according to bioinformatics tools. In this chapter, we describe the use of the function "Meta-Analysis" in DriverDB that offers a list of clinical characteristics to define samples and provides a high degree of freedom for researchers to utilize the huge amounts of sequencing data. Moreover, researchers can use the "Gene" section to explore a single driver gene in all cancers by different kinds of aspects after identifying the specific driver genes by "Meta-Analysis." DriverDB is available at http://ngs.ym.edu.tw/driverdb/ .

Methods Mol Biol. 2019:1907() | 0 Citations (from Europe PMC, 2025-12-13)
26635391
DriverDBv2: a database for human cancer driver gene research. [PMID: 26635391]
Chung IF, Chen CY, Su SC, Li CY, Wu KJ, Wang HW, Cheng WC.

We previously presented DriverDB, a database that incorporates ?6000 cases of exome-seq data, in addition to annotation databases and published bioinformatics algorithms dedicated to driver gene/mutation identification. The database provides two points of view, 'Cancer' and 'Gene', to help researchers visualize the relationships between cancers and driver genes/mutations. In the updated DriverDBv2 database (http://ngs.ym.edu.tw/driverdb) presented herein, we incorporated >9500 cancer-related RNA-seq datasets and >7000 more exome-seq datasets from The Cancer Genome Atlas (TCGA), International Cancer Genome Consortium (ICGC), and published papers. Seven additional computational algorithms (meaning that the updated database contains 15 in total), which were developed for driver gene identification, are incorporated into our analysis pipeline, and the results are provided in the 'Cancer' section. Furthermore, there are two main new features, 'Expression' and 'Hotspot', in the 'Gene' section. 'Expression' displays two expression profiles of a gene in terms of sample types and mutation types, respectively. 'Hotspot' indicates the hotspot mutation regions of a gene according to the results provided by four bioinformatics tools. A new function, 'Gene Set', allows users to investigate the relationships among mutations, expression levels and clinical data for a set of genes, a specific dataset and clinical features. © The Author(s) 2015. Published by Oxford University Press on behalf of Nucleic Acids Research.

Nucleic Acids Res. 2016:44(D1) | 75 Citations (from Europe PMC, 2025-12-13)
24214964
DriverDB: an exome sequencing database for cancer driver gene identification. [PMID: 24214964]
Cheng WC, Chung IF, Chen CY, Sun HJ, Fen JJ, Tang WC, Chang TY, Wong TT, Wang HW.

Exome sequencing (exome-seq) has aided in the discovery of a huge amount of mutations in cancers, yet challenges remain in converting oncogenomics data into information that is interpretable and accessible for clinical care. We constructed DriverDB (http://ngs.ym.edu.tw/driverdb/), a database which incorporates 6079 cases of exome-seq data, annotation databases (such as dbSNP, 1000 Genome and Cosmic) and published bioinformatics algorithms dedicated to driver gene/mutation identification. We provide two points of view, 'Cancer' and 'Gene', to help researchers to visualize the relationships between cancers and driver genes/mutations. The 'Cancer' section summarizes the calculated results of driver genes by eight computational methods for a specific cancer type/dataset and provides three levels of biological interpretation for realization of the relationships between driver genes. The 'Gene' section is designed to visualize the mutation information of a driver gene in five different aspects. Moreover, a 'Meta-Analysis' function is provided so researchers may identify driver genes in customer-defined samples. The novel driver genes/mutations identified hold potential for both basic research and biotech applications.

Nucleic Acids Res. 2014:42(Database issue) | 60 Citations (from Europe PMC, 2025-12-13)

Ranking

All databases:
605/6895 (91.24%)
Gene genome and annotation:
216/2021 (89.362%)
Genotype phenotype and variation:
79/1005 (92.239%)
Interaction:
109/1194 (90.955%)
Expression:
100/1347 (92.65%)
Health and medicine:
149/1738 (91.484%)
605
Total Rank
290
Citations
26.364
z-index

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Record metadata

Created on: 2020-11-07
Curated by:
Wenzhuo Cheng [2024-08-22]
Lin Liu [2022-08-11]
Dong Zou [2021-10-22]
Lin Liu [2021-03-24]
Chang Liu [2020-11-24]
Chang Liu [2020-11-07]