Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

PTMsigDB

General information

URL: https://github.com/broadinstitute/ssGSEA2.0
Full name:
Description: PTMsigDB, a database of modification site-specific signatures of perturbations, kinase activities and signaling pathways curated from more than 2,500 publications. We adapted the widely used single sample Gene Set Enrichment Analysis approach to utilize PTMsigDB, enabling PTM Signature Enrichment Analysis (PTM-SEA) of quantitative MS data.
Year founded: 2019
Last update:
Version:
Accessibility:
Accessible
Country/Region: United States

Classification & Tag

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Contact information

University/Institution: Broad Institute
Address: From the ‡Broad Institute of MIT and Harvard, Cambridge Massachusetts 02142
City:
Province/State:
Country/Region: United States
Contact name (PI/Team): Mani DR
Contact email (PI/Helpdesk): manidr@broad.mit.edu

Publications

30563849
A Curated Resource for Phosphosite-specific Signature Analysis. [PMID: 30563849]
Karsten Krug, Philipp Mertins, Bin Zhang, Peter Hornbeck, Rajesh Raju, Rushdy Ahmad, Matthew Szucs, Filip Mundt, Dominique Forestier, Judit Jane-Valbuena, Hasmik Keshishian, Michael A Gillette, Pablo Tamayo, Jill P Mesirov, Jacob D Jaffe, Steven A Carr, D R Mani

Signaling pathways are orchestrated by post-translational modifications (PTMs) such as phosphorylation. However, pathway analysis of PTM data sets generated by mass spectrometry (MS)-based proteomics is typically performed at a gene-centric level because of the lack of appropriately curated PTM signature databases and bioinformatic tools that leverage PTM site-specific information. Here we present the first version of PTMsigDB, a database of modification site-specific signatures of perturbations, kinase activities and signaling pathways curated from more than 2,500 publications. We adapted the widely used single sample Gene Set Enrichment Analysis approach to utilize PTMsigDB, enabling ignature nrichment nalysis (PTM-SEA) of quantitative MS data. We used a well-characterized data set of epidermal growth factor (EGF)-perturbed cancer cells to evaluate our approach and demonstrated better representation of signaling events compared with gene-centric methods. We then applied PTM-SEA to analyze the phosphoproteomes of cancer cells treated with cell-cycle inhibitors and detected mechanism-of-action specific signatures of cell cycle kinases. We also applied our methods to analyze the phosphoproteomes of PI3K-inhibited human breast cancer cells and detected signatures of compounds inhibiting PI3K as well as targets downstream of PI3K (AKT, MAPK/ERK) covering a substantial fraction of the PI3K pathway. PTMsigDB and PTM-SEA can be freely accessed at https://github.com/broadinstitute/ssGSEA2.0.

Mol. Cell Proteomics. 2019:18(3) | 142 Citations (from Europe PMC, 2025-03-29)

Ranking

All databases:
496/6278 (92.115%)
Interaction:
84/1052 (92.11%)
Pathway:
34/411 (91.971%)
Health and medicine:
119/1501 (92.139%)
496
Total Rank
115
Citations
23
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Record metadata

Created on: 2019-09-25
Curated by:
Lin Liu [2022-07-28]
furrukh mehmood [2019-11-07]
furrukh mehmood [2019-10-21]
Ghulam Abbas [2019-09-25]