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Database Profile

EPEK

General information

URL: https://cb.imsc.res.in/epek
Full name: Ectopic Pregnancy Expression Knowledgebase
Description: EPEK contains curated information on 217 genes, 120 proteins, 7 miRNAs, 17 metabolites and 3 SNPs involved in ectopic pregnancy. The genes and proteins were mapped to their respective standard identifiers - NCBI gene IDs and Uniprot IDs - while the metabolites were mapped to their PubChem and CAS IDs.
Year founded: 2022
Last update: 2022-11-20
Version: v1.0
Accessibility:
Accessible
Country/Region: India

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Contact information

University/Institution: The Institute of Mathematical Sciences
Address: The Institute of Mathematical Sciences (IMSc), Chennai, India
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Country/Region: India
Contact name (PI/Team): Areejit Samal
Contact email (PI/Helpdesk): asamal@imsc.res.in

Publications

37030102
EPEK: Creation and analysis of an Ectopic Pregnancy Expression Knowledgebase. [PMID: 37030102]
Ananya Natarajan, Nikhil Chivukula, Gokul Balaji Dhanakoti, Ajaya Kumar Sahoo, Janani Ravichandran, Areejit Samal

Ectopic pregnancy (EP) is one of the leading causes of maternal mortality, where the fertilized embryo grows outside of the uterus. Recent experiments on mice have uncovered the importance of genetic factors in the transport of embryos inside the uterus. In the past, efforts have been made to identify possible gene or protein markers in EP in humans through multiple expression studies. Although there exist comprehensive gene resources for other maternal health disorders, there is no specific resource that compiles the genes associated with EP from such expression studies. Here, we address that knowledge gap by creating a computational resource, Ectopic Pregnancy Expression Knowledgebase (EPEK), that involves manual compilation and curation of expression profiles of EP in humans from published articles. In EPEK, we compiled information on 314 differentially expressed genes, 17 metabolites, and 3 SNPs associated with EP. Computational analyses on the gene set from EPEK showed the implication of cellular signaling processes in EP. We also identified possible exosome markers that could be clinically relevant in the diagnosis of EP. In a nutshell, EPEK is the first and only dedicated resource on the expression profile of EP in humans. EPEK is accessible at https://cb.imsc.res.in/epek.

Comput Biol Chem. 2023:104() | 0 Citations (from Europe PMC, 2026-05-30)

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Record metadata

Created on: 2023-08-28
Curated by:
Yue Qi [2023-09-12]
Yuanyuan Cheng [2023-09-06]
Xinyu Zhou [2023-08-28]