Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

Egas

General information

URL: https://demo.bmd-software.com/egas/
Full name:
Description: Egas is a web-based platform for biomedical text mining and collaborative curation, supporting manual and automatic annotation of concepts and relations.
Year founded: 2014
Last update: 2016-06-07
Version: v1.0
Accessibility:
Accessible
Country/Region: Portugal

Classification & Tag

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

Contact information

University/Institution: University of Aveiro
Address: 3810-193 Aveiro, Portugal
City: Aveiro
Province/State:
Country/Region: Portugal
Contact name (PI/Team): David Campos
Contact email (PI/Helpdesk): david.campos@bmd-software.com

Publications

27278817
Mining clinical attributes of genomic variants through assisted literature curation in Egas. [PMID: 27278817]
Matos S, Campos D, Pinho R, Silva RM, Mort M, Cooper DN, Oliveira JL.

The veritable deluge of biological data over recent years has led to the establishment of a considerable number of knowledge resources that compile curated information extracted from the literature and store it in structured form, facilitating its use and exploitation. In this article, we focus on the curation of inherited genetic variants and associated clinical attributes, such as zygosity, penetrance or inheritance mode, and describe the use of Egas for this task. Egas is a web-based platform for text-mining assisted literature curation that focuses on usability through modern design solutions and simple user interactions. Egas offers a flexible and customizable tool that allows defining the concept types and relations of interest for a given annotation task, as well as the ontologies used for normalizing each concept type. Further, annotations may be performed on raw documents or on the results of automated concept identification and relation extraction tools. Users can inspect, correct or remove automatic text-mining results, manually add new annotations, and export the results to standard formats. Egas is compatible with the most recent versions of Google Chrome, Mozilla Firefox, Internet Explorer and Safari and is available for use at https://demo.bmd-software.com/egas/Database URL: https://demo.bmd-software.com/egas/. © The Author(s) 2016. Published by Oxford University Press.

Database (Oxford). 2016:2016() | 5 Citations (from Europe PMC, 2025-12-20)
24923820
Egas: a collaborative and interactive document curation platform. [PMID: 24923820]
Campos D, Lourenço J, Matos S, Oliveira JL.

With the overwhelming amount of biomedical textual information being produced, several manual curation efforts have been set up to extract and store concepts and their relationships into structured resources. As manual annotation is a demanding and expensive task, computerized solutions were developed to perform such tasks automatically. However, high-end information extraction techniques are still not widely used by biomedical research communities, mainly because of the lack of standards and limitations in usability. Interactive annotation tools intend to fill this gap, taking advantage of automatic techniques and existing knowledge bases to assist expert curators in their daily tasks. This article presents Egas, a web-based platform for biomedical text mining and assisted curation with highly usable interfaces for manual and automatic in-line annotation of concepts and relations. A comprehensive set of de facto standard knowledge bases are integrated and indexed to provide straightforward concept normalization features. Real-time collaboration and conversation functionalities allow discussing details of the annotation task as well as providing instant feedback of curator's interactions. Egas also provides interfaces for on-demand management of the annotation task settings and guidelines, and supports standard formats and literature services to import and export documents. By taking advantage of Egas, we participated in the BioCreative IV interactive annotation task, targeting the assisted identification of protein-protein interactions described in PubMed abstracts related to neuropathological disorders. When evaluated by expert curators, it obtained positive scores in terms of usability, reliability and performance. These results, together with the provided innovative features, place Egas as a state-of-the-art solution for fast and accurate curation of information, facilitating the task of creating and updating knowledge bases and annotated resources. Database URL: http://bioinformatics.ua.pt/egas. © The Author(s) 2014. Published by Oxford University Press.

Database (Oxford). 2014:2014() | 14 Citations (from Europe PMC, 2025-12-20)

Ranking

All databases:
4385/6895 (36.418%)
Literature:
377/577 (34.835%)
4385
Total Rank
19
Citations
1.727
z-index

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Record metadata

Created on: 2015-06-20
Curated by:
Shixiang Sun [2017-03-28]
Lina Ma [2016-03-28]
Mengwei Li [2016-02-20]
Jian Sang [2015-12-08]
Jian Sang [2015-06-28]
Jian Sang [2015-06-27]