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a catalog of worldwide biological databases

Database Profile

Argo

General information

URL: http://argo.nactem.ac.uk/
Full name: ARGO-A Web-based Text Mining Workbench
Description: Argo is an integrative,interactive,text mining-based workbench supporting curation.
Year founded: 2012
Last update: 2016-05-17
Version: V1.0
Accessibility:
Accessible
Country/Region: United Kingdom

Classification & Tag

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

Contact information

University/Institution: University of Manchester
Address: 131 Princess Street, Manchester, M1 7DN
City: Manchester
Province/State:
Country/Region: United Kingdom
Contact name (PI/Team): Riza Batista-Navarro
Contact email (PI/Helpdesk): riza.batista@manchester.ac.uk

Publications

27189607
Argo: enabling the development of bespoke workflows and services for disease annotation. [PMID: 27189607]
Batista-Navarro R, Carter J, Ananiadou S.

Argo (http://argo.nactem.ac.uk) is a generic text mining workbench that can cater to a variety of use cases, including the semi-automatic annotation of literature. It enables its technical users to build their own customised text mining solutions by providing a wide array of interoperable and configurable elementary components that can be seamlessly integrated into processing workflows. With Argo's graphical annotation interface, domain experts can then make use of the workflows' automatically generated output to curate information of interest.With the continuously rising need to understand the aetiology of diseases as well as the demand for their informed diagnosis and personalised treatment, the curation of disease-relevant information from medical and clinical documents has become an indispensable scientific activity. In the Fifth BioCreative Challenge Evaluation Workshop (BioCreative V), there was substantial interest in the mining of literature for disease-relevant information. Apart from a panel discussion focussed on disease annotations, the chemical-disease relations (CDR) track was also organised to foster the sharing and advancement of disease annotation tools and resources.This article presents the application of Argo's capabilities to the literature-based annotation of diseases. As part of our participation in BioCreative V's User Interactive Track (IAT), we demonstrated and evaluated Argo's suitability to the semi-automatic curation of chronic obstructive pulmonary disease (COPD) phenotypes. Furthermore, the workbench facilitated the development of some of the CDR track's top-performing web services for normalising disease mentions against the Medical Subject Headings (MeSH) database. In this work, we highlight Argo's support for developing various types of bespoke workflows ranging from ones which enabled us to easily incorporate information from various databases, to those which train and apply machine learning-based concept recognition models, through to user-interactive ones which allow human curators to manually provide their corrections to automatically generated annotations. Our participation in the BioCreative V challenges shows Argo's potential as an enabling technology for curating disease and phenotypic information from literature.Database URL: http://argo.nactem.ac.uk. © The Author(s) 2016. Published by Oxford University Press.

Database (Oxford). 2016:2016() | 12 Citations (from Europe PMC, 2026-04-04)
22434844
Argo: an integrative, interactive, text mining-based workbench supporting curation. [PMID: 22434844]
Rak R, Rowley A, Black W, Ananiadou S.

Curation of biomedical literature is often supported by the automatic analysis of textual content that generally involves a sequence of individual processing components. Text mining (TM) has been used to enhance the process of manual biocuration, but has been focused on specific databases and tasks rather than an environment integrating TM tools into the curation pipeline, catering for a variety of tasks, types of information and applications. Processing components usually come from different sources and often lack interoperability. The well established Unstructured Information Management Architecture is a framework that addresses interoperability by defining common data structures and interfaces. However, most of the efforts are targeted towards software developers and are not suitable for curators, or are otherwise inconvenient to use on a higher level of abstraction. To overcome these issues we introduce Argo, an interoperable, integrative, interactive and collaborative system for text analysis with a convenient graphic user interface to ease the development of processing workflows and boost productivity in labour-intensive manual curation. Robust, scalable text analytics follow a modular approach, adopting component modules for distinct levels of text analysis. The user interface is available entirely through a web browser that saves the user from going through often complicated and platform-dependent installation procedures. Argo comes with a predefined set of processing components commonly used in text analysis, while giving the users the ability to deposit their own components. The system accommodates various areas and levels of user expertise, from TM and computational linguistics to ontology-based curation. One of the key functionalities of Argo is its ability to seamlessly incorporate user-interactive components, such as manual annotation editors, into otherwise completely automatic pipelines. As a use case, we demonstrate the functionality of an in-built manual annotation editor that is well suited for in-text corpus annotation tasks. DATABASE URL: http://www.nactem.ac.uk/Argo.

Database (Oxford). 2012:2012() | 35 Citations (from Europe PMC, 2026-04-04)

Ranking

All databases:
2897/6932 (58.223%)
Literature:
262/577 (54.766%)
2897
Total Rank
47
Citations
3.357
z-index

Community reviews

Not Rated
Data quality & quantity:
Content organization & presentation
System accessibility & reliability:

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Related Databases

Citing
Cited by

Record metadata

Created on: 2015-06-20
Curated by:
Nashaiman Pervaiz [2018-12-28]
huma shireen [2018-08-16]
Dong Zou [2018-03-09]
Shixiang Sun [2017-03-28]
Mengwei Li [2015-11-26]
Lina Ma [2015-06-28]
Mengwei Li [2015-06-26]