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Database Profile

CD-REST

General information

URL: http://clinicalnlptool.com/cdr/cdr.html
Full name: Chemical Disease Relation Extraction SysTem
Description: an end-to-end system for extracting chemical-induced disease relations in biomedical literature
Year founded: 2016
Last update: 2016-03-25
Version:
Accessibility:
Accessible
Country/Region: United States

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Contact information

University/Institution: University of Texas Health Science Center at Houston
Address: School of Biomedical Informatics
City: Houston
Province/State: Texas
Country/Region: United States
Contact name (PI/Team): Hua Xu
Contact email (PI/Helpdesk): hua.xu@uth.tmc.edu

Publications

27016700
CD-REST: a system for extracting chemical-induced disease relation in literature. [PMID: 27016700]
Xu J, Wu Y, Zhang Y, Wang J, Lee HJ, Xu H.

Mining chemical-induced disease relations embedded in the vast biomedical literature could facilitate a wide range of computational biomedical applications, such as pharmacovigilance. The BioCreative V organized a Chemical Disease Relation (CDR) Track regarding chemical-induced disease relation extraction from biomedical literature in 2015. We participated in all subtasks of this challenge. In this article, we present our participation system Chemical Disease Relation Extraction SysTem (CD-REST), an end-to-end system for extracting chemical-induced disease relations in biomedical literature. CD-REST consists of two main components: (1) a chemical and disease named entity recognition and normalization module, which employs the Conditional Random Fields algorithm for entity recognition and a Vector Space Model-based approach for normalization; and (2) a relation extraction module that classifies both sentence-level and document-level candidate drug-disease pairs by support vector machines. Our system achieved the best performance on the chemical-induced disease relation extraction subtask in the BioCreative V CDR Track, demonstrating the effectiveness of our proposed machine learning-based approaches for automatic extraction of chemical-induced disease relations in biomedical literature. The CD-REST system provides web services using HTTP POST request. The web services can be accessed fromhttp://clinicalnlptool.com/cdr The online CD-REST demonstration system is available athttp://clinicalnlptool.com/cdr/cdr.html. Database URL:http://clinicalnlptool.com/cdr;http://clinicalnlptool.com/cdr/cdr.html. © The Author(s) 2016. Published by Oxford University Press.

Database (Oxford). 2016:2016() | 38 Citations (from Europe PMC, 2025-12-13)

Ranking

All databases:
2659/6895 (61.45%)
Health and medicine:
668/1738 (61.623%)
2659
Total Rank
38
Citations
4.222
z-index

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Record metadata

Created on: 2017-03-27
Curated by:
Lin Liu [2022-09-20]
Lina Ma [2017-06-02]
Shixiang Sun [2017-03-27]