DocumentCode
814526
Title
Applying semantic Web technologies to drug safety determination
Author
Stephens, Susie ; Morales, Alfredo ; Quinlan, Matthew
Volume
21
Issue
1
fYear
2006
Firstpage
82
Lastpage
88
Abstract
Ensuring drug safety is of paramount importance to the life sciences industry. It´s critical that drugs are able not only to achieve the desired result but also to do so without harmful side effects. By identifying problems as early as possible in the drug discovery and development process, life sciences companies can avoid drug safety sagas, such as a recent example that concerned COX-2 inhibitors. Unfortunately, drug safety problems are often revealed only during clinical trials or occasionally after marketing. These challenges are becoming more acute as medicines are targeted to defined patient populations. The life sciences industry can use semantic Web technologies to integrate data more effectively across all drug discovery and development business units, thereby providing a more supportive environment for the early detection of safety-related issues. Effective integration would enable genomic data and patient profiles to be more easily related to safety, thus providing: 1) a simpler framework for determining risk-benefit for individual patients in particular treatment regimens, 2) a better mechanism to distribute new data relating to safety throughout the organization, and 3) a better decision-making environment to determine which drugs to pursue. Furthermore, semantic Web inferencing capabilities enable an intelligent decision support system or autonomous agent to reason about combined domain-specific and industry-specific knowledge and act on the conclusions drawn from this inferencing process.
Keywords
decision support systems; drugs; pharmaceutical industry; safety; semantic Web; autonomous agent; decision-making environment; drug safety determination; genomic data; intelligent decision support system; life sciences industry; semantic Web technology; Bioinformatics; Clinical trials; Decision making; Drugs; Genomics; Inhibitors; Medical treatment; Pharmaceutical technology; Safety; Semantic Web; RDF data model; Semantic Web; drug safety;
fLanguage
English
Journal_Title
Intelligent Systems, IEEE
Publisher
ieee
ISSN
1541-1672
Type
jour
DOI
10.1109/MIS.2006.2
Filename
1588806
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