Social and Semantic Web Technologies for the Text-To-Knowledge Translation Process in Biomedicine
Metadatos
Mostrar el registro completo del ítemEditorial
Intech
Materia
Inteligencia artificial Artificial intelligence
Fecha
2011Referencia bibliográfica
Carlos Cano... [et al.] (2011). Social and Semantic Web Technologies for the Text-to-Knowledge Translation Process in Biomedicine, Biomedical Engineering, Trends, Research and Technologies, Dr. Sylwia Olsztynska (Ed.), ISBN: 978-953-307-514-3, InTech, Available from: http://www.intechopen.com/books/biomedical-engineering-trends-research-and-technologies/social-andsemantic- web-technologies-for-the-text-to-knowledge-translation-process-in-biomedicine
Patrocinador
P08-TIC-4299 of J. A; Sevilla and TIN2009-13489 of DGICT, MadridResumen
Currently, biomedical research critically depends on knowledge availability for flexible
re-analysis and integrative post-processing. The voluminous biological data already stored in
databases, put together with the abundant molecular data resulting from the rapid adoption of
high-throughput techniques, have shown the potential to generate new biomedical discovery
through integration with knowledge from the scientific literature.
Reliable information extraction applications have been a long-sought goal of the biomedical
text mining community. Both named entity recognition and conceptual analysis are needed in
order to map the objects and concepts represented by natural language texts into a rigorous
encoding, with direct links to online resources that explicitly expose those concepts semantics
(see Figure 1).