| Literature DB >> 29629236 |
Juan Antonio Lossio-Ventura1, William Hogan1, François Modave1, Yi Guo1, Zhe He2, Amanda Hicks1, Jiang Bian1.
Abstract
Obesity has been linked to several types of cancer. Access to adequate health information activates people's participation in managing their own health, which ultimately improves their health outcomes. Nevertheless, the existing online information about the relationship between obesity and cancer is heterogeneous and poorly organized. A formal knowledge representation can help better organize and deliver quality health information. Currently, there are several efforts in the biomedical domain to convert unstructured data to structured data and store them in Semantic Web knowledge bases (KB). In this demo paper, we present, OC-2-KB (Obesity and Cancer to Knowledge Base), a system that is tailored to guide the automatic KB construction for managing obesity and cancer knowledge from free-text scientific literature (i.e., PubMed abstracts) in a systematic way. OC-2-KB has two important modules which perform the acquisition of entities and the extraction then classification of relationships among these entities. We tested the OC-2-KB system on a data set with 23 manually annotated obesity and cancer PubMed abstracts and created a preliminary KB with 765 triples. We conducted a preliminary evaluation on this sample of triples and reported our evaluation results.Entities:
Keywords: Resource Description Framework; Semantic Web knowledge base; Software; obesity and cancer
Year: 2017 PMID: 29629236 PMCID: PMC5889048 DOI: 10.1109/BIBM.2017.8217845
Source DB: PubMed Journal: Proceedings (IEEE Int Conf Bioinformatics Biomed) ISSN: 2156-1125