Title
Semantic Knowledge Base Construction from Radiology Reports.
Abstract
The tremendous quantity of data stored daily in healthcare institutions demands the development of new methods to summarize and reuse available information in clinical practice. In order to leverage modern healthcare information systems, new strategies must be developed that address challenges such as extraction of relevant information, data redundancy, and the lack of associations within the data. This article proposes a pipeline to overcome these challenges in the context of medical imaging reports, by automatically extracting and linking information, and summarizing natural language reports into an ontology model. Using data from the Physionet MIMIC II database, we created a semantic knowledge base with more than 6.5 millions of triples obtained from a collection of 16,000 radiology reports.
Year
DOI
Venue
2016
10.5220/0005709503450352
HEALTHINF
Field
DocType
Citations 
Semantic memory,Information system,Health care,Ontology,Data mining,Reuse,Computer science,Semantic Web,Natural language,Data redundancy,Radiology
Conference
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Eriksson J. Melicio Monteiro1132.99
Pedro Sernadela233.80
Sérgio Matos341529.51
Carlos Costa430144.04
José Luis Oliveira576084.03