| Literature DB >> 19267032 |
Uzma Raja1, Tara Mitchell, Timothy Day, J Michael Hardin.
Abstract
Healthcare information systems collect massive amounts of textual and numeric information about patients, visits, prescriptions, physician notes and more. The information encapsulated within electronic clinical records could lead to improved healthcare quality, promotion of clinical and research initiatives, fewer medical errors and lower costs. However, the documents that comprise the health record vary in complexity, length and use of technical vocabulary. This makes knowledge discovery complex. Commercial text mining tools provide a unique opportunity to extract critical information from textual data archives. In this paper, we share our experience of a collaborative research project to develop predictive models by text mining electronic clinical records. We provide an overview of the text mining process, examples of existing studies, experiences of our collaborative project and future opportunities.Entities:
Mesh:
Year: 2008 PMID: 19267032
Source DB: PubMed Journal: J Healthc Inf Manag ISSN: 1099-811X