| Literature DB >> 18999067 |
Berry de Bruijn1, Simona Carini, Svetlana Kiritchenko, Joel Martin, Ida Sim.
Abstract
Clinical trials are one of the most valuable sources of scientific evidence for improving the practice of medicine. The Trial Bank project aims to improve structured access to trial findings by including formalized trial information into a knowledge base. Manually extracting trial information from published articles is costly, but automated information extraction techniques can assist. The current study highlights a single architecture to extract a wide array of information elements from full-text publications of randomized clinical trials (RCTs). This architecture combines a text classifier with a weak regular expression matcher. We tested this two-stage architecture on 88 RCT reports from 5 leading medical journals, extracting 23 elements of key trial information such as eligibility rules, sample size, intervention, and outcome names. Results prove this to be a promising avenue to help critical appraisers, systematic reviewers, and curators quickly identify key information elements in published RCT articles.Mesh:
Year: 2008 PMID: 18999067 PMCID: PMC2655966
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076