| Literature DB >> 33148085 |
Colin Cernik1, John Fife, Jeffrey Thompson, Lisa Harlan-Williams, Dinesh Pal Mudaranthakam2.
Abstract
One measure of research productivity within the University of Kansas Cancer Center (KU Cancer Center) is peer-reviewed publications. Considerable effort goes into searching, capturing, reviewing, storing, and reporting cancer-relevant publications. Traditionally, the method of gathering relevant information to the publications is done manually. This manuscript describes the efforts to transition KU Cancer Center's publication gathering process from a heavily manual to a more automated and efficient process. To achieve this transition in the most customized and cost-effective manner, a homegrown, automated system was developed using open source API among other software. When comparing the automated and the manual processes over several years of data, publication search and retrieval time dropped from an average of 59 h to 35 min, which would amount to a cost savings of several thousand dollars per year. The development and adoption of an automated publications search process can offer research centers great potential for less-error prone results with a savings in time and cost.Entities:
Keywords: IT healthcare evaluation; data mining; databases and data mining; health information on the Web; text mining
Mesh:
Year: 2020 PMID: 33148085 PMCID: PMC8024109 DOI: 10.1177/1460458220966816
Source DB: PubMed Journal: Health Informatics J ISSN: 1460-4582 Impact factor: 2.681