| Literature DB >> 31478922 |
Maxim Topaz1, Ludmila Murga, Ofrit Bar-Bachar, Margaret McDonald, Kathryn Bowles.
Abstract
This study develops and evaluates an open-source software (called NimbleMiner) that allows clinicians to interact with word embedding models with a goal of creating lexicons of similar terms. As a case study, the system was used to identify similar terms for patient fall history from homecare visit notes (N = 1 149 586) extracted from a large US homecare agency. Several experiments with parameters of word embedding models were conducted to identify the most time-effective and high-quality model. Models with larger word window width sizes (n = 10) that present users with about 50 top potentially similar terms for each (true) term validated by the user were most effective. NimbleMiner can assist in building a thorough vocabulary of fall history terms in about 2 hours. For domains like nursing, this approach could offer a valuable tool for rapid lexicon enrichment and discovery.Entities:
Mesh:
Year: 2019 PMID: 31478922 DOI: 10.1097/CIN.0000000000000557
Source DB: PubMed Journal: Comput Inform Nurs ISSN: 1538-2931 Impact factor: 1.985