| Literature DB >> 29854193 |
Shervin Malmasi1,2, Naoshi Hosomura1,2, Lee-Shing Chang1,2, C Justin Brown1, Stephen Skentzos3, Alexander Turchin1,2.
Abstract
Healthcare quality research is a fundamental task that involves assessing treatment patterns and measuring the associated patient outcomes to identify potential areas for improving healthcare. While both qualitative and quantitative approaches are used, a major obstacle for the quantitative approach is that many useful healthcare quality indicators are buried within provider narrative notes, requiring expensive and laborious manual chart review to identify and measure them. Information extraction is a key Natural Language Processing (NLP) task for discovering and mining critical knowledge buried in unstructured clinical data. Nevertheless, widespread adoption of NLP has yet to materialize; the technical skills required for the development or use of such software present a major barrier for medical researchers wishing to employ these methods. In this paper we introduce Canary, a free and open source solution designed for users without NLP and technical expertise and apply it to four tasks, aiming to measure the frequency of: (1) insulin decline; (2) statin medication decline; (3) adverse reactions to statins; and (3) bariatric surgery counselling. Our results demonstrate that this approach facilitates mining of unstructured data with high accuracy, enabling the extraction of actionable healthcare quality insights from free-text data sources.Entities:
Mesh:
Substances:
Year: 2018 PMID: 29854193 PMCID: PMC5977624
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076