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TextHunter--A User Friendly Tool for Extracting Generic Concepts from Free Text in Clinical Research.

2014·44 Zitationen·PubMedOpen Access
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44

Zitationen

6

Autoren

2014

Jahr

Abstract

Observational research using data from electronic health records (EHR) is a rapidly growing area, which promises both increased sample size and data richness - therefore unprecedented study power. However, in many medical domains, large amounts of potentially valuable data are contained within the free text clinical narrative. Manually reviewing free text to obtain desired information is an inefficient use of researcher time and skill. Previous work has demonstrated the feasibility of applying Natural Language Processing (NLP) to extract information. However, in real world research environments, the demand for NLP skills outweighs supply, creating a bottleneck in the secondary exploitation of the EHR. To address this, we present TextHunter, a tool for the creation of training data, construction of concept extraction machine learning models and their application to documents. Using confidence thresholds to ensure high precision (>90%), we achieved recall measurements as high as 99% in real world use cases.

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Autoren

Institutionen

Themen

Topic ModelingBiomedical Text Mining and OntologiesMachine Learning in Healthcare
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