Named Entity Recognition for Electronic Health Records: A Comparison of Rule-based and Machine Learning Approaches
This work investigates multiple approaches to Named Entity Recognition (NER) for text in Electronic Health Record (EHR) data. In particular, we look into the application of (i) rule-based, (ii) deep learning and (iii) transfer learning systems for the task of NER on brain imaging reports with a focu...
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Zusammenfassung: | This work investigates multiple approaches to Named Entity Recognition (NER)
for text in Electronic Health Record (EHR) data. In particular, we look into
the application of (i) rule-based, (ii) deep learning and (iii) transfer
learning systems for the task of NER on brain imaging reports with a focus on
records from patients with stroke. We explore the strengths and weaknesses of
each approach, develop rules and train on a common dataset, and evaluate each
system's performance on common test sets of Scottish radiology reports from two
sources (brain imaging reports in ESS -- Edinburgh Stroke Study data collected
by NHS Lothian as well as radiology reports created in NHS Tayside). Our
comparison shows that a hand-crafted system is the most accurate way to
automatically label EHR, but machine learning approaches can provide a feasible
alternative where resources for a manual system are not readily available. |
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DOI: | 10.48550/arxiv.1903.03985 |