Title
Identifying Diabetes in Clinical Notes in Hebrew: A Novel Text Classification Approach Based on Word Embedding.
Abstract
NimbleMiner is a word embedding-based, language-agnostic natural language processing system for clinical text classification. Previously, NimbleMiner was applied in English and this study applied NimbleMiner on a large sample of inpatient clinical notes in Hebrew to identify instances of diabetes mellitus. The study data included 521,278 clinical notes (one admission and one discharge note per patient) for 268,664 hospital admissions to medical-surgical units of a large hospital in Israel. NimbleMiner achieved overall good performance (F-score =.94) when tested on a gold standard human annotated dataset of 800 clinical notes. We found 15% more patients with diabetes mentioned in the clinical notes compared with diagnoses data. Our findings about underreporting of diabetes in the coded diagnoses data highlight the urgent need for tools and algorithms that will help busy providers identify a range of useful information, like having a diabetes.
Year
DOI
Venue
2019
10.3233/SHTI190250
Studies in Health Technology and Informatics
Keywords
DocType
Volume
Natural language processing,Text classification,Diabetes
Conference
264
ISSN
Citations 
PageRank 
0926-9630
0
0.34
References 
Authors
0
8
Name
Order
Citations
PageRank
Maxim Topaz1148.52
Ludmila Murga200.68
Chagai Grossman300.34
Daniella Daliyot400.34
Shlomit Jacobson500.34
Noa Rozendorn600.34
Eyal Zimlichman721.48
Nadav Furie800.34