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Discovering Related Clinical Concepts Using Large Amounts of Clinical Notes
Author(s) -
Kavita Ganesan,
Shane Lloyd,
Vikren Sarkar
Publication year - 2016
Publication title -
biomedical engineering and computational biology
Language(s) - English
Resource type - Journals
ISSN - 1179-5972
DOI - 10.4137/becb.s36155
Subject(s) - snomed ct , terminology , computer science , information retrieval , process (computing) , data science , natural language processing , linguistics , programming language , philosophy
The ability to find highly related clinical concepts is essential for many applications such as for hypothesis generation, query expansion for medical literature search, search results filtering, ICD-10 code filtering and many other applications. While manually constructed medical terminologies such as SNOMED CT can surface certain related concepts, these terminologies are inadequate as they depend on expertise of several subject matter experts making the terminology curation process open to geographic and language bias. In addition, these terminologies also provide no quantifiable evidence on how related the concepts are. In this work, we explore an unsupervised graphical approach to mine related concepts by leveraging the volume within large amounts of clinical notes. Our evaluation shows that we are able to use a data driven approach to discovering highly related concepts for various search terms including medications, symptoms and diseases.

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