DeepSuggest: Using Neural Networks to Suggest Related Keywords for a Comprehensive Search of Clinical Notes

Author:

Moosavinasab Soheil1,Sezgin Emre1,Sun Huan2,Hoffman Jeffrey34,Huang Yungui1,Lin Simon15

Affiliation:

1. Research Information Solutions and Innovation, The Research Institute at Nationwide Children's Hospital, Columbus, Ohio, United States

2. Department of Computer Science and Engineering, The Ohio State University, Columbus, Ohio, United States

3. Department of Pediatrics, Nationwide Children's Hospital, Columbus, Ohio, United States

4. Department of Pediatrics, The Ohio State University College of Medicine, Columbus, Ohio, United States

5. Department of Biomedical Informatics and Department of Pediatrics, The Ohio State University College of Medicine, Columbus, Ohio, United States

Abstract

Abstract Objective A large amount of clinical data are stored in clinical notes that frequently contain spelling variations, typos, local practice-generated acronyms, synonyms, and informal words. Instead of relying on established but infrequently updated ontologies with keywords limited to formal language, we developed an artificial intelligence (AI) assistant (named “DeepSuggest”) that interactively offers suggestions to expand or pivot queries to help overcome these challenges. Methods We applied an unsupervised neural network (Word2Vec) to the clinical notes to build keyword contextual similarity matrix. With a user's input query, DeepSuggest generates a list of relevant keywords, including word variations (e.g., formal or informal forms, synonyms, abbreviations, and misspellings) and other relevant words (e.g., related diagnosis, medications, and procedures). Human intelligence is then used to further refine or pivot their query. Results DeepSuggest learns the semantic and linguistic relationships between the words from a large collection of local notes. Although DeepSuggest is only able to recall 0.54 of Systematized Nomenclature of Medicine (SNOMED) synonyms on average among the top 60 suggested terms, it covers the semantic relationship in our corpus for a larger number of raw concepts (6.3 million) than SNOMED ontology (24,921) and is able to retrieve terms that are not stored in existing ontologies. The precision for the top 60 suggested words averages at 0.72. Usability test resulted that DeepSuggest is able to achieve almost twice the recall on clinical notes compared with Epic (average of 5.6 notes retrieved by DeepSuggest compared with 2.6 by Epic). Conclusion DeepSuggest showed the ability to improve retrieval of relevant clinical notes when implemented on a local corpus by suggesting spelling variations, acronyms, and semantically related words. It is a promising tool in helping users to achieve a higher recall rate for clinical note searches and thus boosting productivity in clinical practice and research. DeepSuggest can supplement established ontologies for query expansion.

Funder

Patient-Centered Outcomes Research Institute

Publisher

Georg Thieme Verlag KG

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