Artikel ; Online: Natural language processing of clinical notes enables early inborn error of immunity risk ascertainment.
The journal of allergy and clinical immunology. Global
2024 Band 3, Heft 2, Seite(n) 100224
Abstract: Background: There are now approximately 450 discrete inborn errors of immunity (IEI) described; however, diagnostic rates remain suboptimal. Use of structured health record data has proven useful for patient detection but may be augmented by natural ... ...
Abstract | Background: There are now approximately 450 discrete inborn errors of immunity (IEI) described; however, diagnostic rates remain suboptimal. Use of structured health record data has proven useful for patient detection but may be augmented by natural language processing (NLP). Here we present a machine learning model that can distinguish patients from controls significantly in advance of ultimate diagnosis date. Objective: We sought to create an NLP machine learning algorithm that could identify IEI patients early during the disease course and shorten the diagnostic odyssey. Methods: Our approach involved extracting a large corpus of IEI patient clinical-note text from a major referral center's electronic health record (EHR) system and a matched control corpus for comparison. We built text classifiers with simple machine learning methods and trained them on progressively longer time epochs before date of diagnosis. Results: The top performing NLP algorithm effectively distinguished cases from controls robustly 36 months before ultimate clinical diagnosis (area under precision recall curve > 0.95). Corpus analysis demonstrated that statistically enriched, IEI-relevant terms were evident 24+ months before diagnosis, validating that clinical notes can provide a signal for early prediction of IEI. Conclusion: Mining EHR notes with NLP holds promise for improving early IEI patient detection. |
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Sprache | Englisch |
Erscheinungsdatum | 2024-02-02 |
Erscheinungsland | United States |
Dokumenttyp | Journal Article |
ISSN | 2772-8293 |
ISSN (online) | 2772-8293 |
DOI | 10.1016/j.jacig.2024.100224 |
Datenquelle | MEDical Literature Analysis and Retrieval System OnLINE |
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