Unsupervised learning algorithm for chronic cough detection in the electronic health records (EHR) data

J. Schelfhout (Kenilworth, United States of America), X. Luo (Indianapolis, United States of America), V. Chandrasekaran (Kenilworth, United States of America), V. Turzhitsky (Kenilworth, United States of America), P. Dexter (Indianapolis, United States of America), Z. Han (Indianapolis, United States of America), Z. Zhang (Indianapolis, United States of America), W. Shao (Indianapolis, United States of America), A. Roberts (Indianapolis, United States of America), M. Metzger (Indianapolis, United States of America), J. Baker (Indianapolis, United States of America), C. La Rosa (Kenilworth, United States of America), J. Weaver (Kenilworth, United States of America), V. Bali (Kenilworth, United States of America), K. Huang (Indianapolis, United States of America)

Source: Virtual Congress 2020 – Chronic cough: only symptom or disease?
Session: Chronic cough: only symptom or disease?
Session type: Oral Presentation
Number: 4570

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J. Schelfhout (Kenilworth, United States of America), X. Luo (Indianapolis, United States of America), V. Chandrasekaran (Kenilworth, United States of America), V. Turzhitsky (Kenilworth, United States of America), P. Dexter (Indianapolis, United States of America), Z. Han (Indianapolis, United States of America), Z. Zhang (Indianapolis, United States of America), W. Shao (Indianapolis, United States of America), A. Roberts (Indianapolis, United States of America), M. Metzger (Indianapolis, United States of America), J. Baker (Indianapolis, United States of America), C. La Rosa (Kenilworth, United States of America), J. Weaver (Kenilworth, United States of America), V. Bali (Kenilworth, United States of America), K. Huang (Indianapolis, United States of America). Unsupervised learning algorithm for chronic cough detection in the electronic health records (EHR) data. 4570

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