Using natural language processing and structured medical data to phenotype patients hospitalized due to COVID-19
Feier Chang, Jay Krishnan, Jillian H Hurst, Michael E, Yarrington, Deverick J Anderson, Emily C O'Brien, Benjamin A, Goldstein

TL;DR
This study compares different computable phenotype definitions for COVID-19 hospitalizations using structured EHR data, provider notes, or both, demonstrating that NLP-enhanced models improve classification accuracy.
Contribution
It introduces NLP-based methods to improve identification of COVID-19 hospitalizations from EHR data, showing superior performance over structured data alone.
Findings
NLP models outperform structured data models in classification accuracy
Provider notes significantly improve phenotype discrimination
Hospital outcome metrics vary based on hospitalization classification
Abstract
To identify patients who are hospitalized because of COVID-19 as opposed to those who were admitted for other indications, we compared the performance of different computable phenotype definitions for COVID-19 hospitalizations that use different types of data from the electronic health records (EHR), including structured EHR data elements, provider notes, or a combination of both data types. And conduct a retrospective data analysis utilizing chart review-based validation. Participants are 586 hospitalized individuals who tested positive for SARS-CoV-2 during January 2022. We used natural language processing to incorporate data from provider notes and LASSO regression and Random Forests to fit classification algorithms that incorporated structured EHR data elements, provider notes, or a combination of structured data and provider notes. Results: Based on a chart review, 38% of 586…
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Taxonomy
TopicsMachine Learning in Healthcare · COVID-19 diagnosis using AI · Chronic Disease Management Strategies
