Improving Methods of Identifying Anaphylaxis for Medical Product Safety Surveillance Using Natural Language Processing and Machine Learning

Author:

Carrell David S,Gruber Susan,Floyd James S,Bann Maralyssa A,Cushing-Haugen Kara L,Johnson Ron L,Graham Vina,Cronkite David J,Hazlehurst Brian L,Felcher Andrew H,Bejan Cosmin A,Kennedy Adee,Shinde Mayura U,Karami Sara,Ma Yong,Stojanovic Danijela,Zhao Yueqin,Ball Robert,Nelson Jennifer C

Abstract

Abstract We sought to determine whether machine learning and natural language processing (NLP) applied to electronic medical records could improve performance of automated health-care claims-based algorithms to identify anaphylaxis events using data on 516 patients with outpatient, emergency department, or inpatient anaphylaxis diagnosis codes during 2015–2019 in 2 integrated health-care institutions in the Northwest United States. We used one site’s manually reviewed gold-standard outcomes data for model development and the other’s for external validation based on cross-validated area under the receiver operating characteristic curve (AUC), positive predictive value (PPV), and sensitivity. In the development site 154 (64%) of 239 potential events met adjudication criteria for anaphylaxis compared with 180 (65%) of 277 in the validation site. Logistic regression models using only structured claims data achieved a cross-validated AUC of 0.58 (95% CI: 0.54, 0.63). Machine learning improved cross-validated AUC to 0.62 (0.58, 0.66); incorporating NLP-derived covariates further increased cross-validated AUCs to 0.70 (0.66, 0.75) in development and 0.67 (0.63, 0.71) in external validation data. A classification threshold with cross-validated PPV of 79% and cross-validated sensitivity of 66% in development data had cross-validated PPV of 78% and cross-validated sensitivity of 56% in external data. Machine learning and NLP-derived data improved identification of validated anaphylaxis events.

Publisher

Oxford University Press (OUP)

Subject

Epidemiology

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