A computable case definition for patients with SARS-CoV2 testing that occurred outside the hospital

Author:

Wang Lijing1,Zipursky Amy R2,Geva Alon3ORCID,McMurry Andrew J4,Mandl Kenneth D4,Miller Timothy A4ORCID

Affiliation:

1. Department of Data Science, New Jersey Institute of Technology , Newark, New Jersey, USA

2. Computational Health Informatics Program and Department of Emergency Medicine, Boston Children's Hospital, Department of Pediatrics, Harvard Medical School , Boston, Massachusetts, USA

3. Computational Health Informatics Program and Division of Critical Care Medicine, Department of Anesthesiology, Critical Care, and Pain Medicine, Boston Children’s Hospital, Harvard Medical School , Boston, Massachusetts, USA

4. Computational Health Informatics Program, Boston Children’s Hospital, Department of Pediatrics, Harvard Medical School , Boston, Massachusetts, USA

Abstract

Abstract Objective To identify a cohort of COVID-19 cases, including when evidence of virus positivity was only mentioned in the clinical text, not in structured laboratory data in the electronic health record (EHR). Materials and Methods Statistical classifiers were trained on feature representations derived from unstructured text in patient EHRs. We used a proxy dataset of patients with COVID-19 polymerase chain reaction (PCR) tests for training. We selected a model based on performance on our proxy dataset and applied it to instances without COVID-19 PCR tests. A physician reviewed a sample of these instances to validate the classifier. Results On the test split of the proxy dataset, our best classifier obtained 0.56 F1, 0.6 precision, and 0.52 recall scores for SARS-CoV2 positive cases. In an expert validation, the classifier correctly identified 97.6% (81/84) as COVID-19 positive and 97.8% (91/93) as not SARS-CoV2 positive. The classifier labeled an additional 960 cases as not having SARS-CoV2 lab tests in hospital, and only 177 of those cases had the ICD-10 code for COVID-19. Discussion Proxy dataset performance may be worse because these instances sometimes include discussion of pending lab tests. The most predictive features are meaningful and interpretable. The type of external test that was performed is rarely mentioned. Conclusion COVID-19 cases that had testing done outside of the hospital can be reliably detected from the text in EHRs. Training on a proxy dataset was a suitable method for developing a highly performant classifier without labor-intensive labeling efforts.

Funder

U.S. Department of Health and Human Services

National Institute of Child Health and Human Development

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference15 articles.

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3. A case study evaluating the portability of an executable computable phenotype algorithm across multiple institutions and electronic health record environments;Pacheco;J Am Med Inform Assoc,2018

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