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Application of natural language processing to identify social needs from patient medical notes: development and assessment of a scalable, performant, and rule-based model in an integrated healthcare delivery system

Geoffrey Gray, Ayah Zirikly, Luis Ahumada, Masoud Rouhizadeh, Thomas M. Richards, Christopher Kitchen, Iman Foroughmand, Elham Hatef

2023JAMIA Open15 citationsDOIOpen Access PDF

Abstract

Abstract Objectives To develop and test a scalable, performant, and rule-based model for identifying 3 major domains of social needs (residential instability, food insecurity, and transportation issues) from the unstructured data in electronic health records (EHRs). Materials and Methods We included patients aged 18 years or older who received care at the Johns Hopkins Health System (JHHS) between July 2016 and June 2021 and had at least 1 unstructured (free-text) note in their EHR during the study period. We used a combination of manual lexicon curation and semiautomated lexicon creation for feature development. We developed an initial rules-based pipeline (Match Pipeline) using 2 keyword sets for each social needs domain. We performed rule-based keyword matching for distinct lexicons and tested the algorithm using an annotated dataset comprising 192 patients. Starting with a set of expert-identified keywords, we tested the adjustments by evaluating false positives and negatives identified in the labeled dataset. We assessed the performance of the algorithm using measures of precision, recall, and F1 score. Results The algorithm for identifying residential instability had the best overall performance, with a weighted average for precision, recall, and F1 score of 0.92, 0.84, and 0.92 for identifying patients with homelessness and 0.84, 0.82, and 0.79 for identifying patients with housing insecurity. Metrics for the food insecurity algorithm were high but the transportation issues algorithm was the lowest overall performing metric. Discussion The NLP algorithm in identifying social needs at JHHS performed relatively well and would provide the opportunity for implementation in a healthcare system. Conclusion The NLP approach developed in this project could be adapted and potentially operationalized in the routine data processes of a healthcare system.

Topics & Concepts

Computer scienceLexiconF1 scoreArtificial intelligencePrecision and recallScalabilityPipeline (software)Machine learningNatural language processingData miningData scienceDatabaseProgramming languageFood Security and Health in Diverse PopulationsHomelessness and Social IssuesChild Nutrition and Water Access
Application of natural language processing to identify social needs from patient medical notes: development and assessment of a scalable, performant, and rule-based model in an integrated healthcare delivery system | Litcius