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Original Research

Clinical documentation of patient-reported medical cannabis use in primary care: Toward scalable extraction using natural language processing methods

, PhDORCID Icon, , MS, , MA, , BA, , MSPH, , MPHORCID Icon, , PhD, , PhD, , MD MPH MS, , PhD, , MD, , MS, , CRNA, MBA, , PhD, , PhD MPH, , MD MPH & , PhD MPH MSW show all
Pages 917-924 | Published online: 07 Mar 2022
 

Abstract

Background: Most states have legalized medical cannabis, yet little is known about how medical cannabis use is documented in patients’ electronic health records (EHRs). We used natural language processing (NLP) to calculate the prevalence of clinician-documented medical cannabis use among adults in an integrated health system in Washington State where medical and recreational use are legal. Methods: We analyzed EHRs of patients ≥18 years old screened for past-year cannabis use (November 1, 2017–October 31, 2018), to identify clinician-documented medical cannabis use. We defined medical use as any documentation of cannabis that was recommended by a clinician or described by the clinician or patient as intended to manage health conditions or symptoms. We developed and applied an NLP system that included NLP-assisted manual review to identify such documentation in encounter notes. Results: Medical cannabis use was documented for 16,684 (5.6%) of 299,597 outpatient encounters with routine screening for cannabis use among 203,489 patients seeing 1,274 clinicians. The validated NLP system identified 54% of documentation and NLP-assisted manual review the remainder. Language documenting reasons for cannabis use included 125 terms indicating medical use, 28 terms indicating non-medical use and 41 ambiguous terms. Implicit documentation of medical use (e.g., “edible THC nightly for lumbar pain”) was more common than explicit (e.g., “continues medical cannabis use”). Conclusions: Clinicians use diverse and often ambiguous language to document patients’ reasons for cannabis use. Automating extraction of documentation about patients’ cannabis use could facilitate clinical decision support and epidemiological investigation but will require large amounts of gold standard training data.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

This work was funded by National Institute on Drug Abuse (NIDA) award UG1DA040314 (NIDA Clinical Trials Network Protocol #0077; Lapham, PI). The content of this manuscript is solely the responsibility of the authors and does not necessarily represent the official views of NIDA. The NIDA Clinical Trials Network (CTN) Research Development Committee reviewed the study protocol and the NIDA CTN publications committee reviewed and approved the manuscript for publication. The funding organization had no role in the collection, management, analysis, and interpretation of the data or decision to submit the manuscript for publication.

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