Abstract

BackgroundLittle is known about risk factors for early (e.g., erythema migrans) and disseminated Lyme disease manifestations, such as arthritis, neurological complications, and carditis. No study has used both diagnoses and free text to classify Lyme disease by disease stage and manifestation.MethodsWe identified Lyme disease cases in 2012–2016 in the electronic health record (EHR) of a large, integrated health system in Pennsylvania. We developed a rule-based text-matching algorithm using regular expressions to extract clinical data from free text. Lyme disease cases were then classified by stage and manifestation using data from both diagnoses and free text. Among cases classified by stage, we evaluated individual, community, and health care variables as predictors of disseminated stage (vs. early) disease using Poisson regression models with robust errors. Final models adjusted for sociodemographic factors, receipt of Medical Assistance (i.e., Medicaid, a proxy for low socioeconomic status), primary care contact, setting of diagnosis, season of diagnosis, and urban/rural status.ResultsAmong 7310 cases of Lyme disease, we classified 62% by stage. Overall, 23% were classified using both diagnoses and text, 26% were classified using diagnoses only, and 13% were classified using text only. Among the staged diagnoses (n = 4530), 30% were disseminated stage (762 arthritis, 426 neurological manifestations, 76 carditis, 95 secondary erythema migrans, and 76 other manifestations). In adjusted models, we found that persons on Medical Assistance at least 50% of time under observation, compared to never users, had a higher risk (risk ratio [95% confidence interval]) of disseminated Lyme disease (1.20 [1.05, 1.37]). Primary care contact (0.59 [0.54, 0.64]) and diagnosis in the urgent care (0.22 [0.17, 0.29]), compared to the outpatient setting, were associated with lower risk of disseminated Lyme disease.ConclusionsThe associations between insurance payor, primary care status, and diagnostic setting with disseminated Lyme disease suggest that lower socioeconomic status and less health care access could be linked with disseminated stage Lyme disease. Intervening on these factors could reduce the individual and health care burden of disseminated Lyme disease. Our findings demonstrate the value of both diagnostic and narrative text data to identify Lyme disease manifestations in the EHR.

Highlights

  • Lyme disease, caused by the bacteria Borrelia burgdorferi, is transmitted to humans through an infected tick bite

  • Lyme disease cases classified by stage and manifestation We identified 7310 cases of Lyme disease between 2012 and 2016 that met inclusion criteria (Fig. 1)

  • Diagnoses classified as disseminated stage that did not meet criteria for arthritis, neurological effects, carditis, or secondary erythema migrans were classified as “other disseminated” manifestations (6%)

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Summary

Introduction

Lyme disease, caused by the bacteria Borrelia burgdorferi, is transmitted to humans through an infected tick bite. Lyme disease is commonly categorized into two main stages: early stage, where infection is localized (e.g., an expanding erythema migrans lesion), or disseminated stage, where infection has spread beyond the initial bite location [3,4,5]. Disseminated manifestations range from secondary erythema migrans rashes, acute neurological effects (e.g., facial palsy, meningitis, radiculopathy), and carditis, which usually occur weeks to months after infection, to Lyme arthritis, the most common late disseminated infection, which usually occurs months to years after infection [3]. Little is known about risk factors for early (e.g., erythema migrans) and disseminated Lyme disease manifestations, such as arthritis, neurological complications, and carditis. No study has used both diagnoses and free text to classify Lyme disease by disease stage and manifestation

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